| // |
| // Copyright © 2017 Arm Ltd. All rights reserved. |
| // SPDX-License-Identifier: MIT |
| // |
| |
| #include "../Serializer.hpp" |
| |
| #include <armnn/ArmNN.hpp> |
| #include <armnn/INetwork.hpp> |
| #include <armnnDeserializer/IDeserializer.hpp> |
| |
| #include <random> |
| #include <vector> |
| |
| #include <boost/test/unit_test.hpp> |
| |
| using armnnDeserializer::IDeserializer; |
| |
| namespace |
| { |
| |
| struct DefaultLayerVerifierPolicy |
| { |
| static void Apply(const std::string s = "") |
| { |
| BOOST_TEST_MESSAGE("Unexpected layer found in network"); |
| BOOST_TEST(false); |
| } |
| }; |
| |
| class LayerVerifierBase : public armnn::LayerVisitorBase<DefaultLayerVerifierPolicy> |
| { |
| public: |
| LayerVerifierBase(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : m_LayerName(layerName) |
| , m_InputTensorInfos(inputInfos) |
| , m_OutputTensorInfos(outputInfos) {} |
| |
| void VisitInputLayer(const armnn::IConnectableLayer*, armnn::LayerBindingId, const char*) override {} |
| |
| void VisitOutputLayer(const armnn::IConnectableLayer*, armnn::LayerBindingId id, const char*) override {} |
| |
| protected: |
| void VerifyNameAndConnections(const armnn::IConnectableLayer* layer, const char* name) |
| { |
| BOOST_TEST(name == m_LayerName.c_str()); |
| |
| BOOST_TEST(layer->GetNumInputSlots() == m_InputTensorInfos.size()); |
| BOOST_TEST(layer->GetNumOutputSlots() == m_OutputTensorInfos.size()); |
| |
| for (unsigned int i = 0; i < m_InputTensorInfos.size(); i++) |
| { |
| const armnn::IOutputSlot* connectedOutput = layer->GetInputSlot(i).GetConnection(); |
| BOOST_CHECK(connectedOutput); |
| |
| const armnn::TensorInfo& connectedInfo = connectedOutput->GetTensorInfo(); |
| BOOST_TEST(connectedInfo.GetShape() == m_InputTensorInfos[i].GetShape()); |
| BOOST_TEST( |
| GetDataTypeName(connectedInfo.GetDataType()) == GetDataTypeName(m_InputTensorInfos[i].GetDataType())); |
| |
| BOOST_TEST(connectedInfo.GetQuantizationScale() == m_InputTensorInfos[i].GetQuantizationScale()); |
| BOOST_TEST(connectedInfo.GetQuantizationOffset() == m_InputTensorInfos[i].GetQuantizationOffset()); |
| } |
| |
| for (unsigned int i = 0; i < m_OutputTensorInfos.size(); i++) |
| { |
| const armnn::TensorInfo& outputInfo = layer->GetOutputSlot(i).GetTensorInfo(); |
| BOOST_TEST(outputInfo.GetShape() == m_OutputTensorInfos[i].GetShape()); |
| BOOST_TEST( |
| GetDataTypeName(outputInfo.GetDataType()) == GetDataTypeName(m_OutputTensorInfos[i].GetDataType())); |
| |
| BOOST_TEST(outputInfo.GetQuantizationScale() == m_OutputTensorInfos[i].GetQuantizationScale()); |
| BOOST_TEST(outputInfo.GetQuantizationOffset() == m_OutputTensorInfos[i].GetQuantizationOffset()); |
| } |
| } |
| |
| void VerifyConstTensors(const std::string& tensorName, |
| const armnn::ConstTensor* expectedPtr, |
| const armnn::ConstTensor* actualPtr) |
| { |
| if (expectedPtr == nullptr) |
| { |
| BOOST_CHECK_MESSAGE(actualPtr == nullptr, tensorName + " should not exist"); |
| } |
| else |
| { |
| BOOST_CHECK_MESSAGE(actualPtr != nullptr, tensorName + " should have been set"); |
| if (actualPtr != nullptr) |
| { |
| const armnn::TensorInfo& expectedInfo = expectedPtr->GetInfo(); |
| const armnn::TensorInfo& actualInfo = actualPtr->GetInfo(); |
| |
| BOOST_CHECK_MESSAGE(expectedInfo.GetShape() == actualInfo.GetShape(), |
| tensorName + " shapes don't match"); |
| BOOST_CHECK_MESSAGE( |
| GetDataTypeName(expectedInfo.GetDataType()) == GetDataTypeName(actualInfo.GetDataType()), |
| tensorName + " data types don't match"); |
| |
| BOOST_CHECK_MESSAGE(expectedPtr->GetNumBytes() == actualPtr->GetNumBytes(), |
| tensorName + " (GetNumBytes) data sizes do not match"); |
| if (expectedPtr->GetNumBytes() == actualPtr->GetNumBytes()) |
| { |
| //check the data is identical |
| const char* expectedData = static_cast<const char*>(expectedPtr->GetMemoryArea()); |
| const char* actualData = static_cast<const char*>(actualPtr->GetMemoryArea()); |
| bool same = true; |
| for (unsigned int i = 0; i < expectedPtr->GetNumBytes(); ++i) |
| { |
| same = expectedData[i] == actualData[i]; |
| if (!same) |
| { |
| break; |
| } |
| } |
| BOOST_CHECK_MESSAGE(same, tensorName + " data does not match"); |
| } |
| } |
| } |
| } |
| |
| private: |
| std::string m_LayerName; |
| std::vector<armnn::TensorInfo> m_InputTensorInfos; |
| std::vector<armnn::TensorInfo> m_OutputTensorInfos; |
| }; |
| |
| template<typename T> |
| void CompareConstTensorData(const void* data1, const void* data2, unsigned int numElements) |
| { |
| T typedData1 = static_cast<T>(data1); |
| T typedData2 = static_cast<T>(data2); |
| BOOST_CHECK(typedData1); |
| BOOST_CHECK(typedData2); |
| |
| for (unsigned int i = 0; i < numElements; i++) |
| { |
| BOOST_TEST(typedData1[i] == typedData2[i]); |
| } |
| } |
| |
| void CompareConstTensor(const armnn::ConstTensor& tensor1, const armnn::ConstTensor& tensor2) |
| { |
| BOOST_TEST(tensor1.GetShape() == tensor2.GetShape()); |
| BOOST_TEST(GetDataTypeName(tensor1.GetDataType()) == GetDataTypeName(tensor2.GetDataType())); |
| |
| switch (tensor1.GetDataType()) |
| { |
| case armnn::DataType::Float32: |
| CompareConstTensorData<const float*>( |
| tensor1.GetMemoryArea(), tensor2.GetMemoryArea(), tensor1.GetNumElements()); |
| break; |
| case armnn::DataType::QuantisedAsymm8: |
| case armnn::DataType::Boolean: |
| CompareConstTensorData<const uint8_t*>( |
| tensor1.GetMemoryArea(), tensor2.GetMemoryArea(), tensor1.GetNumElements()); |
| break; |
| case armnn::DataType::Signed32: |
| CompareConstTensorData<const int32_t*>( |
| tensor1.GetMemoryArea(), tensor2.GetMemoryArea(), tensor1.GetNumElements()); |
| break; |
| default: |
| // Note that Float16 is not yet implemented |
| BOOST_TEST_MESSAGE("Unexpected datatype"); |
| BOOST_TEST(false); |
| } |
| } |
| |
| armnn::INetworkPtr DeserializeNetwork(const std::string& serializerString) |
| { |
| std::vector<std::uint8_t> const serializerVector{serializerString.begin(), serializerString.end()}; |
| return IDeserializer::Create()->CreateNetworkFromBinary(serializerVector); |
| } |
| |
| std::string SerializeNetwork(const armnn::INetwork& network) |
| { |
| armnnSerializer::Serializer serializer; |
| serializer.Serialize(network); |
| |
| std::stringstream stream; |
| serializer.SaveSerializedToStream(stream); |
| |
| std::string serializerString{stream.str()}; |
| return serializerString; |
| } |
| |
| template<typename DataType> |
| static std::vector<DataType> GenerateRandomData(size_t size) |
| { |
| constexpr bool isIntegerType = std::is_integral<DataType>::value; |
| using Distribution = |
| typename std::conditional<isIntegerType, |
| std::uniform_int_distribution<DataType>, |
| std::uniform_real_distribution<DataType>>::type; |
| |
| static constexpr DataType lowerLimit = std::numeric_limits<DataType>::min(); |
| static constexpr DataType upperLimit = std::numeric_limits<DataType>::max(); |
| |
| static Distribution distribution(lowerLimit, upperLimit); |
| static std::default_random_engine generator; |
| |
| std::vector<DataType> randomData(size); |
| std::generate(randomData.begin(), randomData.end(), []() { return distribution(generator); }); |
| |
| return randomData; |
| } |
| |
| } // anonymous namespace |
| |
| BOOST_AUTO_TEST_SUITE(SerializerTests) |
| |
| BOOST_AUTO_TEST_CASE(SerializeAddition) |
| { |
| class AdditionLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| AdditionLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitAdditionLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("addition"); |
| const armnn::TensorInfo tensorInfo({1, 2, 3}, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const additionLayer = network->AddAdditionLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(additionLayer->GetInputSlot(0)); |
| inputLayer1->GetOutputSlot(0).Connect(additionLayer->GetInputSlot(1)); |
| additionLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(tensorInfo); |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(tensorInfo); |
| additionLayer->GetOutputSlot(0).SetTensorInfo(tensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| AdditionLayerVerifier verifier(layerName, {tensorInfo, tensorInfo}, {tensorInfo}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeBatchNormalization) |
| { |
| class BatchNormalizationLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| BatchNormalizationLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::BatchNormalizationDescriptor& descriptor, |
| const armnn::ConstTensor& mean, |
| const armnn::ConstTensor& variance, |
| const armnn::ConstTensor& beta, |
| const armnn::ConstTensor& gamma) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) |
| , m_Mean(mean) |
| , m_Variance(variance) |
| , m_Beta(beta) |
| , m_Gamma(gamma) {} |
| |
| void VisitBatchNormalizationLayer(const armnn::IConnectableLayer* layer, |
| const armnn::BatchNormalizationDescriptor& descriptor, |
| const armnn::ConstTensor& mean, |
| const armnn::ConstTensor& variance, |
| const armnn::ConstTensor& beta, |
| const armnn::ConstTensor& gamma, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| |
| CompareConstTensor(mean, m_Mean); |
| CompareConstTensor(variance, m_Variance); |
| CompareConstTensor(beta, m_Beta); |
| CompareConstTensor(gamma, m_Gamma); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::BatchNormalizationDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_Eps == m_Descriptor.m_Eps); |
| BOOST_TEST(static_cast<int>(descriptor.m_DataLayout) == static_cast<int>(m_Descriptor.m_DataLayout)); |
| } |
| |
| armnn::BatchNormalizationDescriptor m_Descriptor; |
| armnn::ConstTensor m_Mean; |
| armnn::ConstTensor m_Variance; |
| armnn::ConstTensor m_Beta; |
| armnn::ConstTensor m_Gamma; |
| }; |
| |
| const std::string layerName("batchNormalization"); |
| const armnn::TensorInfo inputInfo ({ 1, 3, 3, 1 }, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({ 1, 3, 3, 1 }, armnn::DataType::Float32); |
| |
| const armnn::TensorInfo meanInfo({1}, armnn::DataType::Float32); |
| const armnn::TensorInfo varianceInfo({1}, armnn::DataType::Float32); |
| const armnn::TensorInfo betaInfo({1}, armnn::DataType::Float32); |
| const armnn::TensorInfo gammaInfo({1}, armnn::DataType::Float32); |
| |
| armnn::BatchNormalizationDescriptor descriptor; |
| descriptor.m_Eps = 0.0010000000475f; |
| descriptor.m_DataLayout = armnn::DataLayout::NHWC; |
| |
| std::vector<float> meanData({5.0}); |
| std::vector<float> varianceData({2.0}); |
| std::vector<float> betaData({1.0}); |
| std::vector<float> gammaData({0.0}); |
| |
| armnn::ConstTensor mean(meanInfo, meanData); |
| armnn::ConstTensor variance(varianceInfo, varianceData); |
| armnn::ConstTensor beta(betaInfo, betaData); |
| armnn::ConstTensor gamma(gammaInfo, gammaData); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const batchNormalizationLayer = |
| network->AddBatchNormalizationLayer(descriptor, mean, variance, beta, gamma, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(batchNormalizationLayer->GetInputSlot(0)); |
| batchNormalizationLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| batchNormalizationLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| BatchNormalizationLayerVerifier verifier( |
| layerName, {inputInfo}, {outputInfo}, descriptor, mean, variance, beta, gamma); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeBatchToSpaceNd) |
| { |
| class BatchToSpaceNdLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| BatchToSpaceNdLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::BatchToSpaceNdDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitBatchToSpaceNdLayer(const armnn::IConnectableLayer* layer, |
| const armnn::BatchToSpaceNdDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::BatchToSpaceNdDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_Crops == m_Descriptor.m_Crops); |
| BOOST_TEST(descriptor.m_BlockShape == m_Descriptor.m_BlockShape); |
| BOOST_TEST(GetDataLayoutName(descriptor.m_DataLayout) == GetDataLayoutName(m_Descriptor.m_DataLayout)); |
| } |
| |
| armnn::BatchToSpaceNdDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("spaceToBatchNd"); |
| const armnn::TensorInfo inputInfo({4, 1, 2, 2}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({1, 1, 4, 4}, armnn::DataType::Float32); |
| |
| armnn::BatchToSpaceNdDescriptor desc; |
| desc.m_DataLayout = armnn::DataLayout::NCHW; |
| desc.m_BlockShape = {2, 2}; |
| desc.m_Crops = {{0, 0}, {0, 0}}; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const batchToSpaceNdLayer = network->AddBatchToSpaceNdLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(batchToSpaceNdLayer->GetInputSlot(0)); |
| batchToSpaceNdLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| batchToSpaceNdLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| BatchToSpaceNdLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeConstant) |
| { |
| class ConstantLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| ConstantLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::ConstTensor& layerInput) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_LayerInput(layerInput) {} |
| |
| void VisitConstantLayer(const armnn::IConnectableLayer* layer, |
| const armnn::ConstTensor& input, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| |
| CompareConstTensor(input, m_LayerInput); |
| } |
| |
| void VisitAdditionLayer(const armnn::IConnectableLayer* layer, const char* name = nullptr) override {} |
| |
| private: |
| armnn::ConstTensor m_LayerInput; |
| }; |
| |
| const std::string layerName("constant"); |
| const armnn::TensorInfo info({ 2, 3 }, armnn::DataType::Float32); |
| |
| std::vector<float> constantData = GenerateRandomData<float>(info.GetNumElements()); |
| armnn::ConstTensor constTensor(info, constantData); |
| |
| armnn::INetworkPtr network(armnn::INetwork::Create()); |
| armnn::IConnectableLayer* input = network->AddInputLayer(0); |
| armnn::IConnectableLayer* constant = network->AddConstantLayer(constTensor, layerName.c_str()); |
| armnn::IConnectableLayer* add = network->AddAdditionLayer(); |
| armnn::IConnectableLayer* output = network->AddOutputLayer(0); |
| |
| input->GetOutputSlot(0).Connect(add->GetInputSlot(0)); |
| constant->GetOutputSlot(0).Connect(add->GetInputSlot(1)); |
| add->GetOutputSlot(0).Connect(output->GetInputSlot(0)); |
| |
| input->GetOutputSlot(0).SetTensorInfo(info); |
| constant->GetOutputSlot(0).SetTensorInfo(info); |
| add->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| ConstantLayerVerifier verifier(layerName, {}, {info}, constTensor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeConvolution2d) |
| { |
| class Convolution2dLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| Convolution2dLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::Convolution2dDescriptor& descriptor, |
| const armnn::ConstTensor& weights, |
| const armnn::Optional<armnn::ConstTensor>& biases) : |
| LayerVerifierBase(layerName, inputInfos, outputInfos), |
| m_Descriptor(descriptor), |
| m_Weights(weights), |
| m_Biases(biases) |
| {} |
| |
| void VisitConvolution2dLayer(const armnn::IConnectableLayer* layer, |
| const armnn::Convolution2dDescriptor& descriptor, |
| const armnn::ConstTensor& weights, |
| const armnn::Optional<armnn::ConstTensor>& biases, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| |
| // check weights |
| CompareConstTensor(weights, m_Weights); |
| |
| // check biases |
| BOOST_CHECK(biases.has_value() == descriptor.m_BiasEnabled); |
| BOOST_CHECK(m_Biases.has_value() == m_Descriptor.m_BiasEnabled); |
| |
| BOOST_CHECK(biases.has_value() == m_Biases.has_value()); |
| |
| if (biases.has_value() && m_Biases.has_value()) |
| { |
| CompareConstTensor(biases.value(), m_Biases.value()); |
| } |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::Convolution2dDescriptor& descriptor) |
| { |
| BOOST_CHECK(descriptor.m_PadLeft == m_Descriptor.m_PadLeft); |
| BOOST_CHECK(descriptor.m_PadRight == m_Descriptor.m_PadRight); |
| BOOST_CHECK(descriptor.m_PadTop == m_Descriptor.m_PadTop); |
| BOOST_CHECK(descriptor.m_PadBottom == m_Descriptor.m_PadBottom); |
| BOOST_CHECK(descriptor.m_StrideX == m_Descriptor.m_StrideX); |
| BOOST_CHECK(descriptor.m_StrideY == m_Descriptor.m_StrideY); |
| BOOST_CHECK(descriptor.m_DilationX == m_Descriptor.m_DilationX); |
| BOOST_CHECK(descriptor.m_DilationY == m_Descriptor.m_DilationY); |
| BOOST_CHECK(descriptor.m_BiasEnabled == m_Descriptor.m_BiasEnabled); |
| BOOST_CHECK(descriptor.m_DataLayout == m_Descriptor.m_DataLayout); |
| } |
| |
| armnn::Convolution2dDescriptor m_Descriptor; |
| armnn::ConstTensor m_Weights; |
| armnn::Optional<armnn::ConstTensor> m_Biases; |
| }; |
| |
| const std::string layerName("convolution2d"); |
| const armnn::TensorInfo inputInfo ({ 1, 5, 5, 1 }, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({ 1, 3, 3, 1 }, armnn::DataType::Float32); |
| |
| const armnn::TensorInfo weightsInfo({ 1, 3, 3, 1 }, armnn::DataType::Float32); |
| const armnn::TensorInfo biasesInfo ({ 1 }, armnn::DataType::Float32); |
| |
| std::vector<float> weightsData = GenerateRandomData<float>(weightsInfo.GetNumElements()); |
| armnn::ConstTensor weights(weightsInfo, weightsData); |
| |
| std::vector<float> biasesData = GenerateRandomData<float>(biasesInfo.GetNumElements()); |
| armnn::ConstTensor biases(biasesInfo, biasesData); |
| |
| armnn::Convolution2dDescriptor descriptor; |
| descriptor.m_PadLeft = 1; |
| descriptor.m_PadRight = 1; |
| descriptor.m_PadTop = 1; |
