blob: cbded60f9357171dc15cc7ace24f6ba6b5f31bdf [file] [log] [blame]
Kevin May43a799c2019-02-08 16:31:42 +00001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
3// SPDX-License-Identifier: MIT
4//
5
Derek Lamberti0028d1b2019-02-20 13:57:42 +00006#include "Deserializer.hpp"
Kevin May43a799c2019-02-08 16:31:42 +00007
8#include <armnn/ArmNN.hpp>
9#include <armnn/Exceptions.hpp>
10
11#include <ParserHelper.hpp>
12#include <Permute.hpp>
13#include <VerificationHelpers.hpp>
14
15#include <boost/filesystem.hpp>
16#include <boost/format.hpp>
17#include <boost/core/ignore_unused.hpp>
18#include <boost/assert.hpp>
19#include <boost/format.hpp>
20#include <boost/log/trivial.hpp>
Aron Virginas-Tard4f0fea2019-04-09 14:08:06 +010021#include <boost/format.hpp>
22#include <boost/numeric/conversion/cast.hpp>
Jim Flynn18ce3382019-03-08 11:08:30 +000023#include <boost/polymorphic_cast.hpp>
Kevin May43a799c2019-02-08 16:31:42 +000024
25// The generated code based on the Serialize schema:
Matthew Bentham268509a2019-02-25 13:58:24 +000026#include <ArmnnSchema_generated.h>
Kevin May43a799c2019-02-08 16:31:42 +000027
28#include <fstream>
Saoirse Stewart263829c2019-02-19 15:54:14 +000029#include <algorithm>
30#include <limits>
31#include <numeric>
Kevin May43a799c2019-02-08 16:31:42 +000032
33using armnn::ParseException;
34using namespace armnn;
Derek Lamberti0028d1b2019-02-20 13:57:42 +000035using namespace armnnSerializer;
Kevin May43a799c2019-02-08 16:31:42 +000036
Derek Lamberti0028d1b2019-02-20 13:57:42 +000037namespace armnnDeserializer
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +000038{
Kevin May43a799c2019-02-08 16:31:42 +000039
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +000040namespace
41{
Kevin May43a799c2019-02-08 16:31:42 +000042
43const uint32_t VIRTUAL_LAYER_ID = std::numeric_limits<uint32_t>::max();
44
Derek Lamberti0028d1b2019-02-20 13:57:42 +000045 void CheckGraph(const Deserializer::GraphPtr& graph,
Kevin May43a799c2019-02-08 16:31:42 +000046 unsigned int layersIndex,
47 const CheckLocation& location)
48{
49 if (graph->layers() == nullptr)
50 {
51 throw ParseException(
52 boost::str(
53 boost::format("%1% was called with invalid (null) graph. "
54 "Possible reason is that the graph is not yet loaded and Unpack(ed). "
55 "layers:%2% at %3%") %
56 location.m_Function %
57 layersIndex %
58 location.FileLine()));
59 }
60 else if (layersIndex >= graph->layers()->size())
61 {
62 throw ParseException(
63 boost::str(
64 boost::format("%1% was called with an invalid layers index. "
65 "layers:%2% at %3%") %
66 location.m_Function %
67 layersIndex %
68 location.FileLine()));
69 }
70}
71
Derek Lamberti0028d1b2019-02-20 13:57:42 +000072void CheckLayers(const Deserializer::GraphPtr& graph,
Kevin May43a799c2019-02-08 16:31:42 +000073 unsigned int layersIndex,
74 unsigned int layerIndex,
75 const CheckLocation& location)
76{
77 if (graph->layers() == nullptr)
78 {
79 throw ParseException(
80 boost::str(
81 boost::format("%1% was called with invalid (null) graph. "
82 "Possible reason is that the graph is not yet loaded and Unpack(ed). "
Nattapat Chaimanowong43e78642019-02-13 15:56:24 +000083 "layers:%2% at %3%") %
Kevin May43a799c2019-02-08 16:31:42 +000084 location.m_Function %
85 layersIndex %
86 location.FileLine()));
87 }
88 else if (layersIndex >= graph->layers()->size())
89 {
90 throw ParseException(
91 boost::str(
92 boost::format("%1% was called with an invalid layers index. "
Nattapat Chaimanowong43e78642019-02-13 15:56:24 +000093 "layers:%2% at %3%") %
Kevin May43a799c2019-02-08 16:31:42 +000094 location.m_Function %
95 layersIndex %
96 location.FileLine()));
97 }
98 else if (layerIndex >= graph->layers()[layersIndex].size()
99 && layerIndex != VIRTUAL_LAYER_ID)
100 {
101 throw ParseException(
102 boost::str(
103 boost::format("%1% was called with an invalid layer index. "
104 "layers:%2% layer:%3% at %4%") %
105 location.m_Function %
106 layersIndex %
107 layerIndex %
108 location.FileLine()));
109 }
110}
111
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000112void CheckTensorPtr(Deserializer::TensorRawPtr rawPtr,
Kevin May43a799c2019-02-08 16:31:42 +0000113 const CheckLocation& location)
114{
115 if (rawPtr == nullptr)
116 {
117 throw ParseException(
118 boost::str(
119 boost::format("%1% was called with a null tensor pointer. "
120 "at %2%") %
121 location.m_Function %
122 location.FileLine()));
123
124 }
125}
126
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000127void CheckConstTensorPtr(Deserializer::ConstTensorRawPtr rawPtr,
Mike Kellya0766c32019-02-19 17:22:07 +0000128 const CheckLocation& location)
129{
130 if (rawPtr == nullptr)
131 {
132 throw ParseException(boost::str(boost::format("%1% was called with a null const tensor pointer. at %2%") %
133 location.m_Function %
134 location.FileLine()));
135 }
136}
137
Saoirse Stewartf11bab52019-02-25 09:22:58 +0000138void CheckConstTensorSize(const unsigned int constTensorSize,
139 const unsigned int tensorSize,
140 const CheckLocation& location)
141{
142 if (constTensorSize != tensorSize)
143 {
144 throw ParseException(boost::str(boost::format("%1% wrong number of components supplied to tensor. at:%2%") %
145 location.m_Function %
146 location.FileLine()));
147 }
148}
149
Kevin May43a799c2019-02-08 16:31:42 +0000150#define CHECK_TENSOR_PTR(TENSOR_PTR) \
151 CheckTensorPtr(TENSOR_PTR, CHECK_LOCATION())
152
Saoirse Stewartf11bab52019-02-25 09:22:58 +0000153#define CHECK_CONST_TENSOR_SIZE(CONST_TENSOR_SIZE, TENSOR_SIZE) \
154 CheckConstTensorSize(CONST_TENSOR_SIZE, TENSOR_SIZE, CHECK_LOCATION())
155