| descriptor.m_PadBottom = 1; |
| descriptor.m_StrideX = 2; |
| descriptor.m_StrideY = 2; |
| descriptor.m_DilationX = 2; |
| descriptor.m_DilationY = 2; |
| descriptor.m_BiasEnabled = true; |
| descriptor.m_DataLayout = armnn::DataLayout::NHWC; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const convLayer = |
| network->AddConvolution2dLayer(descriptor, |
| weights, |
| armnn::Optional<armnn::ConstTensor>(biases), |
| layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(convLayer->GetInputSlot(0)); |
| convLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| convLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| Convolution2dLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, descriptor, weights, biases); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeDepthwiseConvolution2d) |
| { |
| class DepthwiseConvolution2dLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| DepthwiseConvolution2dLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::DepthwiseConvolution2dDescriptor& descriptor, |
| const armnn::ConstTensor& weights, |
| const armnn::Optional<armnn::ConstTensor>& biases) : |
| LayerVerifierBase(layerName, inputInfos, outputInfos), |
| m_Descriptor(descriptor), |
| m_Weights(weights), |
| m_Biases(biases) |
| {} |
| |
| void VisitDepthwiseConvolution2dLayer(const armnn::IConnectableLayer* layer, |
| const armnn::DepthwiseConvolution2dDescriptor& descriptor, |
| const armnn::ConstTensor& weights, |
| const armnn::Optional<armnn::ConstTensor>& biases, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| |
| // check weights |
| CompareConstTensor(weights, m_Weights); |
| |
| // check biases |
| BOOST_CHECK(biases.has_value() == descriptor.m_BiasEnabled); |
| BOOST_CHECK(m_Biases.has_value() == m_Descriptor.m_BiasEnabled); |
| |
| BOOST_CHECK(biases.has_value() == m_Biases.has_value()); |
| |
| if (biases.has_value() && m_Biases.has_value()) |
| { |
| CompareConstTensor(biases.value(), m_Biases.value()); |
| } |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::DepthwiseConvolution2dDescriptor& descriptor) |
| { |
| BOOST_CHECK(descriptor.m_PadLeft == m_Descriptor.m_PadLeft); |
| BOOST_CHECK(descriptor.m_PadRight == m_Descriptor.m_PadRight); |
| BOOST_CHECK(descriptor.m_PadTop == m_Descriptor.m_PadTop); |
| BOOST_CHECK(descriptor.m_PadBottom == m_Descriptor.m_PadBottom); |
| BOOST_CHECK(descriptor.m_StrideX == m_Descriptor.m_StrideX); |
| BOOST_CHECK(descriptor.m_StrideY == m_Descriptor.m_StrideY); |
| BOOST_CHECK(descriptor.m_DilationX == m_Descriptor.m_DilationX); |
| BOOST_CHECK(descriptor.m_DilationY == m_Descriptor.m_DilationY); |
| BOOST_CHECK(descriptor.m_BiasEnabled == m_Descriptor.m_BiasEnabled); |
| BOOST_CHECK(descriptor.m_DataLayout == m_Descriptor.m_DataLayout); |
| } |
| |
| armnn::DepthwiseConvolution2dDescriptor m_Descriptor; |
| armnn::ConstTensor m_Weights; |
| armnn::Optional<armnn::ConstTensor> m_Biases; |
| }; |
| |
| const std::string layerName("depwiseConvolution2d"); |
| const armnn::TensorInfo inputInfo ({ 1, 5, 5, 3 }, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({ 1, 3, 3, 3 }, armnn::DataType::Float32); |
| |
| const armnn::TensorInfo weightsInfo({ 1, 3, 3, 3 }, armnn::DataType::Float32); |
| const armnn::TensorInfo biasesInfo ({ 3 }, armnn::DataType::Float32); |
| |
| std::vector<float> weightsData = GenerateRandomData<float>(weightsInfo.GetNumElements()); |
| armnn::ConstTensor weights(weightsInfo, weightsData); |
| |
| std::vector<int32_t> biasesData = GenerateRandomData<int32_t>(biasesInfo.GetNumElements()); |
| armnn::ConstTensor biases(biasesInfo, biasesData); |
| |
| armnn::DepthwiseConvolution2dDescriptor descriptor; |
| descriptor.m_PadLeft = 1; |
| descriptor.m_PadRight = 1; |
| descriptor.m_PadTop = 1; |
| descriptor.m_PadBottom = 1; |
| descriptor.m_StrideX = 2; |
| descriptor.m_StrideY = 2; |
| descriptor.m_DilationX = 2; |
| descriptor.m_DilationY = 2; |
| descriptor.m_BiasEnabled = true; |
| descriptor.m_DataLayout = armnn::DataLayout::NHWC; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const depthwiseConvLayer = |
| network->AddDepthwiseConvolution2dLayer(descriptor, |
| weights, |
| armnn::Optional<armnn::ConstTensor>(biases), |
| layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(depthwiseConvLayer->GetInputSlot(0)); |
| depthwiseConvLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| depthwiseConvLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| DepthwiseConvolution2dLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, descriptor, weights, biases); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeDequantize) |
| { |
| class DequantizeLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| DequantizeLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitDequantizeLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("dequantize"); |
| const armnn::TensorInfo inputInfo({ 1, 5, 2, 3 }, armnn::DataType::QuantisedAsymm8, 0.5f, 1); |
| const armnn::TensorInfo outputInfo({ 1, 5, 2, 3 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const dequantizeLayer = network->AddDequantizeLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(dequantizeLayer->GetInputSlot(0)); |
| dequantizeLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| dequantizeLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| DequantizeLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeDeserializeDetectionPostProcess) |
| { |
| class DetectionPostProcessLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| DetectionPostProcessLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::DetectionPostProcessDescriptor& descriptor, |
| const armnn::ConstTensor& anchors) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) |
| , m_Anchors(anchors) {} |
| |
| void VisitDetectionPostProcessLayer(const armnn::IConnectableLayer* layer, |
| const armnn::DetectionPostProcessDescriptor& descriptor, |
| const armnn::ConstTensor& anchors, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| |
| CompareConstTensor(anchors, m_Anchors); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::DetectionPostProcessDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_UseRegularNms == m_Descriptor.m_UseRegularNms); |
| BOOST_TEST(descriptor.m_MaxDetections == m_Descriptor.m_MaxDetections); |
| BOOST_TEST(descriptor.m_MaxClassesPerDetection == m_Descriptor.m_MaxClassesPerDetection); |
| BOOST_TEST(descriptor.m_DetectionsPerClass == m_Descriptor.m_DetectionsPerClass); |
| BOOST_TEST(descriptor.m_NmsScoreThreshold == m_Descriptor.m_NmsScoreThreshold); |
| BOOST_TEST(descriptor.m_NmsIouThreshold == m_Descriptor.m_NmsIouThreshold); |
| BOOST_TEST(descriptor.m_NumClasses == m_Descriptor.m_NumClasses); |
| BOOST_TEST(descriptor.m_ScaleY == m_Descriptor.m_ScaleY); |
| BOOST_TEST(descriptor.m_ScaleX == m_Descriptor.m_ScaleX); |
| BOOST_TEST(descriptor.m_ScaleH == m_Descriptor.m_ScaleH); |
| BOOST_TEST(descriptor.m_ScaleW == m_Descriptor.m_ScaleW); |
| } |
| |
| armnn::DetectionPostProcessDescriptor m_Descriptor; |
| armnn::ConstTensor m_Anchors; |
| }; |
| |
| const std::string layerName("detectionPostProcess"); |
| |
| const std::vector<armnn::TensorInfo> inputInfos({ |
| armnn::TensorInfo({ 1, 6, 4 }, armnn::DataType::Float32), |
| armnn::TensorInfo({ 1, 6, 3}, armnn::DataType::Float32) |
| }); |
| |
| const std::vector<armnn::TensorInfo> outputInfos({ |
| armnn::TensorInfo({ 1, 3, 4 }, armnn::DataType::Float32), |
| armnn::TensorInfo({ 1, 3 }, armnn::DataType::Float32), |
| armnn::TensorInfo({ 1, 3 }, armnn::DataType::Float32), |
| armnn::TensorInfo({ 1 }, armnn::DataType::Float32) |
| }); |
| |
| armnn::DetectionPostProcessDescriptor descriptor; |
| descriptor.m_UseRegularNms = true; |
| descriptor.m_MaxDetections = 3; |
| descriptor.m_MaxClassesPerDetection = 1; |
| descriptor.m_DetectionsPerClass =1; |
| descriptor.m_NmsScoreThreshold = 0.0; |
| descriptor.m_NmsIouThreshold = 0.5; |
| descriptor.m_NumClasses = 2; |
| descriptor.m_ScaleY = 10.0; |
| descriptor.m_ScaleX = 10.0; |
| descriptor.m_ScaleH = 5.0; |
| descriptor.m_ScaleW = 5.0; |
| |
| const armnn::TensorInfo anchorsInfo({ 6, 4 }, armnn::DataType::Float32); |
| const std::vector<float> anchorsData({ |
| 0.5f, 0.5f, 1.0f, 1.0f, |
| 0.5f, 0.5f, 1.0f, 1.0f, |
| 0.5f, 0.5f, 1.0f, 1.0f, |
| 0.5f, 10.5f, 1.0f, 1.0f, |
| 0.5f, 10.5f, 1.0f, 1.0f, |
| 0.5f, 100.5f, 1.0f, 1.0f |
| }); |
| armnn::ConstTensor anchors(anchorsInfo, anchorsData); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const detectionLayer = |
| network->AddDetectionPostProcessLayer(descriptor, anchors, layerName.c_str()); |
| |
| for (unsigned int i = 0; i < 2; i++) |
| { |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(static_cast<int>(i)); |
| inputLayer->GetOutputSlot(0).Connect(detectionLayer->GetInputSlot(i)); |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfos[i]); |
| } |
| |
| for (unsigned int i = 0; i < 4; i++) |
| { |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(static_cast<int>(i)); |
| detectionLayer->GetOutputSlot(i).Connect(outputLayer->GetInputSlot(0)); |
| detectionLayer->GetOutputSlot(i).SetTensorInfo(outputInfos[i]); |
| } |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| DetectionPostProcessLayerVerifier verifier(layerName, inputInfos, outputInfos, descriptor, anchors); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeDivision) |
| { |
| class DivisionLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| DivisionLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitDivisionLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("division"); |
| const armnn::TensorInfo info({ 1, 5, 2, 3 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const divisionLayer = network->AddDivisionLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(divisionLayer->GetInputSlot(0)); |
| inputLayer1->GetOutputSlot(0).Connect(divisionLayer->GetInputSlot(1)); |
| divisionLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(info); |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(info); |
| divisionLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| DivisionLayerVerifier verifier(layerName, {info, info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeEqual) |
| { |
| class EqualLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| EqualLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitEqualLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("equal"); |
| const armnn::TensorInfo inputTensorInfo1 = armnn::TensorInfo({2, 1, 2, 4}, armnn::DataType::Float32); |
| const armnn::TensorInfo inputTensorInfo2 = armnn::TensorInfo({2, 1, 2, 4}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputTensorInfo = armnn::TensorInfo({2, 1, 2, 4}, armnn::DataType::Boolean); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer2 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const equalLayer = network->AddEqualLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer1->GetOutputSlot(0).Connect(equalLayer->GetInputSlot(0)); |
| inputLayer2->GetOutputSlot(0).Connect(equalLayer->GetInputSlot(1)); |
| equalLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(inputTensorInfo1); |
| inputLayer2->GetOutputSlot(0).SetTensorInfo(inputTensorInfo2); |
| equalLayer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| EqualLayerVerifier verifier(layerName, {inputTensorInfo1, inputTensorInfo2}, {outputTensorInfo}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeFloor) |
| { |
| class FloorLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| FloorLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitFloorLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("floor"); |
| const armnn::TensorInfo info({4,4}, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const floorLayer = network->AddFloorLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(floorLayer->GetInputSlot(0)); |
| floorLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(info); |
| floorLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| FloorLayerVerifier verifier(layerName, {info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeFullyConnected) |
| { |
| class FullyConnectedLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| FullyConnectedLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::FullyConnectedDescriptor& descriptor, |
| const armnn::ConstTensor& weight, |
| const armnn::Optional<armnn::ConstTensor>& bias) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) |
| , m_Weight(weight) |
| , m_Bias(bias) {} |
| |
| void VisitFullyConnectedLayer(const armnn::IConnectableLayer* layer, |
| const armnn::FullyConnectedDescriptor& descriptor, |
| const armnn::ConstTensor& weight, |
| const armnn::Optional<armnn::ConstTensor>& bias, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| |
| CompareConstTensor(weight, m_Weight); |
| |
| BOOST_TEST(bias.has_value() == m_Bias.has_value()); |
| if (bias.has_value() && m_Bias.has_value()) |
| { |
| CompareConstTensor(bias.value(), m_Bias.value()); |
| } |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::FullyConnectedDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_BiasEnabled == m_Descriptor.m_BiasEnabled); |
| BOOST_TEST(descriptor.m_TransposeWeightMatrix == m_Descriptor.m_TransposeWeightMatrix); |
| } |
| |
| armnn::FullyConnectedDescriptor m_Descriptor; |
| armnn::ConstTensor m_Weight; |
| armnn::Optional<armnn::ConstTensor> m_Bias; |
| }; |
| |
| const std::string layerName("fullyConnected"); |
| const armnn::TensorInfo inputInfo ({ 2, 5, 1, 1 }, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({ 2, 3 }, armnn::DataType::Float32); |
| |
| const armnn::TensorInfo weightsInfo({ 5, 3 }, armnn::DataType::Float32); |
| const armnn::TensorInfo biasesInfo ({ 3 }, armnn::DataType::Float32); |
| std::vector<float> weightsData = GenerateRandomData<float>(weightsInfo.GetNumElements()); |
| std::vector<float> biasesData = GenerateRandomData<float>(biasesInfo.GetNumElements()); |
| armnn::ConstTensor weights(weightsInfo, weightsData); |
| armnn::ConstTensor biases(biasesInfo, biasesData); |
| |
| armnn::FullyConnectedDescriptor descriptor; |
| descriptor.m_BiasEnabled = true; |
| descriptor.m_TransposeWeightMatrix = false; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const fullyConnectedLayer = |
| network->AddFullyConnectedLayer(descriptor, |
| weights, |
| armnn::Optional<armnn::ConstTensor>(biases), |
| layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(fullyConnectedLayer->GetInputSlot(0)); |
| fullyConnectedLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| fullyConnectedLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| FullyConnectedLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, descriptor, weights, biases); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeGather) |
| { |
| class GatherLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| GatherLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitGatherLayer(const armnn::IConnectableLayer* layer, const char *name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| |
| void VisitConstantLayer(const armnn::IConnectableLayer* layer, |
| const armnn::ConstTensor& input, |
| const char *name) override {} |
| }; |
| |
| const std::string layerName("gather"); |
| armnn::TensorInfo paramsInfo({ 8 }, armnn::DataType::QuantisedAsymm8); |
| armnn::TensorInfo outputInfo({ 3 }, armnn::DataType::QuantisedAsymm8); |
| const armnn::TensorInfo indicesInfo({ 3 }, armnn::DataType::Signed32); |
| |
| paramsInfo.SetQuantizationScale(1.0f); |
| paramsInfo.SetQuantizationOffset(0); |
| outputInfo.SetQuantizationScale(1.0f); |
| outputInfo.SetQuantizationOffset(0); |
| |
| const std::vector<int32_t>& indicesData = {7, 6, 5}; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer *const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer *const constantLayer = |
| network->AddConstantLayer(armnn::ConstTensor(indicesInfo, indicesData)); |
| armnn::IConnectableLayer *const gatherLayer = network->AddGatherLayer(layerName.c_str()); |
| armnn::IConnectableLayer *const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(gatherLayer->GetInputSlot(0)); |
| constantLayer->GetOutputSlot(0).Connect(gatherLayer->GetInputSlot(1)); |
| gatherLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(paramsInfo); |
| constantLayer->GetOutputSlot(0).SetTensorInfo(indicesInfo); |
| gatherLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| GatherLayerVerifier verifier(layerName, {paramsInfo, indicesInfo}, {outputInfo}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeGreater) |
| { |
| class GreaterLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| GreaterLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitGreaterLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("greater"); |
| const armnn::TensorInfo inputTensorInfo1({ 1, 2, 2, 2 }, armnn::DataType::Float32); |
| const armnn::TensorInfo inputTensorInfo2({ 1, 2, 2, 2 }, armnn::DataType::Float32); |
| const armnn::TensorInfo outputTensorInfo({ 1, 2, 2, 2 }, armnn::DataType::Boolean); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer2 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const greaterLayer = network->AddGreaterLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer1->GetOutputSlot(0).Connect(greaterLayer->GetInputSlot(0)); |
| inputLayer2->GetOutputSlot(0).Connect(greaterLayer->GetInputSlot(1)); |
| greaterLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(inputTensorInfo1); |
| inputLayer2->GetOutputSlot(0).SetTensorInfo(inputTensorInfo2); |
| greaterLayer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| GreaterLayerVerifier verifier(layerName, {inputTensorInfo1, inputTensorInfo2}, {outputTensorInfo}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| class L2NormalizationLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| L2NormalizationLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::L2NormalizationDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitL2NormalizationLayer(const armnn::IConnectableLayer* layer, |
| const armnn::L2NormalizationDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| private: |
| void VerifyDescriptor(const armnn::L2NormalizationDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_Eps == m_Descriptor.m_Eps); |
| BOOST_TEST(GetDataLayoutName(descriptor.m_DataLayout) == GetDataLayoutName(m_Descriptor.m_DataLayout)); |
| } |
| |
| armnn::L2NormalizationDescriptor m_Descriptor; |
| }; |
| |
| BOOST_AUTO_TEST_CASE(SerializeL2Normalization) |
| { |
| const std::string l2NormLayerName("l2Normalization"); |
| const armnn::TensorInfo info({1, 2, 1, 5}, armnn::DataType::Float32); |
| |
| armnn::L2NormalizationDescriptor desc; |
| desc.m_DataLayout = armnn::DataLayout::NCHW; |
| desc.m_Eps = 0.0001f; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const l2NormLayer = network->AddL2NormalizationLayer(desc, l2NormLayerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(l2NormLayer->GetInputSlot(0)); |
| l2NormLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(info); |
| l2NormLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| L2NormalizationLayerVerifier verifier(l2NormLayerName, {info}, {info}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(EnsureL2NormalizationBackwardCompatibility) |
| { |
| // The hex array below is a flat buffer containing a simple network with one input |
| // a L2Normalization layer and an output layer with dimensions as per the tensor infos below. |
| // |
| // This test verifies that we can still read back these old style |
| // models without the normalization epsilon value. |
| unsigned int size = 508; |
| const unsigned char l2NormalizationModel[] = { |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x0A,0x00,0x10,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x18,0x00,0x00,0x00,0x1C,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x3C,0x01,0x00,0x00, |
| 0x74,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0xE8,0xFE,0xFF,0xFF,0x00,0x00,0x00,0x0B,0x04,0x00,0x00,0x00,0xD6,0xFE,0xFF,0xFF, |
| 0x0C,0x00,0x00,0x00,0x00,0x00,0x06,0x00,0x08,0x00,0x04,0x00,0x06,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0x9E,0xFF,0xFF,0xFF,0x02,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x4C,0xFF,0xFF,0xFF,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x44,0xFF,0xFF,0xFF, |
| 0x00,0x00,0x00,0x20,0x0C,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00, |
| 0x20,0x00,0x00,0x00,0x08,0x00,0x00,0x00,0x04,0x00,0x06,0x00,0x04,0x00,0x00,0x00,0x00,0x00,0x0E,0x00, |
| 0x18,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x10,0x00,0x14,0x00,0x0E,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x1F,0x00,0x00,0x00,0x1C,0x00,0x00,0x00,0x20,0x00,0x00,0x00,0x0F,0x00,0x00,0x00, |
| 0x6C,0x32,0x4E,0x6F,0x72,0x6D,0x61,0x6C,0x69,0x7A,0x61,0x74,0x69,0x6F,0x6E,0x00,0x01,0x00,0x00,0x00, |
| 0x48,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x0C,0x00,0x00,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x04,0x00, |
| 0x08,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x52,0xFF,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x05,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x07,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x09, |
| 0x04,0x00,0x00,0x00,0xF6,0xFF,0xFF,0xFF,0x0C,0x00,0x00,0x00,0x00,0x00,0x06,0x00,0x0A,0x00,0x04,0x00, |
| 0x06,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x0E,0x00,0x14,0x00,0x00,0x00,0x04,0x00,0x08,0x00, |
| 0x0C,0x00,0x10,0x00,0x0E,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x08,0x00,0x0A,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x00,0x00,0x0A,0x00,0x10,0x00,0x08,0x00,0x07,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00,0x00,0x00,0x00,0x01, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x05,0x00,0x00,0x00,0 }; |
| |
| std::stringstream ss; |
| for (unsigned int i = 0; i < size; ++i) |
| { |
| ss << l2NormalizationModel[i]; |
| } |
| std::string l2NormalizationLayerNetwork = ss.str(); |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(l2NormalizationLayerNetwork); |
| BOOST_CHECK(deserializedNetwork); |
| const std::string layerName("l2Normalization"); |
| const armnn::TensorInfo inputInfo = armnn::TensorInfo({1, 2, 1, 5}, armnn::DataType::Float32); |
| |
| armnn::L2NormalizationDescriptor desc; |
| desc.m_DataLayout = armnn::DataLayout::NCHW; |
| // Since this variable does not exist in the l2NormalizationModel[] dump, the default value will be loaded. |
| desc.m_Eps = 1e-12f; |
| |
| L2NormalizationLayerVerifier verifier(layerName, {inputInfo}, {inputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeMaximum) |
| { |
| class MaximumLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| MaximumLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitMaximumLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("maximum"); |
| const armnn::TensorInfo info({ 1, 2, 2, 3 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const maximumLayer = network->AddMaximumLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(maximumLayer->GetInputSlot(0)); |
| inputLayer1->GetOutputSlot(0).Connect(maximumLayer->GetInputSlot(1)); |
| maximumLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(info); |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(info); |
| maximumLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| MaximumLayerVerifier verifier(layerName, {info, info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeMean) |
| { |
| class MeanLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| MeanLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::MeanDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitMeanLayer(const armnn::IConnectableLayer* layer, |
| const armnn::MeanDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::MeanDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_Axis == m_Descriptor.m_Axis); |
| BOOST_TEST(descriptor.m_KeepDims == m_Descriptor.m_KeepDims); |
| } |
| |
| armnn::MeanDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("mean"); |
| const armnn::TensorInfo inputInfo({1, 1, 3, 2}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({1, 1, 1, 2}, armnn::DataType::Float32); |
| |
| armnn::MeanDescriptor descriptor; |
| descriptor.m_Axis = { 2 }; |
| descriptor.m_KeepDims = true; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const meanLayer = network->AddMeanLayer(descriptor, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(meanLayer->GetInputSlot(0)); |
| meanLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| meanLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| MeanLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeMerge) |
| { |
| class MergeLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| MergeLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitMergeLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("merge"); |
| const armnn::TensorInfo info({ 1, 2, 2, 3 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const mergeLayer = network->AddMergeLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(mergeLayer->GetInputSlot(0)); |
| inputLayer1->GetOutputSlot(0).Connect(mergeLayer->GetInputSlot(1)); |
| mergeLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(info); |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(info); |
| mergeLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| MergeLayerVerifier verifier(layerName, {info, info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| class MergerLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| MergerLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::OriginsDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitMergerLayer(const armnn::IConnectableLayer* layer, |
| const armnn::OriginsDescriptor& descriptor, |
| const char* name) override |
| { |
| throw armnn::Exception("MergerLayer should have translated to ConcatLayer"); |
| } |
| |
| void VisitConcatLayer(const armnn::IConnectableLayer* layer, |
| const armnn::OriginsDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::OriginsDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.GetConcatAxis() == m_Descriptor.GetConcatAxis()); |
| BOOST_TEST(descriptor.GetNumViews() == m_Descriptor.GetNumViews()); |
| BOOST_TEST(descriptor.GetNumDimensions() == m_Descriptor.GetNumDimensions()); |
| |
| for (uint32_t i = 0; i < descriptor.GetNumViews(); i++) |
| { |
| for (uint32_t j = 0; j < descriptor.GetNumDimensions(); j++) |
| { |
| BOOST_TEST(descriptor.GetViewOrigin(i)[j] == m_Descriptor.GetViewOrigin(i)[j]); |
| } |
| } |
| } |
| |
| armnn::OriginsDescriptor m_Descriptor; |
| }; |
| |
| // NOTE: until the deprecated AddMergerLayer disappears this test checks that calling |
| // AddMergerLayer places a ConcatLayer into the serialized format and that |
| // when this deserialises we have a ConcatLayer |
| BOOST_AUTO_TEST_CASE(SerializeMerger) |
| { |
| const std::string layerName("merger"); |
| const armnn::TensorInfo inputInfo = armnn::TensorInfo({2, 3, 2, 2}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo = armnn::TensorInfo({4, 3, 2, 2}, armnn::DataType::Float32); |
| |
| const std::vector<armnn::TensorShape> shapes({inputInfo.GetShape(), inputInfo.GetShape()}); |
| |
| armnn::OriginsDescriptor descriptor = |
| armnn::CreateDescriptorForConcatenation(shapes.begin(), shapes.end(), 0); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayerOne = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayerTwo = network->AddInputLayer(1); |
| ARMNN_NO_DEPRECATE_WARN_BEGIN |
| armnn::IConnectableLayer* const mergerLayer = network->AddMergerLayer(descriptor, layerName.c_str()); |
| ARMNN_NO_DEPRECATE_WARN_END |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayerOne->GetOutputSlot(0).Connect(mergerLayer->GetInputSlot(0)); |
| inputLayerTwo->GetOutputSlot(0).Connect(mergerLayer->GetInputSlot(1)); |
| mergerLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayerOne->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| inputLayerTwo->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| mergerLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| std::string mergerLayerNetwork = SerializeNetwork(*network); |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(mergerLayerNetwork); |
| BOOST_CHECK(deserializedNetwork); |
| |
| MergerLayerVerifier verifier(layerName, {inputInfo, inputInfo}, {outputInfo}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(EnsureMergerLayerBackwardCompatibility) |
| { |
| // The hex array below is a flat buffer containing a simple network with two inputs |
| // a merger layer (now deprecated) and an output layer with dimensions as per the tensor infos below. |
| // |
| // This test verifies that we can still read back these old style |
| // models replacing the MergerLayers with ConcatLayers with the same parameters. |
| unsigned int size = 760; |
| const unsigned char mergerModel[] = { |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x0A,0x00,0x10,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x1C,0x00,0x00,0x00,0x24,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x38,0x02,0x00,0x00, |
| 0x8C,0x01,0x00,0x00,0x70,0x00,0x00,0x00,0x18,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0xF4,0xFD,0xFF,0xFF,0x00,0x00,0x00,0x0B, |
| 0x04,0x00,0x00,0x00,0x92,0xFE,0xFF,0xFF,0x04,0x00,0x00,0x00,0x9A,0xFE,0xFF,0xFF,0x04,0x00,0x00,0x00, |
| 0x7E,0xFE,0xFF,0xFF,0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0xF8,0xFE,0xFF,0xFF,0x02,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x48,0xFE,0xFF,0xFF, |
| 0x00,0x00,0x00,0x1F,0x0C,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00, |
| 0x68,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x0C,0x00,0x10,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x0C,0x00, |
| 0x0C,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x24,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x22,0xFF,0xFF,0xFF,0x04,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x3E,0xFF,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x36,0xFF,0xFF,0xFF,0x02,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x1E,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x1C,0x00,0x00,0x00,0x06,0x00,0x00,0x00,0x6D,0x65,0x72,0x67,0x65,0x72,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x5C,0x00,0x00,0x00,0x40,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0x34,0xFF,0xFF,0xFF,0x04,0x00,0x00,0x00,0x92,0xFE,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x08,0x00,0x10,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x08,0x00,0x0E,0x00,0x07,0x00,0x08,0x00,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x09,0x0C,0x00,0x00,0x00,0x00,0x00,0x06,0x00,0x08,0x00,0x04,0x00,0x06,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x08,0x00,0x0E,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x18,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x00,0x00,0x0E,0x00,0x18,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x10,0x00,0x14,0x00, |
| 0x0E,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0x66,0xFF,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x08,0x00,0x0C,0x00, |
| 0x07,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x09,0x04,0x00,0x00,0x00,0xF6,0xFF,0xFF,0xFF, |
| 0x0C,0x00,0x00,0x00,0x00,0x00,0x06,0x00,0x0A,0x00,0x04,0x00,0x06,0x00,0x00,0x00,0x14,0x00,0x00,0x00, |
| 0x00,0x00,0x0E,0x00,0x14,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x10,0x00,0x0E,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x0C,0x00,0x00,0x00,0x08,0x00,0x0A,0x00, |
| 0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x00,0x00,0x0A,0x00,0x10,0x00,0x08,0x00, |
| 0x07,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x04,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x02,0x00,0x00,0x00}; |
| std::stringstream ss; |
| for (unsigned int i = 0; i < size; ++i) |
| { |
| ss << mergerModel[i]; |
| } |
| std::string mergerLayerNetwork = ss.str(); |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(mergerLayerNetwork); |
| BOOST_CHECK(deserializedNetwork); |
| const std::string layerName("merger"); |
| const armnn::TensorInfo inputInfo = armnn::TensorInfo({2, 3, 2, 2}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo = armnn::TensorInfo({4, 3, 2, 2}, armnn::DataType::Float32); |
| |
| const std::vector<armnn::TensorShape> shapes({inputInfo.GetShape(), inputInfo.GetShape()}); |
| |
| armnn::OriginsDescriptor descriptor = |
| armnn::CreateDescriptorForConcatenation(shapes.begin(), shapes.end(), 0); |
| |
| MergerLayerVerifier verifier(layerName, {inputInfo, inputInfo}, {outputInfo}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeConcat) |
| { |
| const std::string layerName("concat"); |
| const armnn::TensorInfo inputInfo = armnn::TensorInfo({2, 3, 2, 2}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo = armnn::TensorInfo({4, 3, 2, 2}, armnn::DataType::Float32); |
| |
| const std::vector<armnn::TensorShape> shapes({inputInfo.GetShape(), inputInfo.GetShape()}); |
| |
| armnn::OriginsDescriptor descriptor = |
| armnn::CreateDescriptorForConcatenation(shapes.begin(), shapes.end(), 0); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayerOne = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayerTwo = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const concatLayer = network->AddConcatLayer(descriptor, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayerOne->GetOutputSlot(0).Connect(concatLayer->GetInputSlot(0)); |
| inputLayerTwo->GetOutputSlot(0).Connect(concatLayer->GetInputSlot(1)); |
| concatLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayerOne->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| inputLayerTwo->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| concatLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| std::string concatLayerNetwork = SerializeNetwork(*network); |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(concatLayerNetwork); |
| BOOST_CHECK(deserializedNetwork); |
| |
| // NOTE: using the MergerLayerVerifier to ensure that it is a concat layer and not a |
| // merger layer that gets placed into the graph. |
| MergerLayerVerifier verifier(layerName, {inputInfo, inputInfo}, {outputInfo}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeMinimum) |
| { |
| class MinimumLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| MinimumLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitMinimumLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("minimum"); |
| const armnn::TensorInfo info({ 1, 2, 2, 3 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const minimumLayer = network->AddMinimumLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(minimumLayer->GetInputSlot(0)); |
| inputLayer1->GetOutputSlot(0).Connect(minimumLayer->GetInputSlot(1)); |
| minimumLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(info); |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(info); |
| minimumLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| MinimumLayerVerifier verifier(layerName, {info, info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeMultiplication) |