Mike Kellya0766c32019-02-19 17:22:07 +0000156#define CHECK_CONST_TENSOR_PTR(TENSOR_PTR) \
157 CheckConstTensorPtr(TENSOR_PTR, CHECK_LOCATION())
158
Kevin May43a799c2019-02-08 16:31:42 +0000159#define CHECK_LAYERS(GRAPH, LAYERS_INDEX, LAYER_INDEX) \
160 CheckLayers(GRAPH, LAYERS_INDEX, LAYER_INDEX, CHECK_LOCATION())
161
162#define CHECK_GRAPH(GRAPH, LAYERS_INDEX) \
163 CheckGraph(GRAPH, LAYERS_INDEX, CHECK_LOCATION())
164}
165
Saoirse Stewart263829c2019-02-19 15:54:14 +0000166bool CheckShape(const armnn::TensorShape& actual, const std::vector<uint32_t>& expected)
167{
168 const unsigned int actualSize = actual.GetNumDimensions();
169 if (actualSize != expected.size())
170 {
171 return false;
172 }
173
174 for (unsigned int i = 0u; i < actualSize; i++)
175 {
176 if (actual[i] != static_cast<unsigned int>(expected[i]))
177 {
178 return false;
179 }
180 }
181
182 return true;
183}
184
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000185Deserializer::Deserializer()
Kevin May43a799c2019-02-08 16:31:42 +0000186: m_Network(nullptr, nullptr),
187//May require LayerType_Max to be included
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000188m_ParserFunctions(Layer_MAX+1, &Deserializer::ParseUnsupportedLayer)
Kevin May43a799c2019-02-08 16:31:42 +0000189{
190 // register supported layers
Mike Kellyaf484012019-02-20 16:53:11 +0000191 m_ParserFunctions[Layer_ActivationLayer] = &Deserializer::ParseActivation;
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000192 m_ParserFunctions[Layer_AdditionLayer] = &Deserializer::ParseAdd;
Nattapat Chaimanowong6b4ed982019-02-26 17:24:13 +0000193 m_ParserFunctions[Layer_BatchToSpaceNdLayer] = &Deserializer::ParseBatchToSpaceNd;
ruoyan018e7fa232019-02-28 15:09:07 +0000194 m_ParserFunctions[Layer_BatchNormalizationLayer] = &Deserializer::ParseBatchNormalization;
Conor Kennedy76277882019-02-26 08:29:54 +0000195 m_ParserFunctions[Layer_ConstantLayer] = &Deserializer::ParseConstant;
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000196 m_ParserFunctions[Layer_Convolution2dLayer] = &Deserializer::ParseConvolution2d;
197 m_ParserFunctions[Layer_DepthwiseConvolution2dLayer] = &Deserializer::ParseDepthwiseConvolution2d;
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +0000198 m_ParserFunctions[Layer_DequantizeLayer] = &Deserializer::ParseDequantize;
Nattapat Chaimanowong3e14a9d2019-03-18 12:37:06 +0000199 m_ParserFunctions[Layer_DetectionPostProcessLayer] = &Deserializer::ParseDetectionPostProcess;
Éanna Ó Catháin58885892019-02-27 16:16:39 +0000200 m_ParserFunctions[Layer_DivisionLayer] = &Deserializer::ParseDivision;
Nattapat Chaimanowong235cea52019-02-28 16:27:30 +0000201 m_ParserFunctions[Layer_EqualLayer] = &Deserializer::ParseEqual;
Sadik Armagandbb0c0c2019-02-21 09:01:41 +0000202 m_ParserFunctions[Layer_FullyConnectedLayer] = &Deserializer::ParseFullyConnected;
Finn Williamsdd2ba7e2019-03-01 11:51:52 +0000203 m_ParserFunctions[Layer_FloorLayer] = &Deserializer::ParseFloor;
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +0000204 m_ParserFunctions[Layer_GatherLayer] = &Deserializer::ParseGather;
Conor Kennedy79ffdf52019-03-01 14:24:54 +0000205 m_ParserFunctions[Layer_GreaterLayer] = &Deserializer::ParseGreater;
Narumol Prangnawarat495701f2019-03-07 17:31:34 +0000206 m_ParserFunctions[Layer_L2NormalizationLayer] = &Deserializer::ParseL2Normalization;
Jim Flynn11af3752019-03-19 17:22:29 +0000207 m_ParserFunctions[Layer_LstmLayer] = &Deserializer::ParseLstm;
Aron Virginas-Tar377351e2019-02-27 14:42:31 +0000208 m_ParserFunctions[Layer_MaximumLayer] = &Deserializer::ParseMaximum;
Sadik Armaganac97c8c2019-03-04 17:44:21 +0000209 m_ParserFunctions[Layer_MeanLayer] = &Deserializer::ParseMean;
210 m_ParserFunctions[Layer_MinimumLayer] = &Deserializer::ParseMinimum;
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +0100211 m_ParserFunctions[Layer_MergeLayer] = &Deserializer::ParseMerge;
Jim Flynnac25a1b2019-02-28 10:40:49 +0000212 m_ParserFunctions[Layer_MergerLayer] = &Deserializer::ParseMerger;
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000213 m_ParserFunctions[Layer_MultiplicationLayer] = &Deserializer::ParseMultiplication;
Nina Drozd57728782019-02-27 10:53:27 +0000214 m_ParserFunctions[Layer_NormalizationLayer] = &Deserializer::ParseNormalization;
Nattapat Chaimanowongebb0f9c2019-03-01 12:14:06 +0000215 m_ParserFunctions[Layer_PadLayer] = &Deserializer::ParsePad;
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +0000216 m_ParserFunctions[Layer_PermuteLayer] = &Deserializer::ParsePermute;
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000217 m_ParserFunctions[Layer_Pooling2dLayer] = &Deserializer::ParsePooling2d;
Derek Lamberti87acb272019-03-27 16:51:31 +0000218 m_ParserFunctions[Layer_QuantizeLayer] = &Deserializer::ParseQuantize;
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000219 m_ParserFunctions[Layer_ReshapeLayer] = &Deserializer::ParseReshape;
Nattapat Chaimanowong6522cdc2019-03-01 16:14:13 +0000220 m_ParserFunctions[Layer_ResizeBilinearLayer] = &Deserializer::ParseResizeBilinear;
Sadik Armagan8b42a382019-03-01 14:24:49 +0000221 m_ParserFunctions[Layer_RsqrtLayer] = &Deserializer::ParseRsqrt;
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000222 m_ParserFunctions[Layer_SoftmaxLayer] = &Deserializer::ParseSoftmax;
Nattapat Chaimanowong45286992019-02-26 15:53:02 +0000223 m_ParserFunctions[Layer_SpaceToBatchNdLayer] = &Deserializer::ParseSpaceToBatchNd;
Jim Flynn18ce3382019-03-08 11:08:30 +0000224 m_ParserFunctions[Layer_SplitterLayer] = &Deserializer::ParseSplitter;
Nattapat Chaimanowongb3485212019-03-04 12:35:39 +0000225 m_ParserFunctions[Layer_StridedSliceLayer] = &Deserializer::ParseStridedSlice;
Conor Kennedyda1f9752019-03-01 14:37:12 +0000226 m_ParserFunctions[Layer_SubtractionLayer] = &Deserializer::ParseSubtraction;
Sadik Armaganeff363d2019-04-05 15:25:46 +0100227 m_ParserFunctions[Layer_SwitchLayer] = &Deserializer::ParseSwitch;
Kevin May43a799c2019-02-08 16:31:42 +0000228}
229
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000230Deserializer::LayerBaseRawPtr Deserializer::GetBaseLayer(const GraphPtr& graphPtr, unsigned int layerIndex)
Kevin May43a799c2019-02-08 16:31:42 +0000231{
232 auto layerType = graphPtr->layers()->Get(layerIndex)->layer_type();
233
234 switch(layerType)
235 {
Mike Kellyaf484012019-02-20 16:53:11 +0000236 case Layer::Layer_ActivationLayer:
237 return graphPtr->layers()->Get(layerIndex)->layer_as_ActivationLayer()->base();
Kevin May43a799c2019-02-08 16:31:42 +0000238 case Layer::Layer_AdditionLayer:
239 return graphPtr->layers()->Get(layerIndex)->layer_as_AdditionLayer()->base();
Nattapat Chaimanowong6b4ed982019-02-26 17:24:13 +0000240 case Layer::Layer_BatchToSpaceNdLayer:
241 return graphPtr->layers()->Get(layerIndex)->layer_as_BatchToSpaceNdLayer()->base();
ruoyan018e7fa232019-02-28 15:09:07 +0000242 case Layer::Layer_BatchNormalizationLayer:
243 return graphPtr->layers()->Get(layerIndex)->layer_as_BatchNormalizationLayer()->base();
Conor Kennedy76277882019-02-26 08:29:54 +0000244 case Layer::Layer_ConstantLayer:
245 return graphPtr->layers()->Get(layerIndex)->layer_as_ConstantLayer()->base();
Mike Kellya0766c32019-02-19 17:22:07 +0000246 case Layer::Layer_Convolution2dLayer:
247 return graphPtr->layers()->Get(layerIndex)->layer_as_Convolution2dLayer()->base();
Aron Virginas-Tarc04125f2019-02-19 16:31:08 +0000248 case Layer::Layer_DepthwiseConvolution2dLayer:
249 return graphPtr->layers()->Get(layerIndex)->layer_as_DepthwiseConvolution2dLayer()->base();
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +0000250 case Layer::Layer_DequantizeLayer:
251 return graphPtr->layers()->Get(layerIndex)->layer_as_DequantizeLayer()->base();
Nattapat Chaimanowong3e14a9d2019-03-18 12:37:06 +0000252 case Layer::Layer_DetectionPostProcessLayer:
253 return graphPtr->layers()->Get(layerIndex)->layer_as_DetectionPostProcessLayer()->base();
Éanna Ó Catháin58885892019-02-27 16:16:39 +0000254 case Layer::Layer_DivisionLayer:
255 return graphPtr->layers()->Get(layerIndex)->layer_as_DivisionLayer()->base();
Nattapat Chaimanowong235cea52019-02-28 16:27:30 +0000256 case Layer::Layer_EqualLayer:
257 return graphPtr->layers()->Get(layerIndex)->layer_as_EqualLayer()->base();
Sadik Armagandbb0c0c2019-02-21 09:01:41 +0000258 case Layer::Layer_FullyConnectedLayer:
259 return graphPtr->layers()->Get(layerIndex)->layer_as_FullyConnectedLayer()->base();
Finn Williamsdd2ba7e2019-03-01 11:51:52 +0000260 case Layer::Layer_FloorLayer:
261 return graphPtr->layers()->Get(layerIndex)->layer_as_FloorLayer()->base();
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +0000262 case Layer::Layer_GatherLayer:
263 return graphPtr->layers()->Get(layerIndex)->layer_as_GatherLayer()->base();
Conor Kennedy79ffdf52019-03-01 14:24:54 +0000264 case Layer::Layer_GreaterLayer:
265 return graphPtr->layers()->Get(layerIndex)->layer_as_GreaterLayer()->base();
Kevin May43a799c2019-02-08 16:31:42 +0000266 case Layer::Layer_InputLayer:
Aron Virginas-Tar0fe32452019-02-28 13:12:47 +0000267 return graphPtr->layers()->Get(layerIndex)->layer_as_InputLayer()->base()->base();
Narumol Prangnawarat495701f2019-03-07 17:31:34 +0000268 case Layer::Layer_L2NormalizationLayer:
269 return graphPtr->layers()->Get(layerIndex)->layer_as_L2NormalizationLayer()->base();
Jim Flynn11af3752019-03-19 17:22:29 +0000270 case Layer::Layer_LstmLayer:
271 return graphPtr->layers()->Get(layerIndex)->layer_as_LstmLayer()->base();
Sadik Armaganac97c8c2019-03-04 17:44:21 +0000272 case Layer::Layer_MeanLayer:
273 return graphPtr->layers()->Get(layerIndex)->layer_as_MeanLayer()->base();
Aron Virginas-Tar0fe32452019-02-28 13:12:47 +0000274 case Layer::Layer_MinimumLayer:
275 return graphPtr->layers()->Get(layerIndex)->layer_as_MinimumLayer()->base();
Aron Virginas-Tar377351e2019-02-27 14:42:31 +0000276 case Layer::Layer_MaximumLayer:
277 return graphPtr->layers()->Get(layerIndex)->layer_as_MaximumLayer()->base();
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +0100278 case Layer::Layer_MergeLayer:
279 return graphPtr->layers()->Get(layerIndex)->layer_as_MergeLayer()->base();
Jim Flynnac25a1b2019-02-28 10:40:49 +0000280 case Layer::Layer_MergerLayer:
281 return graphPtr->layers()->Get(layerIndex)->layer_as_MergerLayer()->base();
Sadik Armagan5f450272019-02-12 14:31:45 +0000282 case Layer::Layer_MultiplicationLayer:
283 return graphPtr->layers()->Get(layerIndex)->layer_as_MultiplicationLayer()->base();
Nina Drozd57728782019-02-27 10:53:27 +0000284 case Layer::Layer_NormalizationLayer:
285 return graphPtr->layers()->Get(layerIndex)->layer_as_NormalizationLayer()->base();
Kevin May43a799c2019-02-08 16:31:42 +0000286 case Layer::Layer_OutputLayer:
287 return graphPtr->layers()->Get(layerIndex)->layer_as_OutputLayer()->base()->base();
Nattapat Chaimanowongebb0f9c2019-03-01 12:14:06 +0000288 case Layer::Layer_PadLayer:
289 return graphPtr->layers()->Get(layerIndex)->layer_as_PadLayer()->base();
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +0000290 case Layer::Layer_PermuteLayer:
291 return graphPtr->layers()->Get(layerIndex)->layer_as_PermuteLayer()->base();
Saoirse Stewart3166c3e2019-02-18 15:24:53 +0000292 case Layer::Layer_Pooling2dLayer:
293 return graphPtr->layers()->Get(layerIndex)->layer_as_Pooling2dLayer()->base();