| { |
| class MultiplicationLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| MultiplicationLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitMultiplicationLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("multiplication"); |
| const armnn::TensorInfo info({ 1, 5, 2, 3 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const multiplicationLayer = network->AddMultiplicationLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(multiplicationLayer->GetInputSlot(0)); |
| inputLayer1->GetOutputSlot(0).Connect(multiplicationLayer->GetInputSlot(1)); |
| multiplicationLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(info); |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(info); |
| multiplicationLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| MultiplicationLayerVerifier verifier(layerName, {info, info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializePrelu) |
| { |
| class PreluLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| PreluLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitPreluLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("prelu"); |
| |
| armnn::TensorInfo inputTensorInfo ({ 4, 1, 2 }, armnn::DataType::Float32); |
| armnn::TensorInfo alphaTensorInfo ({ 5, 4, 3, 1 }, armnn::DataType::Float32); |
| armnn::TensorInfo outputTensorInfo({ 5, 4, 3, 2 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const alphaLayer = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const preluLayer = network->AddPreluLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(preluLayer->GetInputSlot(0)); |
| alphaLayer->GetOutputSlot(0).Connect(preluLayer->GetInputSlot(1)); |
| preluLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| alphaLayer->GetOutputSlot(0).SetTensorInfo(alphaTensorInfo); |
| preluLayer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| PreluLayerVerifier verifier(layerName, {inputTensorInfo, alphaTensorInfo}, {outputTensorInfo}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeNormalization) |
| { |
| class NormalizationLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| NormalizationLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::NormalizationDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitNormalizationLayer(const armnn::IConnectableLayer* layer, |
| const armnn::NormalizationDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::NormalizationDescriptor& descriptor) |
| { |
| BOOST_TEST(GetDataLayoutName(descriptor.m_DataLayout) == GetDataLayoutName(m_Descriptor.m_DataLayout)); |
| BOOST_TEST(descriptor.m_NormSize == m_Descriptor.m_NormSize); |
| BOOST_TEST(descriptor.m_Alpha == m_Descriptor.m_Alpha); |
| BOOST_TEST(descriptor.m_Beta == m_Descriptor.m_Beta); |
| BOOST_TEST(descriptor.m_K == m_Descriptor.m_K); |
| BOOST_TEST( |
| static_cast<int>(descriptor.m_NormChannelType) == static_cast<int>(m_Descriptor.m_NormChannelType)); |
| BOOST_TEST( |
| static_cast<int>(descriptor.m_NormMethodType) == static_cast<int>(m_Descriptor.m_NormMethodType)); |
| } |
| |
| armnn::NormalizationDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("normalization"); |
| const armnn::TensorInfo info({2, 1, 2, 2}, armnn::DataType::Float32); |
| |
| armnn::NormalizationDescriptor desc; |
| desc.m_DataLayout = armnn::DataLayout::NCHW; |
| desc.m_NormSize = 3; |
| desc.m_Alpha = 1; |
| desc.m_Beta = 1; |
| desc.m_K = 1; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const normalizationLayer = network->AddNormalizationLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(normalizationLayer->GetInputSlot(0)); |
| normalizationLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(info); |
| normalizationLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| NormalizationLayerVerifier verifier(layerName, {info}, {info}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| class PadLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| PadLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::PadDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos), m_Descriptor(descriptor) {} |
| |
| void VisitPadLayer(const armnn::IConnectableLayer* layer, |
| const armnn::PadDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::PadDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_PadList == m_Descriptor.m_PadList); |
| BOOST_TEST(descriptor.m_PadValue == m_Descriptor.m_PadValue); |
| } |
| |
| armnn::PadDescriptor m_Descriptor; |
| }; |
| |
| BOOST_AUTO_TEST_CASE(SerializePad) |
| { |
| |
| const std::string layerName("pad"); |
| const armnn::TensorInfo inputTensorInfo = armnn::TensorInfo({1, 2, 3, 4}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputTensorInfo = armnn::TensorInfo({1, 3, 5, 7}, armnn::DataType::Float32); |
| |
| armnn::PadDescriptor desc({{0, 0}, {1, 0}, {1, 1}, {1, 2}}); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const padLayer = network->AddPadLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(padLayer->GetInputSlot(0)); |
| padLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| padLayer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| PadLayerVerifier verifier(layerName, {inputTensorInfo}, {outputTensorInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(CheckSerializePadBackwardCompatibility) |
| { |
| // The PadDescriptor is being extended with a float PadValue (so a value other than 0 |
| // can be used to pad the tensor. |
| // |
| // This test contains a binary representation of a simple input->pad->output network |
| // prior to this change to test that the descriptor has been updated in a backward |
| // compatible way with respect to Deserialization of older binary dumps |
| unsigned int size = 532; |
| const unsigned char padModel[] = { |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x0A,0x00,0x10,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x18,0x00,0x00,0x00,0x1C,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x54,0x01,0x00,0x00, |
| 0x6C,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0xD0,0xFE,0xFF,0xFF,0x00,0x00,0x00,0x0B,0x04,0x00,0x00,0x00,0x96,0xFF,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x9E,0xFF,0xFF,0xFF,0x04,0x00,0x00,0x00,0x72,0xFF,0xFF,0xFF,0x02,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x2C,0xFF,0xFF,0xFF, |
| 0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x24,0xFF,0xFF,0xFF,0x00,0x00,0x00,0x16,0x0C,0x00,0x00,0x00, |
| 0x08,0x00,0x0E,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x4C,0x00,0x00,0x00,0x0C,0x00,0x00,0x00, |
| 0x00,0x00,0x06,0x00,0x08,0x00,0x04,0x00,0x06,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x00,0x00,0x0E,0x00,0x18,0x00,0x04,0x00, |
| 0x08,0x00,0x0C,0x00,0x10,0x00,0x14,0x00,0x0E,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x70,0x61,0x64,0x00, |
| 0x01,0x00,0x00,0x00,0x48,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x0C,0x00,0x00,0x00,0x08,0x00,0x08,0x00, |
| 0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x52,0xFF,0xFF,0xFF,0x00,0x00,0x00,0x01, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x03,0x00,0x00,0x00, |
| 0x05,0x00,0x00,0x00,0x07,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x07,0x00,0x08,0x00,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x09,0x04,0x00,0x00,0x00,0xF6,0xFF,0xFF,0xFF,0x0C,0x00,0x00,0x00,0x00,0x00,0x06,0x00, |
| 0x0A,0x00,0x04,0x00,0x06,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x0E,0x00,0x14,0x00,0x00,0x00, |
| 0x04,0x00,0x08,0x00,0x0C,0x00,0x10,0x00,0x0E,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x0C,0x00,0x00,0x00,0x08,0x00,0x0A,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x0A,0x00,0x10,0x00,0x08,0x00,0x07,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0 }; |
| |
| std::stringstream ss; |
| for (unsigned int i = 0; i < size; ++i) |
| { |
| ss << padModel[i]; |
| } |
| std::string padNetwork = ss.str(); |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(padNetwork); |
| BOOST_CHECK(deserializedNetwork); |
| |
| const std::string layerName("pad"); |
| const armnn::TensorInfo inputTensorInfo = armnn::TensorInfo({1, 2, 3, 4}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputTensorInfo = armnn::TensorInfo({1, 3, 5, 7}, armnn::DataType::Float32); |
| |
| armnn::PadDescriptor desc({{0, 0}, {1, 0}, {1, 1}, {1, 2}}); |
| |
| PadLayerVerifier verifier(layerName, {inputTensorInfo}, {outputTensorInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializePermute) |
| { |
| class PermuteLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| PermuteLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::PermuteDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitPermuteLayer(const armnn::IConnectableLayer* layer, |
| const armnn::PermuteDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::PermuteDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_DimMappings.IsEqual(m_Descriptor.m_DimMappings)); |
| } |
| |
| armnn::PermuteDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("permute"); |
| const armnn::TensorInfo inputTensorInfo({4, 3, 2, 1}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputTensorInfo({1, 2, 3, 4}, armnn::DataType::Float32); |
| |
| armnn::PermuteDescriptor descriptor(armnn::PermutationVector({3, 2, 1, 0})); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const permuteLayer = network->AddPermuteLayer(descriptor, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(permuteLayer->GetInputSlot(0)); |
| permuteLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| permuteLayer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| PermuteLayerVerifier verifier(layerName, {inputTensorInfo}, {outputTensorInfo}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializePooling2d) |
| { |
| class Pooling2dLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| Pooling2dLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::Pooling2dDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitPooling2dLayer(const armnn::IConnectableLayer* layer, |
| const armnn::Pooling2dDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::Pooling2dDescriptor& descriptor) |
| { |
| BOOST_TEST(GetDataLayoutName(descriptor.m_DataLayout) == GetDataLayoutName(m_Descriptor.m_DataLayout)); |
| BOOST_TEST(descriptor.m_PadLeft == m_Descriptor.m_PadLeft); |
| BOOST_TEST(descriptor.m_PadRight == m_Descriptor.m_PadRight); |
| BOOST_TEST(descriptor.m_PadTop == m_Descriptor.m_PadTop); |
| BOOST_TEST(descriptor.m_PadBottom == m_Descriptor.m_PadBottom); |
| BOOST_TEST(descriptor.m_PoolWidth == m_Descriptor.m_PoolWidth); |
| BOOST_TEST(descriptor.m_PoolHeight == m_Descriptor.m_PoolHeight); |
| BOOST_TEST(descriptor.m_StrideX == m_Descriptor.m_StrideX); |
| BOOST_TEST(descriptor.m_StrideY == m_Descriptor.m_StrideY); |
| |
| BOOST_TEST( |
| static_cast<int>(descriptor.m_PaddingMethod) == static_cast<int>(m_Descriptor.m_PaddingMethod)); |
| BOOST_TEST( |
| static_cast<int>(descriptor.m_PoolType) == static_cast<int>(m_Descriptor.m_PoolType)); |
| BOOST_TEST( |
| static_cast<int>(descriptor.m_OutputShapeRounding) == |
| static_cast<int>(m_Descriptor.m_OutputShapeRounding)); |
| } |
| |
| armnn::Pooling2dDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("pooling2d"); |
| const armnn::TensorInfo inputInfo({1, 2, 2, 1}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({1, 1, 1, 1}, armnn::DataType::Float32); |
| |
| armnn::Pooling2dDescriptor desc; |
| desc.m_DataLayout = armnn::DataLayout::NHWC; |
| desc.m_PadTop = 0; |
| desc.m_PadBottom = 0; |
| desc.m_PadLeft = 0; |
| desc.m_PadRight = 0; |
| desc.m_PoolType = armnn::PoolingAlgorithm::Average; |
| desc.m_OutputShapeRounding = armnn::OutputShapeRounding::Floor; |
| desc.m_PaddingMethod = armnn::PaddingMethod::Exclude; |
| desc.m_PoolHeight = 2; |
| desc.m_PoolWidth = 2; |
| desc.m_StrideX = 2; |
| desc.m_StrideY = 2; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const pooling2dLayer = network->AddPooling2dLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(pooling2dLayer->GetInputSlot(0)); |
| pooling2dLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| pooling2dLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| Pooling2dLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeQuantize) |
| { |
| class QuantizeLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| QuantizeLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitQuantizeLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("quantize"); |
| const armnn::TensorInfo info({ 1, 2, 2, 3 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const quantizeLayer = network->AddQuantizeLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(quantizeLayer->GetInputSlot(0)); |
| quantizeLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(info); |
| quantizeLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| QuantizeLayerVerifier verifier(layerName, {info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| BOOST_AUTO_TEST_CASE(SerializeReshape) |
| { |
| class ReshapeLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| ReshapeLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::ReshapeDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitReshapeLayer(const armnn::IConnectableLayer* layer, |
| const armnn::ReshapeDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::ReshapeDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_TargetShape == m_Descriptor.m_TargetShape); |
| } |
| |
| armnn::ReshapeDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("reshape"); |
| const armnn::TensorInfo inputInfo({1, 9}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({3, 3}, armnn::DataType::Float32); |
| |
| armnn::ReshapeDescriptor descriptor({3, 3}); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const reshapeLayer = network->AddReshapeLayer(descriptor, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(reshapeLayer->GetInputSlot(0)); |
| reshapeLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| reshapeLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| ReshapeLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeResize) |
| { |
| class ResizeLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| ResizeLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::ResizeDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitResizeLayer(const armnn::IConnectableLayer* layer, |
| const armnn::ResizeDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::ResizeDescriptor& descriptor) |
| { |
| BOOST_CHECK(descriptor.m_DataLayout == m_Descriptor.m_DataLayout); |
| BOOST_CHECK(descriptor.m_TargetWidth == m_Descriptor.m_TargetWidth); |
| BOOST_CHECK(descriptor.m_TargetHeight == m_Descriptor.m_TargetHeight); |
| BOOST_CHECK(descriptor.m_Method == m_Descriptor.m_Method); |
| } |
| |
| armnn::ResizeDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("resize"); |
| const armnn::TensorInfo inputInfo = armnn::TensorInfo({1, 3, 5, 5}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo = armnn::TensorInfo({1, 3, 2, 4}, armnn::DataType::Float32); |
| |
| armnn::ResizeDescriptor desc; |
| desc.m_TargetWidth = 4; |
| desc.m_TargetHeight = 2; |
| desc.m_Method = armnn::ResizeMethod::NearestNeighbor; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const resizeLayer = network->AddResizeLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(resizeLayer->GetInputSlot(0)); |
| resizeLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| resizeLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| ResizeLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeRsqrt) |
| { |
| class RsqrtLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| RsqrtLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitRsqrtLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("rsqrt"); |
| const armnn::TensorInfo tensorInfo({ 3, 1, 2 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const rsqrtLayer = network->AddRsqrtLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(rsqrtLayer->GetInputSlot(0)); |
| rsqrtLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(tensorInfo); |
| rsqrtLayer->GetOutputSlot(0).SetTensorInfo(tensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| RsqrtLayerVerifier verifier(layerName, {tensorInfo}, {tensorInfo}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeSoftmax) |
| { |
| class SoftmaxLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| SoftmaxLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::SoftmaxDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitSoftmaxLayer(const armnn::IConnectableLayer* layer, |
| const armnn::SoftmaxDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::SoftmaxDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_Beta == m_Descriptor.m_Beta); |
| } |
| |
| armnn::SoftmaxDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("softmax"); |
| const armnn::TensorInfo info({1, 10}, armnn::DataType::Float32); |
| |
| armnn::SoftmaxDescriptor descriptor; |
| descriptor.m_Beta = 1.0f; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const softmaxLayer = network->AddSoftmaxLayer(descriptor, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(softmaxLayer->GetInputSlot(0)); |
| softmaxLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(info); |
| softmaxLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| SoftmaxLayerVerifier verifier(layerName, {info}, {info}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeSpaceToBatchNd) |
| { |
| class SpaceToBatchNdLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| SpaceToBatchNdLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::SpaceToBatchNdDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitSpaceToBatchNdLayer(const armnn::IConnectableLayer* layer, |
| const armnn::SpaceToBatchNdDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::SpaceToBatchNdDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_PadList == m_Descriptor.m_PadList); |
| BOOST_TEST(descriptor.m_BlockShape == m_Descriptor.m_BlockShape); |
| BOOST_TEST(GetDataLayoutName(descriptor.m_DataLayout) == GetDataLayoutName(m_Descriptor.m_DataLayout)); |
| } |
| |
| armnn::SpaceToBatchNdDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("spaceToBatchNd"); |
| const armnn::TensorInfo inputInfo({2, 1, 2, 4}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({8, 1, 1, 3}, armnn::DataType::Float32); |
| |
| armnn::SpaceToBatchNdDescriptor desc; |
| desc.m_DataLayout = armnn::DataLayout::NCHW; |
| desc.m_BlockShape = {2, 2}; |
| desc.m_PadList = {{0, 0}, {2, 0}}; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const spaceToBatchNdLayer = network->AddSpaceToBatchNdLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(spaceToBatchNdLayer->GetInputSlot(0)); |
| spaceToBatchNdLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| spaceToBatchNdLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| SpaceToBatchNdLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeSpaceToDepth) |
| { |
| class SpaceToDepthLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| SpaceToDepthLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::SpaceToDepthDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitSpaceToDepthLayer(const armnn::IConnectableLayer* layer, |
| const armnn::SpaceToDepthDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::SpaceToDepthDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_BlockSize == m_Descriptor.m_BlockSize); |
| BOOST_TEST(GetDataLayoutName(descriptor.m_DataLayout) == GetDataLayoutName(m_Descriptor.m_DataLayout)); |
| } |
| |
| armnn::SpaceToDepthDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("spaceToDepth"); |
| |
| const armnn::TensorInfo inputInfo ({ 1, 16, 8, 3 }, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({ 1, 8, 4, 12 }, armnn::DataType::Float32); |
| |
| armnn::SpaceToDepthDescriptor desc; |
| desc.m_BlockSize = 2; |
| desc.m_DataLayout = armnn::DataLayout::NHWC; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const spaceToDepthLayer = network->AddSpaceToDepthLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(spaceToDepthLayer->GetInputSlot(0)); |
| spaceToDepthLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| spaceToDepthLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| SpaceToDepthLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeSplitter) |
| { |
| class SplitterLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| SplitterLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::ViewsDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitSplitterLayer(const armnn::IConnectableLayer* layer, |
| const armnn::ViewsDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::ViewsDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.GetNumViews() == m_Descriptor.GetNumViews()); |
| BOOST_TEST(descriptor.GetNumDimensions() == m_Descriptor.GetNumDimensions()); |
| |
| for (uint32_t i = 0; i < descriptor.GetNumViews(); i++) |
| { |
| for (uint32_t j = 0; j < descriptor.GetNumDimensions(); j++) |
| { |
| BOOST_TEST(descriptor.GetViewOrigin(i)[j] == m_Descriptor.GetViewOrigin(i)[j]); |
| BOOST_TEST(descriptor.GetViewSizes(i)[j] == m_Descriptor.GetViewSizes(i)[j]); |
| } |
| } |
| } |
| |
| armnn::ViewsDescriptor m_Descriptor; |
| }; |
| |
| const unsigned int numViews = 3; |
| const unsigned int numDimensions = 4; |
| const unsigned int inputShape[] = {1, 18, 4, 4}; |
| const unsigned int outputShape[] = {1, 6, 4, 4}; |
| |
| // This is modelled on how the caffe parser sets up a splitter layer to partition an input along dimension one. |
| unsigned int splitterDimSizes[4] = {static_cast<unsigned int>(inputShape[0]), |
| static_cast<unsigned int>(inputShape[1]), |
| static_cast<unsigned int>(inputShape[2]), |
| static_cast<unsigned int>(inputShape[3])}; |
| splitterDimSizes[1] /= numViews; |
| armnn::ViewsDescriptor desc(numViews, numDimensions); |
| |
| for (unsigned int g = 0; g < numViews; ++g) |
| { |
| desc.SetViewOriginCoord(g, 1, splitterDimSizes[1] * g); |
| |
| for (unsigned int dimIdx=0; dimIdx < 4; dimIdx++) |
| { |
| desc.SetViewSize(g, dimIdx, splitterDimSizes[dimIdx]); |
| } |
| } |
| |
| const std::string layerName("splitter"); |
| const armnn::TensorInfo inputInfo(numDimensions, inputShape, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo(numDimensions, outputShape, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const splitterLayer = network->AddSplitterLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer0 = network->AddOutputLayer(0); |
| armnn::IConnectableLayer* const outputLayer1 = network->AddOutputLayer(1); |
| armnn::IConnectableLayer* const outputLayer2 = network->AddOutputLayer(2); |
| |
| inputLayer->GetOutputSlot(0).Connect(splitterLayer->GetInputSlot(0)); |
| splitterLayer->GetOutputSlot(0).Connect(outputLayer0->GetInputSlot(0)); |
| splitterLayer->GetOutputSlot(1).Connect(outputLayer1->GetInputSlot(0)); |
| splitterLayer->GetOutputSlot(2).Connect(outputLayer2->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| splitterLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| splitterLayer->GetOutputSlot(1).SetTensorInfo(outputInfo); |
| splitterLayer->GetOutputSlot(2).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| SplitterLayerVerifier verifier(layerName, {inputInfo}, {outputInfo, outputInfo, outputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeStack) |
| { |
| class StackLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| StackLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::StackDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitStackLayer(const armnn::IConnectableLayer* layer, |
| const armnn::StackDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::StackDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_Axis == m_Descriptor.m_Axis); |
| BOOST_TEST(descriptor.m_InputShape == m_Descriptor.m_InputShape); |
| BOOST_TEST(descriptor.m_NumInputs == m_Descriptor.m_NumInputs); |
| } |
| |
| armnn::StackDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("stack"); |
| |
| armnn::TensorInfo inputTensorInfo ({4, 3, 5}, armnn::DataType::Float32); |
| armnn::TensorInfo outputTensorInfo({4, 3, 2, 5}, armnn::DataType::Float32); |
| |
| armnn::StackDescriptor descriptor(2, 2, {4, 3, 5}); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer2 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const stackLayer = network->AddStackLayer(descriptor, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer1->GetOutputSlot(0).Connect(stackLayer->GetInputSlot(0)); |
| inputLayer2->GetOutputSlot(0).Connect(stackLayer->GetInputSlot(1)); |
| stackLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| inputLayer2->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| stackLayer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| StackLayerVerifier verifier(layerName, {inputTensorInfo, inputTensorInfo}, {outputTensorInfo}, descriptor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeStridedSlice) |
| { |
| class StridedSliceLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| StridedSliceLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::StridedSliceDescriptor& descriptor) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_Descriptor(descriptor) {} |
| |
| void VisitStridedSliceLayer(const armnn::IConnectableLayer* layer, |
| const armnn::StridedSliceDescriptor& descriptor, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::StridedSliceDescriptor& descriptor) |
| { |
| BOOST_TEST(descriptor.m_Begin == m_Descriptor.m_Begin); |
| BOOST_TEST(descriptor.m_End == m_Descriptor.m_End); |
| BOOST_TEST(descriptor.m_Stride == m_Descriptor.m_Stride); |
| BOOST_TEST(descriptor.m_BeginMask == m_Descriptor.m_BeginMask); |
| BOOST_TEST(descriptor.m_EndMask == m_Descriptor.m_EndMask); |
| BOOST_TEST(descriptor.m_ShrinkAxisMask == m_Descriptor.m_ShrinkAxisMask); |
| BOOST_TEST(descriptor.m_EllipsisMask == m_Descriptor.m_EllipsisMask); |
| BOOST_TEST(descriptor.m_NewAxisMask == m_Descriptor.m_NewAxisMask); |
| BOOST_TEST(GetDataLayoutName(descriptor.m_DataLayout) == GetDataLayoutName(m_Descriptor.m_DataLayout)); |
| } |
| armnn::StridedSliceDescriptor m_Descriptor; |
| }; |
| |
| const std::string layerName("stridedSlice"); |
| const armnn::TensorInfo inputInfo = armnn::TensorInfo({3, 2, 3, 1}, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo = armnn::TensorInfo({3, 1}, armnn::DataType::Float32); |
| |
| armnn::StridedSliceDescriptor desc({0, 0, 1, 0}, {1, 1, 1, 1}, {1, 1, 1, 1}); |
| desc.m_EndMask = (1 << 4) - 1; |
| desc.m_ShrinkAxisMask = (1 << 1) | (1 << 2); |
| desc.m_DataLayout = armnn::DataLayout::NCHW; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const stridedSliceLayer = network->AddStridedSliceLayer(desc, layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(stridedSliceLayer->GetInputSlot(0)); |
| stridedSliceLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| stridedSliceLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| StridedSliceLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, desc); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeSubtraction) |
| { |
| class SubtractionLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| SubtractionLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitSubtractionLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| }; |
| |
| const std::string layerName("subtraction"); |
| const armnn::TensorInfo info({ 1, 4 }, armnn::DataType::Float32); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer0 = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const inputLayer1 = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const subtractionLayer = network->AddSubtractionLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer0->GetOutputSlot(0).Connect(subtractionLayer->GetInputSlot(0)); |
| inputLayer1->GetOutputSlot(0).Connect(subtractionLayer->GetInputSlot(1)); |
| subtractionLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer0->GetOutputSlot(0).SetTensorInfo(info); |
| inputLayer1->GetOutputSlot(0).SetTensorInfo(info); |
| subtractionLayer->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| SubtractionLayerVerifier verifier(layerName, {info, info}, {info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeSwitch) |
| { |
| class SwitchLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| SwitchLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) {} |
| |
| void VisitSwitchLayer(const armnn::IConnectableLayer* layer, const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| } |
| |
| void VisitConstantLayer(const armnn::IConnectableLayer* layer, |
| const armnn::ConstTensor& input, |
| const char *name) override {} |
| }; |
| |
| const std::string layerName("switch"); |
| const armnn::TensorInfo info({ 1, 4 }, armnn::DataType::Float32); |
| |
| std::vector<float> constantData = GenerateRandomData<float>(info.GetNumElements()); |
| armnn::ConstTensor constTensor(info, constantData); |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const constantLayer = network->AddConstantLayer(constTensor, "constant"); |
| armnn::IConnectableLayer* const switchLayer = network->AddSwitchLayer(layerName.c_str()); |
| armnn::IConnectableLayer* const trueOutputLayer = network->AddOutputLayer(0); |
| armnn::IConnectableLayer* const falseOutputLayer = network->AddOutputLayer(1); |
| |
| inputLayer->GetOutputSlot(0).Connect(switchLayer->GetInputSlot(0)); |
| constantLayer->GetOutputSlot(0).Connect(switchLayer->GetInputSlot(1)); |
| switchLayer->GetOutputSlot(0).Connect(trueOutputLayer->GetInputSlot(0)); |
| switchLayer->GetOutputSlot(1).Connect(falseOutputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(info); |
| constantLayer->GetOutputSlot(0).SetTensorInfo(info); |
| switchLayer->GetOutputSlot(0).SetTensorInfo(info); |
| switchLayer->GetOutputSlot(1).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| SwitchLayerVerifier verifier(layerName, {info, info}, {info, info}); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeTransposeConvolution2d) |
| { |
| class TransposeConvolution2dLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| TransposeConvolution2dLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::TransposeConvolution2dDescriptor& descriptor, |
| const armnn::ConstTensor& weights, |
| const armnn::Optional<armnn::ConstTensor>& biases) : |
| LayerVerifierBase(layerName, inputInfos, outputInfos), |
| m_Descriptor(descriptor), |
| m_Weights(weights), |
| m_Biases(biases) |
| {} |
| |
| void VisitTransposeConvolution2dLayer(const armnn::IConnectableLayer* layer, |
| const armnn::TransposeConvolution2dDescriptor& descriptor, |
| const armnn::ConstTensor& weights, |
| const armnn::Optional<armnn::ConstTensor>& biases, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| |
| // check weights |
| CompareConstTensor(weights, m_Weights); |
| |
| // check biases |
| BOOST_CHECK(biases.has_value() == descriptor.m_BiasEnabled); |
| BOOST_CHECK(m_Biases.has_value() == m_Descriptor.m_BiasEnabled); |
| |
| BOOST_CHECK(biases.has_value() == m_Biases.has_value()); |
| |
| if (biases.has_value() && m_Biases.has_value()) |
| { |
| CompareConstTensor(biases.value(), m_Biases.value()); |
| } |
| } |
| |
| private: |
| void VerifyDescriptor(const armnn::TransposeConvolution2dDescriptor& descriptor) |
| { |
| BOOST_CHECK(descriptor.m_PadLeft == m_Descriptor.m_PadLeft); |
| BOOST_CHECK(descriptor.m_PadRight == m_Descriptor.m_PadRight); |
| BOOST_CHECK(descriptor.m_PadTop == m_Descriptor.m_PadTop); |
| BOOST_CHECK(descriptor.m_PadBottom == m_Descriptor.m_PadBottom); |
| BOOST_CHECK(descriptor.m_StrideX == m_Descriptor.m_StrideX); |
| BOOST_CHECK(descriptor.m_StrideY == m_Descriptor.m_StrideY); |
| BOOST_CHECK(descriptor.m_BiasEnabled == m_Descriptor.m_BiasEnabled); |
| BOOST_CHECK(descriptor.m_DataLayout == m_Descriptor.m_DataLayout); |
| } |
| |
| armnn::TransposeConvolution2dDescriptor m_Descriptor; |
| armnn::ConstTensor m_Weights; |
| armnn::Optional<armnn::ConstTensor> m_Biases; |
| }; |
| |
| const std::string layerName("transposeConvolution2d"); |
| const armnn::TensorInfo inputInfo ({ 1, 7, 7, 1 }, armnn::DataType::Float32); |
| const armnn::TensorInfo outputInfo({ 1, 9, 9, 1 }, armnn::DataType::Float32); |
| |
| const armnn::TensorInfo weightsInfo({ 1, 3, 3, 1 }, armnn::DataType::Float32); |
| const armnn::TensorInfo biasesInfo ({ 1 }, armnn::DataType::Float32); |
| |
| std::vector<float> weightsData = GenerateRandomData<float>(weightsInfo.GetNumElements()); |
| armnn::ConstTensor weights(weightsInfo, weightsData); |
| |
| std::vector<float> biasesData = GenerateRandomData<float>(biasesInfo.GetNumElements()); |
| armnn::ConstTensor biases(biasesInfo, biasesData); |
| |
| armnn::TransposeConvolution2dDescriptor descriptor; |
| descriptor.m_PadLeft = 1; |
| descriptor.m_PadRight = 1; |
| descriptor.m_PadTop = 1; |
| descriptor.m_PadBottom = 1; |
| descriptor.m_StrideX = 1; |
| descriptor.m_StrideY = 1; |
| descriptor.m_BiasEnabled = true; |
| descriptor.m_DataLayout = armnn::DataLayout::NHWC; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const convLayer = |
| network->AddTransposeConvolution2dLayer(descriptor, |
| weights, |
| armnn::Optional<armnn::ConstTensor>(biases), |
| layerName.c_str()); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(0); |
| |
| inputLayer->GetOutputSlot(0).Connect(convLayer->GetInputSlot(0)); |
| convLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); |
| |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputInfo); |
| convLayer->GetOutputSlot(0).SetTensorInfo(outputInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| TransposeConvolution2dLayerVerifier verifier(layerName, {inputInfo}, {outputInfo}, descriptor, weights, biases); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeDeserializeNonLinearNetwork) |
| { |
| class ConstantLayerVerifier : public LayerVerifierBase |
| { |
| public: |
| ConstantLayerVerifier(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::ConstTensor& layerInput) |
| : LayerVerifierBase(layerName, inputInfos, outputInfos) |
| , m_LayerInput(layerInput) {} |
| |
| void VisitConstantLayer(const armnn::IConnectableLayer* layer, |
| const armnn::ConstTensor& input, |
| const char* name) override |
| { |
| VerifyNameAndConnections(layer, name); |
| |
| CompareConstTensor(input, m_LayerInput); |
| } |
| |
| void VisitAdditionLayer(const armnn::IConnectableLayer* layer, const char* name = nullptr) override {} |
| |
| private: |
| armnn::ConstTensor m_LayerInput; |
| }; |
| |
| const std::string layerName("constant"); |
| const armnn::TensorInfo info({ 2, 3 }, armnn::DataType::Float32); |
| |
| std::vector<float> constantData = GenerateRandomData<float>(info.GetNumElements()); |
| armnn::ConstTensor constTensor(info, constantData); |
| |
| armnn::INetworkPtr network(armnn::INetwork::Create()); |
| armnn::IConnectableLayer* input = network->AddInputLayer(0); |
| armnn::IConnectableLayer* add = network->AddAdditionLayer(); |
| armnn::IConnectableLayer* constant = network->AddConstantLayer(constTensor, layerName.c_str()); |
| armnn::IConnectableLayer* output = network->AddOutputLayer(0); |
| |
| input->GetOutputSlot(0).Connect(add->GetInputSlot(0)); |