Derek Lamberti87acb272019-03-27 16:51:31 +0000294 case Layer::Layer_QuantizeLayer:
295 return graphPtr->layers()->Get(layerIndex)->layer_as_QuantizeLayer()->base();
Saoirse Stewart263829c2019-02-19 15:54:14 +0000296 case Layer::Layer_ReshapeLayer:
297 return graphPtr->layers()->Get(layerIndex)->layer_as_ReshapeLayer()->base();
Nattapat Chaimanowong6522cdc2019-03-01 16:14:13 +0000298 case Layer::Layer_ResizeBilinearLayer:
299 return graphPtr->layers()->Get(layerIndex)->layer_as_ResizeBilinearLayer()->base();
Sadik Armagan8b42a382019-03-01 14:24:49 +0000300 case Layer::Layer_RsqrtLayer:
301 return graphPtr->layers()->Get(layerIndex)->layer_as_RsqrtLayer()->base();
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +0000302 case Layer::Layer_SoftmaxLayer:
303 return graphPtr->layers()->Get(layerIndex)->layer_as_SoftmaxLayer()->base();
Nattapat Chaimanowong45286992019-02-26 15:53:02 +0000304 case Layer::Layer_SpaceToBatchNdLayer:
305 return graphPtr->layers()->Get(layerIndex)->layer_as_SpaceToBatchNdLayer()->base();
Jim Flynn18ce3382019-03-08 11:08:30 +0000306 case Layer::Layer_SplitterLayer:
307 return graphPtr->layers()->Get(layerIndex)->layer_as_SplitterLayer()->base();
Nattapat Chaimanowongb3485212019-03-04 12:35:39 +0000308 case Layer::Layer_StridedSliceLayer:
309 return graphPtr->layers()->Get(layerIndex)->layer_as_StridedSliceLayer()->base();
Conor Kennedyda1f9752019-03-01 14:37:12 +0000310 case Layer::Layer_SubtractionLayer:
311 return graphPtr->layers()->Get(layerIndex)->layer_as_SubtractionLayer()->base();
Sadik Armaganeff363d2019-04-05 15:25:46 +0100312 case Layer::Layer_SwitchLayer:
313 return graphPtr->layers()->Get(layerIndex)->layer_as_SwitchLayer()->base();
Kevin May43a799c2019-02-08 16:31:42 +0000314 case Layer::Layer_NONE:
315 default:
316 throw ParseException(boost::str(
317 boost::format("Layer must have a type %1%") %
318 Layer::Layer_NONE));
319 }
320}
321
Éanna Ó Catháin633f8592019-02-25 16:26:29 +0000322std::string Deserializer::GetLayerName(const GraphPtr& graph, unsigned int index)
323{
324 auto layer = GetBaseLayer(graph, index);
325 assert(layer);
326 return layer->layerName()->str();
327}
328
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000329int32_t Deserializer::GetBindingLayerInfo(const GraphPtr& graphPtr, unsigned int layerIndex)
Kevin May43a799c2019-02-08 16:31:42 +0000330{
331 auto layerType = graphPtr->layers()->Get(layerIndex)->layer_type();
332
333 if (layerType == Layer::Layer_InputLayer)
334 {
335 return graphPtr->layers()->Get(layerIndex)->layer_as_InputLayer()->base()->layerBindingId();
336 }
337 else if ( layerType == Layer::Layer_OutputLayer )
338 {
339 return graphPtr->layers()->Get(layerIndex)->layer_as_OutputLayer()->base()->layerBindingId();
340 }
341 return 0;
342}
343
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000344armnn::DataLayout ToDataLayout(armnnSerializer::DataLayout dataLayout)
Mike Kellya0766c32019-02-19 17:22:07 +0000345{
346 switch (dataLayout)
347 {
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000348 case armnnSerializer::DataLayout::DataLayout_NHWC:
Mike Kellya0766c32019-02-19 17:22:07 +0000349 return armnn::DataLayout::NHWC;
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000350 case armnnSerializer::DataLayout::DataLayout_NCHW:
Mike Kellya0766c32019-02-19 17:22:07 +0000351 default:
352 return armnn::DataLayout::NCHW;
353 }
354}
355
Mike Kellyaf484012019-02-20 16:53:11 +0000356armnn::ActivationFunction ToActivationFunction(armnnSerializer::ActivationFunction function)
357{
358 switch (function)
359 {
360 case armnnSerializer::ActivationFunction_Sigmoid:
361 return armnn::ActivationFunction::Sigmoid;
362 case armnnSerializer::ActivationFunction_TanH:
363 return armnn::ActivationFunction::TanH;
364 case armnnSerializer::ActivationFunction_Linear:
365 return armnn::ActivationFunction::Linear;
366 case armnnSerializer::ActivationFunction_ReLu:
367 return armnn::ActivationFunction::ReLu;
368 case armnnSerializer::ActivationFunction_BoundedReLu:
369 return armnn::ActivationFunction::BoundedReLu;
370 case armnnSerializer::ActivationFunction_LeakyReLu:
371 return armnn::ActivationFunction::LeakyReLu;
372 case armnnSerializer::ActivationFunction_Abs:
373 return armnn::ActivationFunction::Abs;
374 case armnnSerializer::ActivationFunction_Sqrt:
375 return armnn::ActivationFunction::Sqrt;
376 case armnnSerializer::ActivationFunction_Square:
377 return armnn::ActivationFunction::Square;
378 default:
379 return armnn::ActivationFunction::Sigmoid;
380 }
381}
382
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000383armnn::TensorInfo ToTensorInfo(Deserializer::TensorRawPtr tensorPtr)
Kevin May43a799c2019-02-08 16:31:42 +0000384{
385 armnn::DataType type;
386 CHECK_TENSOR_PTR(tensorPtr);
387
388 switch (tensorPtr->dataType())
389 {
390 case DataType_QuantisedAsymm8:
391 type = armnn::DataType::QuantisedAsymm8;
392 break;
Nattapat Chaimanowongcd5ac232019-03-19 12:26:36 +0000393 case DataType_QuantisedSymm16:
394 type = armnn::DataType::QuantisedSymm16;
395 break;
Mike Kellya0766c32019-02-19 17:22:07 +0000396 case DataType_Signed32:
397 type = armnn::DataType::Signed32;
398 break;
Kevin May43a799c2019-02-08 16:31:42 +0000399 case DataType_Float32:
400 type = armnn::DataType::Float32;
401 break;
402 case DataType_Float16:
403 type = armnn::DataType::Float16;
404 break;
405 case DataType_Boolean:
406 type = armnn::DataType::Boolean;
407 break;
408 default:
409 {
410 CheckLocation location = CHECK_LOCATION();
411 throw ParseException(
412 boost::str(
413 boost::format("Unsupported data type %1% = %2%. %3%") %