| constant->GetOutputSlot(0).Connect(add->GetInputSlot(1)); |
| add->GetOutputSlot(0).Connect(output->GetInputSlot(0)); |
| |
| input->GetOutputSlot(0).SetTensorInfo(info); |
| constant->GetOutputSlot(0).SetTensorInfo(info); |
| add->GetOutputSlot(0).SetTensorInfo(info); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| ConstantLayerVerifier verifier(layerName, {}, {info}, constTensor); |
| deserializedNetwork->Accept(verifier); |
| } |
| |
| class VerifyLstmLayer : public LayerVerifierBase |
| { |
| public: |
| VerifyLstmLayer(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::LstmDescriptor& descriptor, |
| const armnn::LstmInputParams& inputParams) : |
| LayerVerifierBase(layerName, inputInfos, outputInfos), m_Descriptor(descriptor), m_InputParams(inputParams) |
| { |
| } |
| void VisitLstmLayer(const armnn::IConnectableLayer* layer, |
| const armnn::LstmDescriptor& descriptor, |
| const armnn::LstmInputParams& params, |
| const char* name) |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyDescriptor(descriptor); |
| VerifyInputParameters(params); |
| } |
| protected: |
| void VerifyDescriptor(const armnn::LstmDescriptor& descriptor) |
| { |
| BOOST_TEST(m_Descriptor.m_ActivationFunc == descriptor.m_ActivationFunc); |
| BOOST_TEST(m_Descriptor.m_ClippingThresCell == descriptor.m_ClippingThresCell); |
| BOOST_TEST(m_Descriptor.m_ClippingThresProj == descriptor.m_ClippingThresProj); |
| BOOST_TEST(m_Descriptor.m_CifgEnabled == descriptor.m_CifgEnabled); |
| BOOST_TEST(m_Descriptor.m_PeepholeEnabled = descriptor.m_PeepholeEnabled); |
| BOOST_TEST(m_Descriptor.m_ProjectionEnabled == descriptor.m_ProjectionEnabled); |
| BOOST_TEST(m_Descriptor.m_LayerNormEnabled == descriptor.m_LayerNormEnabled); |
| } |
| void VerifyInputParameters(const armnn::LstmInputParams& params) |
| { |
| VerifyConstTensors( |
| "m_InputToInputWeights", m_InputParams.m_InputToInputWeights, params.m_InputToInputWeights); |
| VerifyConstTensors( |
| "m_InputToForgetWeights", m_InputParams.m_InputToForgetWeights, params.m_InputToForgetWeights); |
| VerifyConstTensors( |
| "m_InputToCellWeights", m_InputParams.m_InputToCellWeights, params.m_InputToCellWeights); |
| VerifyConstTensors( |
| "m_InputToOutputWeights", m_InputParams.m_InputToOutputWeights, params.m_InputToOutputWeights); |
| VerifyConstTensors( |
| "m_RecurrentToInputWeights", m_InputParams.m_RecurrentToInputWeights, params.m_RecurrentToInputWeights); |
| VerifyConstTensors( |
| "m_RecurrentToForgetWeights", m_InputParams.m_RecurrentToForgetWeights, params.m_RecurrentToForgetWeights); |
| VerifyConstTensors( |
| "m_RecurrentToCellWeights", m_InputParams.m_RecurrentToCellWeights, params.m_RecurrentToCellWeights); |
| VerifyConstTensors( |
| "m_RecurrentToOutputWeights", m_InputParams.m_RecurrentToOutputWeights, params.m_RecurrentToOutputWeights); |
| VerifyConstTensors( |
| "m_CellToInputWeights", m_InputParams.m_CellToInputWeights, params.m_CellToInputWeights); |
| VerifyConstTensors( |
| "m_CellToForgetWeights", m_InputParams.m_CellToForgetWeights, params.m_CellToForgetWeights); |
| VerifyConstTensors( |
| "m_CellToOutputWeights", m_InputParams.m_CellToOutputWeights, params.m_CellToOutputWeights); |
| VerifyConstTensors( |
| "m_InputGateBias", m_InputParams.m_InputGateBias, params.m_InputGateBias); |
| VerifyConstTensors( |
| "m_ForgetGateBias", m_InputParams.m_ForgetGateBias, params.m_ForgetGateBias); |
| VerifyConstTensors( |
| "m_CellBias", m_InputParams.m_CellBias, params.m_CellBias); |
| VerifyConstTensors( |
| "m_OutputGateBias", m_InputParams.m_OutputGateBias, params.m_OutputGateBias); |
| VerifyConstTensors( |
| "m_ProjectionWeights", m_InputParams.m_ProjectionWeights, params.m_ProjectionWeights); |
| VerifyConstTensors( |
| "m_ProjectionBias", m_InputParams.m_ProjectionBias, params.m_ProjectionBias); |
| VerifyConstTensors( |
| "m_InputLayerNormWeights", m_InputParams.m_InputLayerNormWeights, params.m_InputLayerNormWeights); |
| VerifyConstTensors( |
| "m_ForgetLayerNormWeights", m_InputParams.m_ForgetLayerNormWeights, params.m_ForgetLayerNormWeights); |
| VerifyConstTensors( |
| "m_CellLayerNormWeights", m_InputParams.m_CellLayerNormWeights, params.m_CellLayerNormWeights); |
| VerifyConstTensors( |
| "m_OutputLayerNormWeights", m_InputParams.m_OutputLayerNormWeights, params.m_OutputLayerNormWeights); |
| } |
| private: |
| armnn::LstmDescriptor m_Descriptor; |
| armnn::LstmInputParams m_InputParams; |
| }; |
| |
| BOOST_AUTO_TEST_CASE(SerializeDeserializeLstmCifgPeepholeNoProjection) |
| { |
| armnn::LstmDescriptor descriptor; |
| descriptor.m_ActivationFunc = 4; |
| descriptor.m_ClippingThresProj = 0.0f; |
| descriptor.m_ClippingThresCell = 0.0f; |
| descriptor.m_CifgEnabled = true; // if this is true then we DON'T need to set the OptCifgParams |
| descriptor.m_ProjectionEnabled = false; |
| descriptor.m_PeepholeEnabled = true; |
| |
| const uint32_t batchSize = 1; |
| const uint32_t inputSize = 2; |
| const uint32_t numUnits = 4; |
| const uint32_t outputSize = numUnits; |
| |
| armnn::TensorInfo inputWeightsInfo1({numUnits, inputSize}, armnn::DataType::Float32); |
| std::vector<float> inputToForgetWeightsData = GenerateRandomData<float>(inputWeightsInfo1.GetNumElements()); |
| armnn::ConstTensor inputToForgetWeights(inputWeightsInfo1, inputToForgetWeightsData); |
| |
| std::vector<float> inputToCellWeightsData = GenerateRandomData<float>(inputWeightsInfo1.GetNumElements()); |
| armnn::ConstTensor inputToCellWeights(inputWeightsInfo1, inputToCellWeightsData); |
| |
| std::vector<float> inputToOutputWeightsData = GenerateRandomData<float>(inputWeightsInfo1.GetNumElements()); |
| armnn::ConstTensor inputToOutputWeights(inputWeightsInfo1, inputToOutputWeightsData); |
| |
| armnn::TensorInfo inputWeightsInfo2({numUnits, outputSize}, armnn::DataType::Float32); |
| std::vector<float> recurrentToForgetWeightsData = GenerateRandomData<float>(inputWeightsInfo2.GetNumElements()); |
| armnn::ConstTensor recurrentToForgetWeights(inputWeightsInfo2, recurrentToForgetWeightsData); |
| |
| std::vector<float> recurrentToCellWeightsData = GenerateRandomData<float>(inputWeightsInfo2.GetNumElements()); |
| armnn::ConstTensor recurrentToCellWeights(inputWeightsInfo2, recurrentToCellWeightsData); |
| |
| std::vector<float> recurrentToOutputWeightsData = GenerateRandomData<float>(inputWeightsInfo2.GetNumElements()); |
| armnn::ConstTensor recurrentToOutputWeights(inputWeightsInfo2, recurrentToOutputWeightsData); |
| |
| armnn::TensorInfo inputWeightsInfo3({numUnits}, armnn::DataType::Float32); |
| std::vector<float> cellToForgetWeightsData = GenerateRandomData<float>(inputWeightsInfo3.GetNumElements()); |
| armnn::ConstTensor cellToForgetWeights(inputWeightsInfo3, cellToForgetWeightsData); |
| |
| std::vector<float> cellToOutputWeightsData = GenerateRandomData<float>(inputWeightsInfo3.GetNumElements()); |
| armnn::ConstTensor cellToOutputWeights(inputWeightsInfo3, cellToOutputWeightsData); |
| |
| std::vector<float> forgetGateBiasData(numUnits, 1.0f); |
| armnn::ConstTensor forgetGateBias(inputWeightsInfo3, forgetGateBiasData); |
| |
| std::vector<float> cellBiasData(numUnits, 0.0f); |
| armnn::ConstTensor cellBias(inputWeightsInfo3, cellBiasData); |
| |
| std::vector<float> outputGateBiasData(numUnits, 0.0f); |
| armnn::ConstTensor outputGateBias(inputWeightsInfo3, outputGateBiasData); |
| |
| armnn::LstmInputParams params; |
| params.m_InputToForgetWeights = &inputToForgetWeights; |
| params.m_InputToCellWeights = &inputToCellWeights; |
| params.m_InputToOutputWeights = &inputToOutputWeights; |
| params.m_RecurrentToForgetWeights = &recurrentToForgetWeights; |
| params.m_RecurrentToCellWeights = &recurrentToCellWeights; |
| params.m_RecurrentToOutputWeights = &recurrentToOutputWeights; |
| params.m_ForgetGateBias = &forgetGateBias; |
| params.m_CellBias = &cellBias; |
| params.m_OutputGateBias = &outputGateBias; |
| params.m_CellToForgetWeights = &cellToForgetWeights; |
| params.m_CellToOutputWeights = &cellToOutputWeights; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const cellStateIn = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const outputStateIn = network->AddInputLayer(2); |
| const std::string layerName("lstm"); |
| armnn::IConnectableLayer* const lstmLayer = network->AddLstmLayer(descriptor, params, layerName.c_str()); |
| armnn::IConnectableLayer* const scratchBuffer = network->AddOutputLayer(0); |
| armnn::IConnectableLayer* const outputStateOut = network->AddOutputLayer(1); |
| armnn::IConnectableLayer* const cellStateOut = network->AddOutputLayer(2); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(3); |
| |
| // connect up |
| armnn::TensorInfo inputTensorInfo({ batchSize, inputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo cellStateTensorInfo({ batchSize, numUnits}, armnn::DataType::Float32); |
| armnn::TensorInfo outputStateTensorInfo({ batchSize, outputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo lstmTensorInfoScratchBuff({ batchSize, numUnits * 3 }, armnn::DataType::Float32); |
| |
| inputLayer->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(0)); |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| |
| outputStateIn->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(1)); |
| outputStateIn->GetOutputSlot(0).SetTensorInfo(outputStateTensorInfo); |
| |
| cellStateIn->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(2)); |
| cellStateIn->GetOutputSlot(0).SetTensorInfo(cellStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(0).Connect(scratchBuffer->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(0).SetTensorInfo(lstmTensorInfoScratchBuff); |
| |
| lstmLayer->GetOutputSlot(1).Connect(outputStateOut->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(1).SetTensorInfo(outputStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(2).Connect(cellStateOut->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(2).SetTensorInfo(cellStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(3).Connect(outputLayer->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(3).SetTensorInfo(outputStateTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| VerifyLstmLayer checker( |
| layerName, |
| {inputTensorInfo, outputStateTensorInfo, cellStateTensorInfo}, |
| {lstmTensorInfoScratchBuff, outputStateTensorInfo, cellStateTensorInfo, outputStateTensorInfo}, |
| descriptor, |
| params); |
| deserializedNetwork->Accept(checker); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeDeserializeLstmNoCifgWithPeepholeAndProjection) |
| { |
| armnn::LstmDescriptor descriptor; |
| descriptor.m_ActivationFunc = 4; |
| descriptor.m_ClippingThresProj = 0.0f; |
| descriptor.m_ClippingThresCell = 0.0f; |
| descriptor.m_CifgEnabled = false; // if this is true then we DON'T need to set the OptCifgParams |
| descriptor.m_ProjectionEnabled = true; |
| descriptor.m_PeepholeEnabled = true; |
| |
| const uint32_t batchSize = 2; |
| const uint32_t inputSize = 5; |
| const uint32_t numUnits = 20; |
| const uint32_t outputSize = 16; |
| |
| armnn::TensorInfo tensorInfo20x5({numUnits, inputSize}, armnn::DataType::Float32); |
| std::vector<float> inputToInputWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToInputWeights(tensorInfo20x5, inputToInputWeightsData); |
| |
| std::vector<float> inputToForgetWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToForgetWeights(tensorInfo20x5, inputToForgetWeightsData); |
| |
| std::vector<float> inputToCellWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToCellWeights(tensorInfo20x5, inputToCellWeightsData); |
| |
| std::vector<float> inputToOutputWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToOutputWeights(tensorInfo20x5, inputToOutputWeightsData); |
| |
| armnn::TensorInfo tensorInfo20({numUnits}, armnn::DataType::Float32); |
| std::vector<float> inputGateBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor inputGateBias(tensorInfo20, inputGateBiasData); |
| |
| std::vector<float> forgetGateBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor forgetGateBias(tensorInfo20, forgetGateBiasData); |
| |
| std::vector<float> cellBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellBias(tensorInfo20, cellBiasData); |
| |
| std::vector<float> outputGateBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor outputGateBias(tensorInfo20, outputGateBiasData); |
| |
| armnn::TensorInfo tensorInfo20x16({numUnits, outputSize}, armnn::DataType::Float32); |
| std::vector<float> recurrentToInputWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToInputWeights(tensorInfo20x16, recurrentToInputWeightsData); |
| |
| std::vector<float> recurrentToForgetWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToForgetWeights(tensorInfo20x16, recurrentToForgetWeightsData); |
| |
| std::vector<float> recurrentToCellWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToCellWeights(tensorInfo20x16, recurrentToCellWeightsData); |
| |
| std::vector<float> recurrentToOutputWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToOutputWeights(tensorInfo20x16, recurrentToOutputWeightsData); |
| |
| std::vector<float> cellToInputWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellToInputWeights(tensorInfo20, cellToInputWeightsData); |
| |
| std::vector<float> cellToForgetWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellToForgetWeights(tensorInfo20, cellToForgetWeightsData); |
| |
| std::vector<float> cellToOutputWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellToOutputWeights(tensorInfo20, cellToOutputWeightsData); |
| |
| armnn::TensorInfo tensorInfo16x20({outputSize, numUnits}, armnn::DataType::Float32); |
| std::vector<float> projectionWeightsData = GenerateRandomData<float>(tensorInfo16x20.GetNumElements()); |
| armnn::ConstTensor projectionWeights(tensorInfo16x20, projectionWeightsData); |
| |
| armnn::TensorInfo tensorInfo16({outputSize}, armnn::DataType::Float32); |
| std::vector<float> projectionBiasData(outputSize, 0.f); |
| armnn::ConstTensor projectionBias(tensorInfo16, projectionBiasData); |
| |
| armnn::LstmInputParams params; |
| params.m_InputToForgetWeights = &inputToForgetWeights; |
| params.m_InputToCellWeights = &inputToCellWeights; |
| params.m_InputToOutputWeights = &inputToOutputWeights; |
| params.m_RecurrentToForgetWeights = &recurrentToForgetWeights; |
| params.m_RecurrentToCellWeights = &recurrentToCellWeights; |
| params.m_RecurrentToOutputWeights = &recurrentToOutputWeights; |
| params.m_ForgetGateBias = &forgetGateBias; |
| params.m_CellBias = &cellBias; |
| params.m_OutputGateBias = &outputGateBias; |
| |
| // additional params because: descriptor.m_CifgEnabled = false |
| params.m_InputToInputWeights = &inputToInputWeights; |
| params.m_RecurrentToInputWeights = &recurrentToInputWeights; |
| params.m_CellToInputWeights = &cellToInputWeights; |
| params.m_InputGateBias = &inputGateBias; |
| |
| // additional params because: descriptor.m_ProjectionEnabled = true |
| params.m_ProjectionWeights = &projectionWeights; |
| params.m_ProjectionBias = &projectionBias; |
| |
| // additional params because: descriptor.m_PeepholeEnabled = true |
| params.m_CellToForgetWeights = &cellToForgetWeights; |
| params.m_CellToOutputWeights = &cellToOutputWeights; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const cellStateIn = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const outputStateIn = network->AddInputLayer(2); |
| const std::string layerName("lstm"); |
| armnn::IConnectableLayer* const lstmLayer = network->AddLstmLayer(descriptor, params, layerName.c_str()); |
| armnn::IConnectableLayer* const scratchBuffer = network->AddOutputLayer(0); |
| armnn::IConnectableLayer* const outputStateOut = network->AddOutputLayer(1); |
| armnn::IConnectableLayer* const cellStateOut = network->AddOutputLayer(2); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(3); |
| |
| // connect up |
| armnn::TensorInfo inputTensorInfo({ batchSize, inputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo cellStateTensorInfo({ batchSize, numUnits}, armnn::DataType::Float32); |
| armnn::TensorInfo outputStateTensorInfo({ batchSize, outputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo lstmTensorInfoScratchBuff({ batchSize, numUnits * 4 }, armnn::DataType::Float32); |
| |
| inputLayer->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(0)); |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| |
| outputStateIn->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(1)); |
| outputStateIn->GetOutputSlot(0).SetTensorInfo(outputStateTensorInfo); |
| |
| cellStateIn->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(2)); |
| cellStateIn->GetOutputSlot(0).SetTensorInfo(cellStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(0).Connect(scratchBuffer->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(0).SetTensorInfo(lstmTensorInfoScratchBuff); |
| |
| lstmLayer->GetOutputSlot(1).Connect(outputStateOut->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(1).SetTensorInfo(outputStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(2).Connect(cellStateOut->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(2).SetTensorInfo(cellStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(3).Connect(outputLayer->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(3).SetTensorInfo(outputStateTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| VerifyLstmLayer checker( |
| layerName, |
| {inputTensorInfo, outputStateTensorInfo, cellStateTensorInfo}, |