414 tensorPtr->dataType() %
415 EnumNameDataType(tensorPtr->dataType()) %
416 location.AsString()));
417 }
418 }
419 float quantizationScale = tensorPtr->quantizationScale();
420 int32_t quantizationOffset = tensorPtr->quantizationOffset();
421
422 auto dimensions = tensorPtr->dimensions();
423 unsigned int size = dimensions->size();
424 std::vector<unsigned int> outputDims(dimensions->begin(), dimensions->begin() + size);
425
426 // two statements (on purpose) for easier debugging:
427 armnn::TensorInfo result(size,
428 outputDims.data(),
429 type,
430 quantizationScale,
431 quantizationOffset);
432 return result;
433}
434
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000435armnn::ConstTensor ToConstTensor(Deserializer::ConstTensorRawPtr constTensorPtr)
Mike Kellya0766c32019-02-19 17:22:07 +0000436{
437 CHECK_CONST_TENSOR_PTR(constTensorPtr);
438 armnn::TensorInfo tensorInfo = ToTensorInfo(constTensorPtr->info());
439
440 switch (constTensorPtr->data_type())
441 {
442 case ConstTensorData_ByteData:
Saoirse Stewartf11bab52019-02-25 09:22:58 +0000443 {
444 auto byteData = constTensorPtr->data_as_ByteData()->data();
445 CHECK_CONST_TENSOR_SIZE(byteData->size(), tensorInfo.GetNumElements());
446 return armnn::ConstTensor(tensorInfo, byteData->data());
447 }
Mike Kellya0766c32019-02-19 17:22:07 +0000448 case ConstTensorData_ShortData:
Saoirse Stewartf11bab52019-02-25 09:22:58 +0000449 {
450 auto shortData = constTensorPtr->data_as_ShortData()->data();
451 CHECK_CONST_TENSOR_SIZE(shortData->size(), tensorInfo.GetNumElements());
452 return armnn::ConstTensor(tensorInfo, shortData->data());
453 }
Mike Kellya0766c32019-02-19 17:22:07 +0000454 case ConstTensorData_IntData:
Saoirse Stewartf11bab52019-02-25 09:22:58 +0000455 {
456 auto intData = constTensorPtr->data_as_IntData()->data();
457 CHECK_CONST_TENSOR_SIZE(intData->size(), tensorInfo.GetNumElements());
458 return armnn::ConstTensor(tensorInfo, intData->data());
459 }
Mike Kellya0766c32019-02-19 17:22:07 +0000460 case ConstTensorData_LongData:
Saoirse Stewartf11bab52019-02-25 09:22:58 +0000461 {
462 auto longData = constTensorPtr->data_as_LongData()->data();
463 CHECK_CONST_TENSOR_SIZE(longData->size(), tensorInfo.GetNumElements());
464 return armnn::ConstTensor(tensorInfo, longData->data());
465 }
Mike Kellya0766c32019-02-19 17:22:07 +0000466 default:
467 {
468 CheckLocation location = CHECK_LOCATION();
469 throw ParseException(
470 boost::str(boost::format("Unsupported data type %1% = %2%. %3%") %
471 constTensorPtr->data_type() %
472 EnumNameConstTensorData(constTensorPtr->data_type()) %
473 location.AsString()));
474 }
475 }
476}
477
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000478Deserializer::LayerBaseRawPtrVector Deserializer::GetGraphInputs(const GraphPtr& graphPtr)
Kevin May43a799c2019-02-08 16:31:42 +0000479{
480
481 CHECK_GRAPH(graphPtr, 0);
482 const auto& numInputs = graphPtr->inputIds()->size();
483
484 LayerBaseRawPtrVector result(numInputs);
485
486 for (unsigned int i=0; i<numInputs; ++i)
487 {
Mike Kelly8c1701a2019-02-11 17:01:27 +0000488 uint32_t inputId = graphPtr->inputIds()->Get(i);
Kevin May43a799c2019-02-08 16:31:42 +0000489 result[i] = GetBaseLayer(graphPtr, static_cast<uint32_t>(inputId));
490 }
491 return result;
492}
493
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000494Deserializer::LayerBaseRawPtrVector Deserializer::GetGraphOutputs(const GraphPtr& graphPtr)
Kevin May43a799c2019-02-08 16:31:42 +0000495{
496 CHECK_GRAPH(graphPtr, 0);
497 const auto& numOutputs = graphPtr->outputIds()->size();
Kevin May43a799c2019-02-08 16:31:42 +0000498 LayerBaseRawPtrVector result(numOutputs);
499
500 for (unsigned int i=0; i<numOutputs; ++i)
501 {
Mike Kelly8c1701a2019-02-11 17:01:27 +0000502 uint32_t outputId = graphPtr->outputIds()->Get(i);
Saoirse Stewart263829c2019-02-19 15:54:14 +0000503
Kevin May43a799c2019-02-08 16:31:42 +0000504 result[i] = GetBaseLayer(graphPtr, static_cast<uint32_t>(outputId));
505 }
506 return result;
507}
508
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000509Deserializer::TensorRawPtrVector Deserializer::GetInputs(const GraphPtr& graphPtr,
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +0000510 unsigned int layerIndex)
Kevin May43a799c2019-02-08 16:31:42 +0000511{
512 CHECK_LAYERS(graphPtr, 0, layerIndex);
513 auto layer = GetBaseLayer(graphPtr, layerIndex);
514 const auto& numInputs = layer->inputSlots()->size();
515
516 TensorRawPtrVector result(numInputs);
517
518 for (unsigned int i=0; i<numInputs; ++i)
519 {
520 auto inputId = CHECKED_NON_NEGATIVE(static_cast<int32_t>
521 (layer->inputSlots()->Get(i)->connection()->sourceLayerIndex()));
522 result[i] = GetBaseLayer(graphPtr, inputId)->outputSlots()->Get(0)->tensorInfo();
523 }
524 return result;
525}
526
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000527Deserializer::TensorRawPtrVector Deserializer::GetOutputs(const GraphPtr& graphPtr,
Kevin May43a799c2019-02-08 16:31:42 +0000528 unsigned int layerIndex)
529{
530 CHECK_LAYERS(graphPtr, 0, layerIndex);
531 auto layer = GetBaseLayer(graphPtr, layerIndex);
532 const auto& numOutputs = layer->outputSlots()->size();
533
534 TensorRawPtrVector result(numOutputs);
535
536 for (unsigned int i=0; i<numOutputs; ++i)
537 {
538 result[i] = layer->outputSlots()->Get(i)->tensorInfo();
539 }
540 return result;
541}
542
Derek Lamberti8ddae332019-02-21 16:29:43 +0000543void Deserializer::ParseUnsupportedLayer(GraphPtr graph, unsigned int layerIndex)
Kevin May43a799c2019-02-08 16:31:42 +0000544{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000545 CHECK_LAYERS(graph, 0, layerIndex);
546 const auto layerName = GetBaseLayer(graph, layerIndex)->layerName()->c_str();
Kevin May43a799c2019-02-08 16:31:42 +0000547 throw ParseException(
548 boost::str(
549 boost::format("Layer not supported. "
550 "layerIndex: %1% "
551 "layerName: %2% / %3%") %
552 layerIndex %
553 layerName %
554 CHECK_LOCATION().AsString()));
555}
556
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000557void Deserializer::ResetParser()
Kevin May43a799c2019-02-08 16:31:42 +0000558{
559 m_Network = armnn::INetworkPtr(nullptr, nullptr);
Derek Lamberti8ddae332019-02-21 16:29:43 +0000560 m_InputBindings.clear();
561 m_OutputBindings.clear();
Kevin May43a799c2019-02-08 16:31:42 +0000562}
563
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000564IDeserializer* IDeserializer::CreateRaw()
Kevin May43a799c2019-02-08 16:31:42 +0000565{
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000566 return new Deserializer();
Kevin May43a799c2019-02-08 16:31:42 +0000567}
568
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000569IDeserializerPtr IDeserializer::Create()
Kevin May43a799c2019-02-08 16:31:42 +0000570{
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000571 return IDeserializerPtr(CreateRaw(), &IDeserializer::Destroy);
Kevin May43a799c2019-02-08 16:31:42 +0000572}
573
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000574void IDeserializer::Destroy(IDeserializer* parser)
Kevin May43a799c2019-02-08 16:31:42 +0000575{
576 delete parser;
577}
578
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000579INetworkPtr Deserializer::CreateNetworkFromBinary(const std::vector<uint8_t>& binaryContent)
Kevin May43a799c2019-02-08 16:31:42 +0000580{
581 ResetParser();
Derek Lamberti8ddae332019-02-21 16:29:43 +0000582 GraphPtr graph = LoadGraphFromBinary(binaryContent.data(), binaryContent.size());
583 return CreateNetworkFromGraph(graph);
Kevin May43a799c2019-02-08 16:31:42 +0000584}
585
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000586armnn::INetworkPtr Deserializer::CreateNetworkFromBinary(std::istream& binaryContent)
Kevin May43a799c2019-02-08 16:31:42 +0000587{
Derek Lamberti2b183fb2019-02-18 16:36:57 +0000588 ResetParser();
Derek Lamberti8ddae332019-02-21 16:29:43 +0000589 std::vector<uint8_t> content((std::istreambuf_iterator<char>(binaryContent)), std::istreambuf_iterator<char>());
590 GraphPtr graph = LoadGraphFromBinary(content.data(), content.size());
591 return CreateNetworkFromGraph(graph);
Kevin May43a799c2019-02-08 16:31:42 +0000592}
593
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000594Deserializer::GraphPtr Deserializer::LoadGraphFromBinary(const uint8_t* binaryContent, size_t len)
Kevin May43a799c2019-02-08 16:31:42 +0000595{
596 if (binaryContent == nullptr)
597 {
598 throw InvalidArgumentException(boost::str(boost::format("Invalid (null) binary content %1%") %
599 CHECK_LOCATION().AsString()));
600 }
601 flatbuffers::Verifier verifier(binaryContent, len);
602 if (verifier.VerifyBuffer<SerializedGraph>() == false)
603 {
604 throw ParseException(
605 boost::str(boost::format("Buffer doesn't conform to the expected Armnn "
606 "flatbuffers format. size:%1% %2%") %
607 len %
608 CHECK_LOCATION().AsString()));
609 }
610 return GetSerializedGraph(binaryContent);
611}
612
Derek Lamberti8ddae332019-02-21 16:29:43 +0000613INetworkPtr Deserializer::CreateNetworkFromGraph(GraphPtr graph)
Kevin May43a799c2019-02-08 16:31:42 +0000614{
615 m_Network = INetwork::Create();
Derek Lamberti8ddae332019-02-21 16:29:43 +0000616 BOOST_ASSERT(graph != nullptr);
Kevin May43a799c2019-02-08 16:31:42 +0000617 unsigned int layerIndex = 0;
Derek Lamberti8ddae332019-02-21 16:29:43 +0000618 m_GraphConnections.emplace_back(graph->layers()->size());
619 for (AnyLayer const* layer : *graph->layers())
Kevin May43a799c2019-02-08 16:31:42 +0000620 {
621 if (layer->layer_type() != Layer_InputLayer &&
622 layer->layer_type() != Layer_OutputLayer)
623 {
624 // lookup and call the parser function
625 auto& parserFunction = m_ParserFunctions[layer->layer_type()];
Derek Lamberti8ddae332019-02-21 16:29:43 +0000626 (this->*parserFunction)(graph, layerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000627 }
628 ++layerIndex;
629 }
630
Derek Lamberti8ddae332019-02-21 16:29:43 +0000631 SetupInputLayers(graph);
632 SetupOutputLayers(graph);
Kevin May43a799c2019-02-08 16:31:42 +0000633
634 // establish the connections from the layer outputs to the inputs of the subsequent layers
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000635 for (size_t connectionsIndex = 0; connectionsIndex < m_GraphConnections[0].size(); ++connectionsIndex)
Kevin May43a799c2019-02-08 16:31:42 +0000636 {
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000637 SlotsMap& slotsMap = m_GraphConnections[0][connectionsIndex];
638 for (unsigned int outputSlotIndex = 0; outputSlotIndex < slotsMap.outputSlots.size(); outputSlotIndex++)
Kevin May43a799c2019-02-08 16:31:42 +0000639 {
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000640 if (slotsMap.inputSlots.find(outputSlotIndex) != slotsMap.inputSlots.end())
Kevin May43a799c2019-02-08 16:31:42 +0000641 {
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000642 for (armnn::IInputSlot* inputSlot : slotsMap.inputSlots[outputSlotIndex])
643 {
644 slotsMap.outputSlots[outputSlotIndex]->Connect(*inputSlot);
645 }
Kevin May43a799c2019-02-08 16:31:42 +0000646 }
647 }
648 }
649
650 return std::move(m_Network);
651}
652
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000653BindingPointInfo Deserializer::GetNetworkInputBindingInfo(unsigned int layerIndex,
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +0000654 const std::string& name) const