| {lstmTensorInfoScratchBuff, outputStateTensorInfo, cellStateTensorInfo, outputStateTensorInfo}, |
| descriptor, |
| params); |
| deserializedNetwork->Accept(checker); |
| } |
| |
| BOOST_AUTO_TEST_CASE(SerializeDeserializeLstmNoCifgWithPeepholeWithProjectionWithLayerNorm) |
| { |
| armnn::LstmDescriptor descriptor; |
| descriptor.m_ActivationFunc = 4; |
| descriptor.m_ClippingThresProj = 0.0f; |
| descriptor.m_ClippingThresCell = 0.0f; |
| descriptor.m_CifgEnabled = false; // if this is true then we DON'T need to set the OptCifgParams |
| descriptor.m_ProjectionEnabled = true; |
| descriptor.m_PeepholeEnabled = true; |
| descriptor.m_LayerNormEnabled = true; |
| |
| const uint32_t batchSize = 2; |
| const uint32_t inputSize = 5; |
| const uint32_t numUnits = 20; |
| const uint32_t outputSize = 16; |
| |
| armnn::TensorInfo tensorInfo20x5({numUnits, inputSize}, armnn::DataType::Float32); |
| std::vector<float> inputToInputWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToInputWeights(tensorInfo20x5, inputToInputWeightsData); |
| |
| std::vector<float> inputToForgetWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToForgetWeights(tensorInfo20x5, inputToForgetWeightsData); |
| |
| std::vector<float> inputToCellWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToCellWeights(tensorInfo20x5, inputToCellWeightsData); |
| |
| std::vector<float> inputToOutputWeightsData = GenerateRandomData<float>(tensorInfo20x5.GetNumElements()); |
| armnn::ConstTensor inputToOutputWeights(tensorInfo20x5, inputToOutputWeightsData); |
| |
| armnn::TensorInfo tensorInfo20({numUnits}, armnn::DataType::Float32); |
| std::vector<float> inputGateBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor inputGateBias(tensorInfo20, inputGateBiasData); |
| |
| std::vector<float> forgetGateBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor forgetGateBias(tensorInfo20, forgetGateBiasData); |
| |
| std::vector<float> cellBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellBias(tensorInfo20, cellBiasData); |
| |
| std::vector<float> outputGateBiasData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor outputGateBias(tensorInfo20, outputGateBiasData); |
| |
| armnn::TensorInfo tensorInfo20x16({numUnits, outputSize}, armnn::DataType::Float32); |
| std::vector<float> recurrentToInputWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToInputWeights(tensorInfo20x16, recurrentToInputWeightsData); |
| |
| std::vector<float> recurrentToForgetWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToForgetWeights(tensorInfo20x16, recurrentToForgetWeightsData); |
| |
| std::vector<float> recurrentToCellWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToCellWeights(tensorInfo20x16, recurrentToCellWeightsData); |
| |
| std::vector<float> recurrentToOutputWeightsData = GenerateRandomData<float>(tensorInfo20x16.GetNumElements()); |
| armnn::ConstTensor recurrentToOutputWeights(tensorInfo20x16, recurrentToOutputWeightsData); |
| |
| std::vector<float> cellToInputWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellToInputWeights(tensorInfo20, cellToInputWeightsData); |
| |
| std::vector<float> cellToForgetWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellToForgetWeights(tensorInfo20, cellToForgetWeightsData); |
| |
| std::vector<float> cellToOutputWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellToOutputWeights(tensorInfo20, cellToOutputWeightsData); |
| |
| armnn::TensorInfo tensorInfo16x20({outputSize, numUnits}, armnn::DataType::Float32); |
| std::vector<float> projectionWeightsData = GenerateRandomData<float>(tensorInfo16x20.GetNumElements()); |
| armnn::ConstTensor projectionWeights(tensorInfo16x20, projectionWeightsData); |
| |
| armnn::TensorInfo tensorInfo16({outputSize}, armnn::DataType::Float32); |
| std::vector<float> projectionBiasData(outputSize, 0.f); |
| armnn::ConstTensor projectionBias(tensorInfo16, projectionBiasData); |
| |
| std::vector<float> inputLayerNormWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor inputLayerNormWeights(tensorInfo20, forgetGateBiasData); |
| |
| std::vector<float> forgetLayerNormWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor forgetLayerNormWeights(tensorInfo20, forgetGateBiasData); |
| |
| std::vector<float> cellLayerNormWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor cellLayerNormWeights(tensorInfo20, forgetGateBiasData); |
| |
| std::vector<float> outLayerNormWeightsData = GenerateRandomData<float>(tensorInfo20.GetNumElements()); |
| armnn::ConstTensor outLayerNormWeights(tensorInfo20, forgetGateBiasData); |
| |
| armnn::LstmInputParams params; |
| params.m_InputToForgetWeights = &inputToForgetWeights; |
| params.m_InputToCellWeights = &inputToCellWeights; |
| params.m_InputToOutputWeights = &inputToOutputWeights; |
| params.m_RecurrentToForgetWeights = &recurrentToForgetWeights; |
| params.m_RecurrentToCellWeights = &recurrentToCellWeights; |
| params.m_RecurrentToOutputWeights = &recurrentToOutputWeights; |
| params.m_ForgetGateBias = &forgetGateBias; |
| params.m_CellBias = &cellBias; |
| params.m_OutputGateBias = &outputGateBias; |
| |
| // additional params because: descriptor.m_CifgEnabled = false |
| params.m_InputToInputWeights = &inputToInputWeights; |
| params.m_RecurrentToInputWeights = &recurrentToInputWeights; |
| params.m_CellToInputWeights = &cellToInputWeights; |
| params.m_InputGateBias = &inputGateBias; |
| |
| // additional params because: descriptor.m_ProjectionEnabled = true |
| params.m_ProjectionWeights = &projectionWeights; |
| params.m_ProjectionBias = &projectionBias; |
| |
| // additional params because: descriptor.m_PeepholeEnabled = true |
| params.m_CellToForgetWeights = &cellToForgetWeights; |
| params.m_CellToOutputWeights = &cellToOutputWeights; |
| |
| // additional params because: despriptor.m_LayerNormEnabled = true |
| params.m_InputLayerNormWeights = &inputLayerNormWeights; |
| params.m_ForgetLayerNormWeights = &forgetLayerNormWeights; |
| params.m_CellLayerNormWeights = &cellLayerNormWeights; |
| params.m_OutputLayerNormWeights = &outLayerNormWeights; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const cellStateIn = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const outputStateIn = network->AddInputLayer(2); |
| const std::string layerName("lstm"); |
| armnn::IConnectableLayer* const lstmLayer = network->AddLstmLayer(descriptor, params, layerName.c_str()); |
| armnn::IConnectableLayer* const scratchBuffer = network->AddOutputLayer(0); |
| armnn::IConnectableLayer* const outputStateOut = network->AddOutputLayer(1); |
| armnn::IConnectableLayer* const cellStateOut = network->AddOutputLayer(2); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(3); |
| |
| // connect up |
| armnn::TensorInfo inputTensorInfo({ batchSize, inputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo cellStateTensorInfo({ batchSize, numUnits}, armnn::DataType::Float32); |
| armnn::TensorInfo outputStateTensorInfo({ batchSize, outputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo lstmTensorInfoScratchBuff({ batchSize, numUnits * 4 }, armnn::DataType::Float32); |
| |
| inputLayer->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(0)); |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| |
| outputStateIn->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(1)); |
| outputStateIn->GetOutputSlot(0).SetTensorInfo(outputStateTensorInfo); |
| |
| cellStateIn->GetOutputSlot(0).Connect(lstmLayer->GetInputSlot(2)); |
| cellStateIn->GetOutputSlot(0).SetTensorInfo(cellStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(0).Connect(scratchBuffer->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(0).SetTensorInfo(lstmTensorInfoScratchBuff); |
| |
| lstmLayer->GetOutputSlot(1).Connect(outputStateOut->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(1).SetTensorInfo(outputStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(2).Connect(cellStateOut->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(2).SetTensorInfo(cellStateTensorInfo); |
| |
| lstmLayer->GetOutputSlot(3).Connect(outputLayer->GetInputSlot(0)); |
| lstmLayer->GetOutputSlot(3).SetTensorInfo(outputStateTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| VerifyLstmLayer checker( |
| layerName, |
| {inputTensorInfo, outputStateTensorInfo, cellStateTensorInfo}, |
| {lstmTensorInfoScratchBuff, outputStateTensorInfo, cellStateTensorInfo, outputStateTensorInfo}, |
| descriptor, |
| params); |
| deserializedNetwork->Accept(checker); |
| } |
| |
| BOOST_AUTO_TEST_CASE(EnsureLstmLayersBackwardCompatibility) |
| { |
| // The hex array below is a flat buffer containing a lstm layer with no Cifg, with peephole and projection |
| // enabled. That array is created before additional layer normalization parameters where added to the |
| // lstm serializer. That way it can be tested if a lstm model with the old parameter configuration can still be |
| // loaded |
| unsigned int size = 10900; |
| const unsigned char LstmNoCifgWithPeepholeAndProjection_Model[] = { |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x0A,0x00,0x10,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x2C,0x00,0x00,0x00,0x38,0x00,0x00,0x00,0x08,0x00,0x00,0x00,0xDC,0x29,0x00,0x00, |
| 0x38,0x29,0x00,0x00,0xB4,0x28,0x00,0x00,0x94,0x01,0x00,0x00,0x3C,0x01,0x00,0x00,0xE0,0x00,0x00,0x00, |
| 0x84,0x00,0x00,0x00,0x28,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x05,0x00,0x00,0x00,0x06,0x00,0x00,0x00, |
| 0x07,0x00,0x00,0x00,0x70,0xD6,0xFF,0xFF,0x00,0x00,0x00,0x0B,0x04,0x00,0x00,0x00,0x06,0xD7,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x88,0xD7,0xFF,0xFF,0x08,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0xF6,0xD6,0xFF,0xFF, |
| 0x07,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x14,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0xE8,0xD7,0xFF,0xFF,0x03,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0xC8,0xD6,0xFF,0xFF,0x00,0x00,0x00,0x0B, |
| 0x04,0x00,0x00,0x00,0x5E,0xD7,0xFF,0xFF,0x04,0x00,0x00,0x00,0xE0,0xD7,0xFF,0xFF,0x08,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x4E,0xD7,0xFF,0xFF,0x06,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x03,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x40,0xD8,0xFF,0xFF,0x03,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x20,0xD7,0xFF,0xFF,0x00,0x00,0x00,0x0B,0x04,0x00,0x00,0x00,0xB6,0xD7,0xFF,0xFF,0x04,0x00,0x00,0x00, |
| 0x38,0xD8,0xFF,0xFF,0x08,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0xA6,0xD7,0xFF,0xFF,0x05,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x98,0xD8,0xFF,0xFF, |
| 0x03,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x78,0xD7,0xFF,0xFF,0x00,0x00,0x00,0x0B,0x04,0x00,0x00,0x00, |
| 0x0E,0xD8,0xFF,0xFF,0x04,0x00,0x00,0x00,0x16,0xD8,0xFF,0xFF,0x04,0x00,0x00,0x00,0xFA,0xD7,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x14,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0xEC,0xD8,0xFF,0xFF,0x03,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x6C,0xD8,0xFF,0xFF,0x00,0x00,0x00,0x23, |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x0A,0x00,0x12,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00, |
| 0xE0,0x25,0x00,0x00,0xD0,0x25,0x00,0x00,0x2C,0x00,0x00,0x00,0x00,0x00,0x26,0x00,0x48,0x00,0x04,0x00, |
| 0x08,0x00,0x0C,0x00,0x10,0x00,0x14,0x00,0x18,0x00,0x1C,0x00,0x20,0x00,0x24,0x00,0x28,0x00,0x2C,0x00, |
| 0x30,0x00,0x34,0x00,0x38,0x00,0x3C,0x00,0x40,0x00,0x44,0x00,0x26,0x00,0x00,0x00,0xC4,0x23,0x00,0x00, |
| 0xF8,0x21,0x00,0x00,0x2C,0x20,0x00,0x00,0xF0,0x1A,0x00,0x00,0xB4,0x15,0x00,0x00,0x78,0x10,0x00,0x00, |
| 0xF0,0x0F,0x00,0x00,0x68,0x0F,0x00,0x00,0xE0,0x0E,0x00,0x00,0x14,0x0D,0x00,0x00,0xD8,0x07,0x00,0x00, |
| 0x50,0x07,0x00,0x00,0xC8,0x06,0x00,0x00,0x8C,0x01,0x00,0x00,0x14,0x01,0x00,0x00,0x8C,0x00,0x00,0x00, |
| 0x04,0x00,0x00,0x00,0xEE,0xD7,0xFF,0xFF,0x00,0x00,0x00,0x03,0x64,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0xFE,0xD8,0xFF,0xFF,0x04,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x5A,0xD8,0xFF,0xFF,0x00,0x00,0x00,0x01, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x72,0xD8,0xFF,0xFF, |
| 0x00,0x00,0x00,0x03,0x64,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x82,0xD9,0xFF,0xFF,0x04,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0xDE,0xD8,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0xF6,0xD8,0xFF,0xFF,0x00,0x00,0x00,0x03,0x54,0x00,0x00,0x00, |
| 0x04,0x00,0x00,0x00,0x06,0xDA,0xFF,0xFF,0x04,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x52,0xD9,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x6A,0xD9,0xFF,0xFF,0x00,0x00,0x00,0x03,0x14,0x05,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0x7A,0xDA,0xFF,0xFF,0x04,0x00,0x00,0x00,0x40,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x86,0xDE,0xFF,0xFF,0x00,0x00,0x00,0x01, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x14,0x00,0x00,0x00, |
| 0xA2,0xDE,0xFF,0xFF,0x00,0x00,0x00,0x03,0x64,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0xB2,0xDF,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x0E,0xDF,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x26,0xDF,0xFF,0xFF,0x00,0x00,0x00,0x03, |
| 0x64,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x36,0xE0,0xFF,0xFF,0x04,0x00,0x00,0x00,0x14,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x92,0xDF,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0xAA,0xDF,0xFF,0xFF,0x00,0x00,0x00,0x03,0x14,0x05,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0xBA,0xE0,0xFF,0xFF,0x04,0x00,0x00,0x00,0x40,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0xC6,0xE4,0xFF,0xFF,0x00,0x00,0x00,0x01, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0xE2,0xE4,0xFF,0xFF,0x00,0x00,0x00,0x03,0xA4,0x01,0x00,0x00,0x04,0x00,0x00,0x00,0xF2,0xE5,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x64,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x8E,0xE6,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x05,0x00,0x00,0x00,0xAA,0xE6,0xFF,0xFF, |
| 0x00,0x00,0x00,0x03,0x64,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0xBA,0xE7,0xFF,0xFF,0x04,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x16,0xE7,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x2E,0xE7,0xFF,0xFF,0x00,0x00,0x00,0x03,0x64,0x00,0x00,0x00, |
| 0x04,0x00,0x00,0x00,0x3E,0xE8,0xFF,0xFF,0x04,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x9A,0xE7,0xFF,0xFF, |
| 0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x14,0x00,0x00,0x00, |
| 0xB2,0xE7,0xFF,0xFF,0x00,0x00,0x00,0x03,0x64,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0xC2,0xE8,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x1E,0xE8,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x36,0xE8,0xFF,0xFF,0x00,0x00,0x00,0x03, |
| 0x14,0x05,0x00,0x00,0x04,0x00,0x00,0x00,0x46,0xE9,0xFF,0xFF,0x04,0x00,0x00,0x00,0x40,0x01,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x52,0xED,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x6E,0xED,0xFF,0xFF,0x00,0x00,0x00,0x03,0x14,0x05,0x00,0x00, |
| 0x04,0x00,0x00,0x00,0x7E,0xEE,0xFF,0xFF,0x04,0x00,0x00,0x00,0x40,0x01,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x8A,0xF2,0xFF,0xFF, |
| 0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x14,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0xA6,0xF2,0xFF,0xFF,0x00,0x00,0x00,0x03,0x14,0x05,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0xB6,0xF3,0xFF,0xFF,0x04,0x00,0x00,0x00,0x40,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
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| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
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| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0xC2,0xF7,0xFF,0xFF,0x00,0x00,0x00,0x01, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0xDE,0xF7,0xFF,0xFF,0x00,0x00,0x00,0x03,0xA4,0x01,0x00,0x00,0x04,0x00,0x00,0x00,0xEE,0xF8,0xFF,0xFF, |
| 0x04,0x00,0x00,0x00,0x64,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x8A,0xF9,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x05,0x00,0x00,0x00,0xA6,0xF9,0xFF,0xFF, |
| 0x00,0x00,0x00,0x03,0xA4,0x01,0x00,0x00,0x04,0x00,0x00,0x00,0xB6,0xFA,0xFF,0xFF,0x04,0x00,0x00,0x00, |
| 0x64,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x52,0xFB,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x05,0x00,0x00,0x00,0x6E,0xFB,0xFF,0xFF,0x00,0x00,0x00,0x03, |
| 0xA4,0x01,0x00,0x00,0x04,0x00,0x00,0x00,0x7E,0xFC,0xFF,0xFF,0x04,0x00,0x00,0x00,0x64,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x1A,0xFD,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x05,0x00,0x00,0x00,0x10,0x00,0x0C,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x05,0x00, |
| 0x06,0x00,0x07,0x00,0x10,0x00,0x00,0x00,0x00,0x00,0x01,0x01,0x04,0x00,0x00,0x00,0x2E,0xFE,0xFF,0xFF, |
| 0x03,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x22,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x20,0x00,0x00,0x00, |
| 0x04,0x00,0x00,0x00,0x6C,0x73,0x74,0x6D,0x00,0x00,0x00,0x00,0x03,0x00,0x00,0x00,0xEC,0x00,0x00,0x00, |
| 0xD0,0x00,0x00,0x00,0xB4,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x88,0x00,0x00,0x00,0x5C,0x00,0x00,0x00, |
| 0x30,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x14,0xFF,0xFF,0xFF,0x03,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0xA6,0xFD,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x3C,0xFF,0xFF,0xFF,0x02,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0xCE,0xFD,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x64,0xFF,0xFF,0xFF,0x01,0x00,0x00,0x00,0x04,0x00,0x00,0x00, |