Kevin May43a799c2019-02-08 16:31:42 +0000655{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000656 for (auto inputBinding : m_InputBindings)
Kevin May43a799c2019-02-08 16:31:42 +0000657 {
Derek Lamberti8ddae332019-02-21 16:29:43 +0000658 if (inputBinding.first == name)
Kevin May43a799c2019-02-08 16:31:42 +0000659 {
Derek Lamberti8ddae332019-02-21 16:29:43 +0000660 return inputBinding.second;
Kevin May43a799c2019-02-08 16:31:42 +0000661 }
662 }
663 throw ParseException(
664 boost::str(
665 boost::format("No input binding found for layer:%1% / %2%") %
666 name %
667 CHECK_LOCATION().AsString()));
668}
669
Derek Lamberti0028d1b2019-02-20 13:57:42 +0000670BindingPointInfo Deserializer::GetNetworkOutputBindingInfo(unsigned int layerIndex,
Kevin May43a799c2019-02-08 16:31:42 +0000671 const std::string& name) const
672{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000673 for (auto outputBinding : m_OutputBindings)
Kevin May43a799c2019-02-08 16:31:42 +0000674 {
Derek Lamberti8ddae332019-02-21 16:29:43 +0000675 if (outputBinding.first == name)
Kevin May43a799c2019-02-08 16:31:42 +0000676 {
Derek Lamberti8ddae332019-02-21 16:29:43 +0000677 return outputBinding.second;
Kevin May43a799c2019-02-08 16:31:42 +0000678 }
679 }
680 throw ParseException(
681 boost::str(
682 boost::format("No output binding found for layer:%1% / %2%") %
683 name %
684 CHECK_LOCATION().AsString()));
685}
686
Derek Lamberti8ddae332019-02-21 16:29:43 +0000687void Deserializer::SetupInputLayers(GraphPtr graph)
Kevin May43a799c2019-02-08 16:31:42 +0000688{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000689 CHECK_GRAPH(graph, 0);
690 auto inputs = GetGraphInputs(graph);
691 m_InputBindings.clear();
692 m_InputBindings.reserve(inputs.size());
Kevin May43a799c2019-02-08 16:31:42 +0000693 for (auto const& input : inputs)
694 {
Derek Lamberti8ddae332019-02-21 16:29:43 +0000695 LayerBindingId bindingId = GetBindingLayerInfo(graph, input->index());
Kevin May43a799c2019-02-08 16:31:42 +0000696 IConnectableLayer* layer =
Derek Lamberti8ddae332019-02-21 16:29:43 +0000697 m_Network->AddInputLayer(bindingId, input->layerName()->c_str());
Kevin May43a799c2019-02-08 16:31:42 +0000698
699 auto tensorInfo = ToTensorInfo(input->outputSlots()->Get(0)->tensorInfo());
700 layer->GetOutputSlot(0).SetTensorInfo(tensorInfo);
701
Derek Lamberti8ddae332019-02-21 16:29:43 +0000702 RegisterOutputSlots(graph, input->index(), layer);
703
704 BOOST_ASSERT_MSG(input->layerName()->c_str(), "Input has no name.");
705 BindingPointInfo bindingInfo = {bindingId, tensorInfo};
706 m_InputBindings.push_back(std::make_pair(input->layerName()->c_str(), bindingInfo));
Kevin May43a799c2019-02-08 16:31:42 +0000707 }
708}
709
Derek Lamberti8ddae332019-02-21 16:29:43 +0000710void Deserializer::SetupOutputLayers(GraphPtr graph)
Kevin May43a799c2019-02-08 16:31:42 +0000711{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000712 CHECK_GRAPH(graph, 0);
713 auto outputs = GetGraphOutputs(graph);
714 m_OutputBindings.clear();
715 m_OutputBindings.reserve(outputs.size());
Kevin May43a799c2019-02-08 16:31:42 +0000716 for (auto const& output : outputs)
717 {
Derek Lamberti8ddae332019-02-21 16:29:43 +0000718 LayerBindingId bindingId = GetBindingLayerInfo(graph, output->index());
Kevin May43a799c2019-02-08 16:31:42 +0000719 IConnectableLayer* layer =
Derek Lamberti8ddae332019-02-21 16:29:43 +0000720 m_Network->AddOutputLayer(bindingId, output->layerName()->c_str());
Kevin May43a799c2019-02-08 16:31:42 +0000721
Derek Lamberti8ddae332019-02-21 16:29:43 +0000722 RegisterInputSlots(graph, output->index(), layer);
723
724 auto baseLayer = GetBaseLayer(graph, output->index());
725 auto sourceLayerIndex = baseLayer->inputSlots()->Get(0)->connection()->sourceLayerIndex();
726 auto sourceLayer = GetBaseLayer(graph, sourceLayerIndex);
727 auto tensorInfo = ToTensorInfo(sourceLayer->outputSlots()->Get(0)->tensorInfo());
728
729 BOOST_ASSERT_MSG(output->layerName()->c_str(), "Output has no name.");
730 BindingPointInfo bindingInfo = {bindingId, tensorInfo};
731 m_OutputBindings.push_back(std::make_pair(output->layerName()->c_str(), bindingInfo));
Kevin May43a799c2019-02-08 16:31:42 +0000732 }
733}
734
Derek Lamberti8ddae332019-02-21 16:29:43 +0000735void Deserializer::RegisterOutputSlots(GraphPtr graph,
736 uint32_t layerIndex,
737 IConnectableLayer* layer)
Kevin May43a799c2019-02-08 16:31:42 +0000738{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000739 CHECK_LAYERS(graph, 0, layerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000740 BOOST_ASSERT(layer != nullptr);
Derek Lamberti8ddae332019-02-21 16:29:43 +0000741 auto parsedLayer = GetBaseLayer(graph, layerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000742 if (parsedLayer->outputSlots()->size() != layer->GetNumOutputSlots())
743 {
744 throw ParseException(
745 boost::str(boost::format("The number of outputslots (%1%) does not match the number expected (%2%)"
746 " for layer index: %3% %4%") %
747 parsedLayer->outputSlots()->size() %
748 layer->GetNumOutputSlots() %
749 layerIndex %
750 CHECK_LOCATION().AsString()));
751 }
752
753 for (unsigned int slotIndex = 0; slotIndex < layer->GetNumOutputSlots(); ++slotIndex)
754 {
755 armnn::IOutputSlot* slot = &(layer->GetOutputSlot(slotIndex));
756 RegisterOutputSlotOfConnection(layerIndex, slot);
757 }
758}
759
Derek Lamberti8ddae332019-02-21 16:29:43 +0000760void Deserializer::RegisterInputSlots(GraphPtr graph,
761 uint32_t layerIndex,
762 armnn::IConnectableLayer* layer)