| 0xF6,0xFD,0xFF,0xFF,0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0xB4,0xFE,0xFF,0xFF,0x04,0x00,0x00,0x00,0x1A,0xFE,0xFF,0xFF, |
| 0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x50,0x00,0x00,0x00,0xF0,0xFF,0xFF,0xFF,0x02,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x08,0x00,0x10,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0xE8,0xFE,0xFF,0xFF,0x00,0x00,0x00,0x09,0x04,0x00,0x00,0x00,0x7E,0xFF,0xFF,0xFF, |
| 0x0C,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x08,0x00,0x00,0x00, |
| 0x02,0x00,0x00,0x00,0x76,0xFF,0xFF,0xFF,0x02,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x68,0xFF,0xFF,0xFF,0x04,0x00,0x00,0x00,0xCE,0xFE,0xFF,0xFF, |
| 0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x08,0x00,0x0E,0x00,0x07,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x09, |
| 0x0C,0x00,0x00,0x00,0x00,0x00,0x06,0x00,0x08,0x00,0x04,0x00,0x06,0x00,0x00,0x00,0x0C,0x00,0x00,0x00, |
| 0x08,0x00,0x0E,0x00,0x04,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x18,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x00,0x00,0x0E,0x00,0x18,0x00,0x04,0x00,0x08,0x00,0x0C,0x00,0x10,0x00,0x14,0x00,0x0E,0x00,0x00,0x00, |
| 0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x0C,0x00,0x00,0x00, |
| 0x08,0x00,0x08,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x04,0x00,0x00,0x00,0x6E,0xFF,0xFF,0xFF, |
| 0x00,0x00,0x00,0x01,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x02,0x00,0x00,0x00, |
| 0x14,0x00,0x00,0x00,0x08,0x00,0x0C,0x00,0x07,0x00,0x08,0x00,0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x09, |
| 0x04,0x00,0x00,0x00,0xF6,0xFF,0xFF,0xFF,0x0C,0x00,0x00,0x00,0x00,0x00,0x06,0x00,0x0A,0x00,0x04,0x00, |
| 0x06,0x00,0x00,0x00,0x14,0x00,0x00,0x00,0x00,0x00,0x0E,0x00,0x14,0x00,0x00,0x00,0x04,0x00,0x08,0x00, |
| 0x0C,0x00,0x10,0x00,0x0E,0x00,0x00,0x00,0x10,0x00,0x00,0x00,0x01,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x10,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x01,0x00,0x00,0x00, |
| 0x0C,0x00,0x00,0x00,0x08,0x00,0x0A,0x00,0x00,0x00,0x04,0x00,0x08,0x00,0x00,0x00,0x10,0x00,0x00,0x00, |
| 0x00,0x00,0x0A,0x00,0x10,0x00,0x08,0x00,0x07,0x00,0x0C,0x00,0x0A,0x00,0x00,0x00,0x00,0x00,0x00,0x01, |
| 0x08,0x00,0x00,0x00,0x00,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x02,0x00,0x00,0x00,0x05,0x00,0x00,0x00,0 }; |
| |
| std::stringstream ss; |
| for (unsigned int i = 0; i < size; ++i) |
| { |
| ss << LstmNoCifgWithPeepholeAndProjection_Model[i]; |
| } |
| std::string lstmLayerNetwork = ss.str(); |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(lstmLayerNetwork); |
| BOOST_CHECK(deserializedNetwork); |
| |
| // generating the same model parameters which where used to serialize the model (Layer norm is not specified) |
| armnn::LstmDescriptor descriptor; |
| descriptor.m_ActivationFunc = 4; |
| descriptor.m_ClippingThresProj = 0.0f; |
| descriptor.m_ClippingThresCell = 0.0f; |
| descriptor.m_CifgEnabled = false; |
| descriptor.m_ProjectionEnabled = true; |
| descriptor.m_PeepholeEnabled = true; |
| |
| const uint32_t batchSize = 2; |
| const uint32_t inputSize = 5; |
| const uint32_t numUnits = 20; |
| const uint32_t outputSize = 16; |
| |
| armnn::TensorInfo tensorInfo20x5({numUnits, inputSize}, armnn::DataType::Float32); |
| std::vector<float> inputToInputWeightsData(tensorInfo20x5.GetNumElements(), 0.0f); |
| armnn::ConstTensor inputToInputWeights(tensorInfo20x5, inputToInputWeightsData); |
| |
| std::vector<float> inputToForgetWeightsData(tensorInfo20x5.GetNumElements(), 0.0f); |
| armnn::ConstTensor inputToForgetWeights(tensorInfo20x5, inputToForgetWeightsData); |
| |
| std::vector<float> inputToCellWeightsData(tensorInfo20x5.GetNumElements(), 0.0f); |
| armnn::ConstTensor inputToCellWeights(tensorInfo20x5, inputToCellWeightsData); |
| |
| std::vector<float> inputToOutputWeightsData(tensorInfo20x5.GetNumElements(), 0.0f); |
| armnn::ConstTensor inputToOutputWeights(tensorInfo20x5, inputToOutputWeightsData); |
| |
| armnn::TensorInfo tensorInfo20({numUnits}, armnn::DataType::Float32); |
| std::vector<float> inputGateBiasData(tensorInfo20.GetNumElements(), 0.0f); |
| armnn::ConstTensor inputGateBias(tensorInfo20, inputGateBiasData); |
| |
| std::vector<float> forgetGateBiasData(tensorInfo20.GetNumElements(), 0.0f); |
| armnn::ConstTensor forgetGateBias(tensorInfo20, forgetGateBiasData); |
| |
| std::vector<float> cellBiasData(tensorInfo20.GetNumElements(), 0.0f); |
| armnn::ConstTensor cellBias(tensorInfo20, cellBiasData); |
| |
| std::vector<float> outputGateBiasData(tensorInfo20.GetNumElements(), 0.0f); |
| armnn::ConstTensor outputGateBias(tensorInfo20, outputGateBiasData); |
| |
| armnn::TensorInfo tensorInfo20x16({numUnits, outputSize}, armnn::DataType::Float32); |
| std::vector<float> recurrentToInputWeightsData(tensorInfo20x16.GetNumElements(), 0.0f); |
| armnn::ConstTensor recurrentToInputWeights(tensorInfo20x16, recurrentToInputWeightsData); |
| |
| std::vector<float> recurrentToForgetWeightsData(tensorInfo20x16.GetNumElements(), 0.0f); |
| armnn::ConstTensor recurrentToForgetWeights(tensorInfo20x16, recurrentToForgetWeightsData); |
| |
| std::vector<float> recurrentToCellWeightsData(tensorInfo20x16.GetNumElements(), 0.0f); |
| armnn::ConstTensor recurrentToCellWeights(tensorInfo20x16, recurrentToCellWeightsData); |
| |
| std::vector<float> recurrentToOutputWeightsData(tensorInfo20x16.GetNumElements(), 0.0f); |
| armnn::ConstTensor recurrentToOutputWeights(tensorInfo20x16, recurrentToOutputWeightsData); |
| |
| std::vector<float> cellToInputWeightsData(tensorInfo20.GetNumElements(), 0.0f); |
| armnn::ConstTensor cellToInputWeights(tensorInfo20, cellToInputWeightsData); |
| |
| std::vector<float> cellToForgetWeightsData(tensorInfo20.GetNumElements(), 0.0f); |
| armnn::ConstTensor cellToForgetWeights(tensorInfo20, cellToForgetWeightsData); |
| |
| std::vector<float> cellToOutputWeightsData(tensorInfo20.GetNumElements(), 0.0f); |
| armnn::ConstTensor cellToOutputWeights(tensorInfo20, cellToOutputWeightsData); |
| |
| armnn::TensorInfo tensorInfo16x20({outputSize, numUnits}, armnn::DataType::Float32); |
| std::vector<float> projectionWeightsData(tensorInfo16x20.GetNumElements(), 0.0f); |
| armnn::ConstTensor projectionWeights(tensorInfo16x20, projectionWeightsData); |
| |
| armnn::TensorInfo tensorInfo16({outputSize}, armnn::DataType::Float32); |
| std::vector<float> projectionBiasData(outputSize, 0.0f); |
| armnn::ConstTensor projectionBias(tensorInfo16, projectionBiasData); |
| |
| armnn::LstmInputParams params; |
| params.m_InputToForgetWeights = &inputToForgetWeights; |
| params.m_InputToCellWeights = &inputToCellWeights; |
| params.m_InputToOutputWeights = &inputToOutputWeights; |
| params.m_RecurrentToForgetWeights = &recurrentToForgetWeights; |
| params.m_RecurrentToCellWeights = &recurrentToCellWeights; |
| params.m_RecurrentToOutputWeights = &recurrentToOutputWeights; |
| params.m_ForgetGateBias = &forgetGateBias; |
| params.m_CellBias = &cellBias; |
| params.m_OutputGateBias = &outputGateBias; |
| |
| // additional params because: descriptor.m_CifgEnabled = false |
| params.m_InputToInputWeights = &inputToInputWeights; |
| params.m_RecurrentToInputWeights = &recurrentToInputWeights; |
| params.m_CellToInputWeights = &cellToInputWeights; |
| params.m_InputGateBias = &inputGateBias; |
| |
| // additional params because: descriptor.m_ProjectionEnabled = true |
| params.m_ProjectionWeights = &projectionWeights; |
| params.m_ProjectionBias = &projectionBias; |
| |
| // additional params because: descriptor.m_PeepholeEnabled = true |
| params.m_CellToForgetWeights = &cellToForgetWeights; |
| params.m_CellToOutputWeights = &cellToOutputWeights; |
| |
| const std::string layerName("lstm"); |
| armnn::TensorInfo inputTensorInfo({ batchSize, inputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo cellStateTensorInfo({ batchSize, numUnits}, armnn::DataType::Float32); |
| armnn::TensorInfo outputStateTensorInfo({ batchSize, outputSize }, armnn::DataType::Float32); |
| armnn::TensorInfo lstmTensorInfoScratchBuff({ batchSize, numUnits * 4 }, armnn::DataType::Float32); |
| |
| // lets verify that the deserialized model without the new layer normalization parameters still works |
| VerifyLstmLayer checker( |
| layerName, |
| {inputTensorInfo, outputStateTensorInfo, cellStateTensorInfo}, |
| {lstmTensorInfoScratchBuff, outputStateTensorInfo, cellStateTensorInfo, outputStateTensorInfo}, |
| descriptor, |
| params); |
| deserializedNetwork->Accept(checker); |
| } |
| |
| class VerifyQuantizedLstmLayer : public LayerVerifierBase |
| { |
| |
| public: |
| VerifyQuantizedLstmLayer(const std::string& layerName, |
| const std::vector<armnn::TensorInfo>& inputInfos, |
| const std::vector<armnn::TensorInfo>& outputInfos, |
| const armnn::QuantizedLstmInputParams& inputParams) : |
| LayerVerifierBase(layerName, inputInfos, outputInfos), m_InputParams(inputParams) |
| { |
| } |
| |
| void VisitQuantizedLstmLayer(const armnn::IConnectableLayer* layer, |
| const armnn::QuantizedLstmInputParams& params, |
| const char* name) |
| { |
| VerifyNameAndConnections(layer, name); |
| VerifyInputParameters(params); |
| } |
| |
| protected: |
| void VerifyInputParameters(const armnn::QuantizedLstmInputParams& params) |
| { |
| VerifyConstTensors("m_InputToInputWeights", |
| m_InputParams.m_InputToInputWeights, params.m_InputToInputWeights); |
| VerifyConstTensors("m_InputToForgetWeights", |
| m_InputParams.m_InputToForgetWeights, params.m_InputToForgetWeights); |
| VerifyConstTensors("m_InputToCellWeights", |
| m_InputParams.m_InputToCellWeights, params.m_InputToCellWeights); |
| VerifyConstTensors("m_InputToOutputWeights", |
| m_InputParams.m_InputToOutputWeights, params.m_InputToOutputWeights); |
| VerifyConstTensors("m_RecurrentToInputWeights", |
| m_InputParams.m_RecurrentToInputWeights, params.m_RecurrentToInputWeights); |
| VerifyConstTensors("m_RecurrentToForgetWeights", |
| m_InputParams.m_RecurrentToForgetWeights, params.m_RecurrentToForgetWeights); |
| VerifyConstTensors("m_RecurrentToCellWeights", |
| m_InputParams.m_RecurrentToCellWeights, params.m_RecurrentToCellWeights); |
| VerifyConstTensors("m_RecurrentToOutputWeights", |
| m_InputParams.m_RecurrentToOutputWeights, params.m_RecurrentToOutputWeights); |
| VerifyConstTensors("m_InputGateBias", |
| m_InputParams.m_InputGateBias, params.m_InputGateBias); |
| VerifyConstTensors("m_ForgetGateBias", |
| m_InputParams.m_ForgetGateBias, params.m_ForgetGateBias); |
| VerifyConstTensors("m_CellBias", |
| m_InputParams.m_CellBias, params.m_CellBias); |
| VerifyConstTensors("m_OutputGateBias", |
| m_InputParams.m_OutputGateBias, params.m_OutputGateBias); |
| } |
| |
| private: |
| armnn::QuantizedLstmInputParams m_InputParams; |
| }; |
| |
| BOOST_AUTO_TEST_CASE(SerializeDeserializeQuantizedLstm) |
| { |
| const uint32_t batchSize = 1; |
| const uint32_t inputSize = 2; |
| const uint32_t numUnits = 4; |
| const uint32_t outputSize = numUnits; |
| |
| std::vector<uint8_t> inputToInputWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> inputToInputWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor inputToInputWeights(armnn::TensorInfo( |
| 4, inputToInputWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), inputToInputWeightsData); |
| |
| std::vector<uint8_t> inputToForgetWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> inputToForgetWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor inputToForgetWeights(armnn::TensorInfo( |
| 4, inputToForgetWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), inputToForgetWeightsData); |
| |
| std::vector<uint8_t> inputToCellWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> inputToCellWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor inputToCellWeights(armnn::TensorInfo( |
| 4, inputToCellWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), inputToCellWeightsData); |
| |
| std::vector<uint8_t> inputToOutputWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> inputToOutputWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor inputToOutputWeights(armnn::TensorInfo( |
| 4, inputToOutputWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), inputToOutputWeightsData); |
| |
| std::vector<uint8_t> recurrentToInputWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> recurrentToInputWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor recurrentToInputWeights(armnn::TensorInfo( |
| 4, recurrentToInputWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), recurrentToInputWeightsData); |
| |
| std::vector<uint8_t> recurrentToForgetWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> recurrentToForgetWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor recurrentToForgetWeights(armnn::TensorInfo( |
| 4, recurrentToForgetWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), recurrentToForgetWeightsData); |
| |
| std::vector<uint8_t> recurrentToCellWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> recurrentToCellWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor recurrentToCellWeights(armnn::TensorInfo( |
| 4, recurrentToCellWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), recurrentToCellWeightsData); |
| |
| std::vector<uint8_t> recurrentToOutputWeightsData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> recurrentToOutputWeightsDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor recurrentToOutputWeights(armnn::TensorInfo( |
| 4, recurrentToOutputWeightsDimensions.data(), |
| armnn::DataType::QuantisedAsymm8), recurrentToOutputWeightsData); |
| |
| |
| std::vector<int32_t> inputGateBiasData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> inputGateBiasDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor inputGateBias(armnn::TensorInfo( |
| 4, inputGateBiasDimensions.data(), |
| armnn::DataType::Signed32), inputGateBiasData); |
| |
| std::vector<int32_t> forgetGateBiasData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> forgetGateBiasDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor forgetGateBias(armnn::TensorInfo( |
| 4, forgetGateBiasDimensions.data(), |
| armnn::DataType::Signed32), forgetGateBiasData); |
| |
| std::vector<int32_t> cellBiasData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> cellBiasDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor cellBias(armnn::TensorInfo( |
| 4, cellBiasDimensions.data(), |
| armnn::DataType::Signed32), cellBiasData); |
| |
| std::vector<int32_t> outputGateBiasData = {1, 2, 3, 4, 5, 6, 7, 8, 9}; |
| std::vector<unsigned int> outputGateBiasDimensions = {1, 1, 3, 3}; |
| armnn::ConstTensor outputGateBias(armnn::TensorInfo( |
| 4, outputGateBiasDimensions.data(), |
| armnn::DataType::Signed32), outputGateBiasData); |
| |
| armnn::QuantizedLstmInputParams params; |
| params.m_InputToInputWeights = &inputToInputWeights; |
| params.m_InputToForgetWeights = &inputToForgetWeights; |
| params.m_InputToCellWeights = &inputToCellWeights; |
| params.m_InputToOutputWeights = &inputToOutputWeights; |
| params.m_RecurrentToInputWeights = &recurrentToInputWeights; |
| params.m_RecurrentToForgetWeights = &recurrentToForgetWeights; |
| params.m_RecurrentToCellWeights = &recurrentToCellWeights; |
| params.m_RecurrentToOutputWeights = &recurrentToOutputWeights; |
| params.m_InputGateBias = &inputGateBias; |
| params.m_ForgetGateBias = &forgetGateBias; |
| params.m_CellBias = &cellBias; |
| params.m_OutputGateBias = &outputGateBias; |
| |
| armnn::INetworkPtr network = armnn::INetwork::Create(); |
| armnn::IConnectableLayer* const inputLayer = network->AddInputLayer(0); |
| armnn::IConnectableLayer* const cellStateIn = network->AddInputLayer(1); |
| armnn::IConnectableLayer* const outputStateIn = network->AddInputLayer(2); |
| const std::string layerName("QuantizedLstm"); |
| armnn::IConnectableLayer* const quantizedLstmLayer = network->AddQuantizedLstmLayer(params, layerName.c_str()); |
| armnn::IConnectableLayer* const cellStateOut = network->AddOutputLayer(0); |
| armnn::IConnectableLayer* const outputLayer = network->AddOutputLayer(1); |
| |
| // connect up |
| armnn::TensorInfo inputTensorInfo({ batchSize, inputSize }, armnn::DataType::QuantisedAsymm8); |
| armnn::TensorInfo cellStateTensorInfo({ batchSize, numUnits}, armnn::DataType::Signed32); |
| armnn::TensorInfo outputStateTensorInfo({ batchSize, outputSize }, armnn::DataType::QuantisedAsymm8); |
| |
| inputLayer->GetOutputSlot(0).Connect(quantizedLstmLayer->GetInputSlot(0)); |
| inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); |
| |
| cellStateIn->GetOutputSlot(0).Connect(quantizedLstmLayer->GetInputSlot(1)); |
| cellStateIn->GetOutputSlot(0).SetTensorInfo(cellStateTensorInfo); |
| |
| outputStateIn->GetOutputSlot(0).Connect(quantizedLstmLayer->GetInputSlot(2)); |
| outputStateIn->GetOutputSlot(0).SetTensorInfo(outputStateTensorInfo); |
| |
| quantizedLstmLayer->GetOutputSlot(0).Connect(cellStateOut->GetInputSlot(0)); |
| quantizedLstmLayer->GetOutputSlot(0).SetTensorInfo(cellStateTensorInfo); |
| |
| quantizedLstmLayer->GetOutputSlot(1).Connect(outputLayer->GetInputSlot(0)); |
| quantizedLstmLayer->GetOutputSlot(1).SetTensorInfo(outputStateTensorInfo); |
| |
| armnn::INetworkPtr deserializedNetwork = DeserializeNetwork(SerializeNetwork(*network)); |
| BOOST_CHECK(deserializedNetwork); |
| |
| VerifyQuantizedLstmLayer checker( |
| layerName, |
| {inputTensorInfo, cellStateTensorInfo, outputStateTensorInfo}, |
| {cellStateTensorInfo, outputStateTensorInfo}, |
| params); |
| |
| deserializedNetwork->Accept(checker); |
| } |
| |
| BOOST_AUTO_TEST_SUITE_END() |