Kevin May43a799c2019-02-08 16:31:42 +0000763{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000764 CHECK_LAYERS(graph, 0, layerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000765 BOOST_ASSERT(layer != nullptr);
Derek Lamberti8ddae332019-02-21 16:29:43 +0000766 auto parsedLayer = GetBaseLayer(graph, layerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000767 if (parsedLayer->inputSlots()->size() != layer->GetNumInputSlots())
768 {
769 throw ParseException(
770 boost::str(boost::format("The number of inputslots (%1%) does not match the number expected (%2%)"
771 " for layer index:%3% %4%") %
772 parsedLayer->inputSlots()->size() %
773 layer->GetNumInputSlots() %
774 layerIndex %
775 CHECK_LOCATION().AsString()));
776 }
777
778 for (unsigned int slotIndex = 0; slotIndex < layer->GetNumInputSlots(); ++slotIndex)
779 {
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000780 auto fbConnection = parsedLayer->inputSlots()->Get(slotIndex)->connection();
Kevin May43a799c2019-02-08 16:31:42 +0000781 armnn::IInputSlot* slot = &(layer->GetInputSlot(slotIndex));
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000782
783 RegisterInputSlotOfConnection(fbConnection->sourceLayerIndex(), fbConnection->outputSlotIndex(), slot);
Kevin May43a799c2019-02-08 16:31:42 +0000784 }
785}
786
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000787void Deserializer::RegisterInputSlotOfConnection(uint32_t sourceLayerIndex,
788 uint32_t outputSlotIndex,
789 armnn::IInputSlot* slot)
Kevin May43a799c2019-02-08 16:31:42 +0000790{
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000791 BOOST_ASSERT(m_GraphConnections[0].size() > sourceLayerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000792
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000793 SlotsMap& slotsMap = m_GraphConnections[0][sourceLayerIndex];
794 if (slotsMap.inputSlots.find(outputSlotIndex) == slotsMap.inputSlots.end())
Kevin May43a799c2019-02-08 16:31:42 +0000795 {
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000796 slotsMap.inputSlots[outputSlotIndex] = {slot};
Kevin May43a799c2019-02-08 16:31:42 +0000797 }
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000798 else
799 {
800 slotsMap.inputSlots[outputSlotIndex].push_back(slot);
801 }
802}
Kevin May43a799c2019-02-08 16:31:42 +0000803
Nattapat Chaimanowongd469faf2019-03-04 17:10:40 +0000804void Deserializer::RegisterOutputSlotOfConnection(uint32_t sourceLayerIndex,
805 armnn::IOutputSlot* slot)
806{
807 BOOST_ASSERT(m_GraphConnections[0].size() > sourceLayerIndex);
808 m_GraphConnections[0][sourceLayerIndex].outputSlots.push_back(slot);
Kevin May43a799c2019-02-08 16:31:42 +0000809}
810
Derek Lamberti8ddae332019-02-21 16:29:43 +0000811void Deserializer::ParseActivation(GraphPtr graph, unsigned int layerIndex)
Mike Kellyaf484012019-02-20 16:53:11 +0000812{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000813 CHECK_LAYERS(graph, 0, layerIndex);
814 auto inputs = GetInputs(graph, layerIndex);
Mike Kellyaf484012019-02-20 16:53:11 +0000815 CHECK_LOCATION();
816 CHECK_VALID_SIZE(inputs.size(), 1);
817
Derek Lamberti8ddae332019-02-21 16:29:43 +0000818 auto outputs = GetOutputs(graph, layerIndex);
Mike Kellyaf484012019-02-20 16:53:11 +0000819 CHECK_VALID_SIZE(outputs.size(), 1);
820
Derek Lamberti8ddae332019-02-21 16:29:43 +0000821 auto serializerLayer = graph->layers()->Get(layerIndex)->layer_as_ActivationLayer();
Éanna Ó Catháin633f8592019-02-25 16:26:29 +0000822 auto layerName = GetLayerName(graph, layerIndex);
Mike Kellyaf484012019-02-20 16:53:11 +0000823 auto serializerDescriptor = serializerLayer->descriptor();
824
825 armnn::ActivationDescriptor descriptor;
826 descriptor.m_Function = ToActivationFunction(serializerDescriptor->function());
827 descriptor.m_A = serializerDescriptor->a();
828 descriptor.m_B = serializerDescriptor->b();
829
830 IConnectableLayer* layer = m_Network->AddActivationLayer(descriptor,
831 layerName.c_str());
832 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
833 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
834
Derek Lamberti8ddae332019-02-21 16:29:43 +0000835 RegisterInputSlots(graph, layerIndex, layer);
836 RegisterOutputSlots(graph, layerIndex, layer);
Mike Kellyaf484012019-02-20 16:53:11 +0000837}
838
Derek Lamberti8ddae332019-02-21 16:29:43 +0000839void Deserializer::ParseAdd(GraphPtr graph, unsigned int layerIndex)
Kevin May43a799c2019-02-08 16:31:42 +0000840{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000841 CHECK_LAYERS(graph, 0, layerIndex);
842 auto inputs = GetInputs(graph, layerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000843 CHECK_LOCATION();
844 CHECK_VALID_SIZE(inputs.size(), 2);
845
Derek Lamberti8ddae332019-02-21 16:29:43 +0000846 auto outputs = GetOutputs(graph, layerIndex);
Kevin May43a799c2019-02-08 16:31:42 +0000847 CHECK_VALID_SIZE(outputs.size(), 1);
848
Éanna Ó Catháin633f8592019-02-25 16:26:29 +0000849 auto layerName = GetLayerName(graph, layerIndex);
850 IConnectableLayer* layer = m_Network->AddAdditionLayer(layerName.c_str());
Kevin May43a799c2019-02-08 16:31:42 +0000851
852 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
853 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
854
Derek Lamberti8ddae332019-02-21 16:29:43 +0000855 RegisterInputSlots(graph, layerIndex, layer);
856 RegisterOutputSlots(graph, layerIndex, layer);
Kevin May43a799c2019-02-08 16:31:42 +0000857}
858
Nattapat Chaimanowong6b4ed982019-02-26 17:24:13 +0000859void Deserializer::ParseBatchToSpaceNd(GraphPtr graph, unsigned int layerIndex)
860{
861 CHECK_LAYERS(graph, 0, layerIndex);
862
863 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
864 CHECK_VALID_SIZE(inputs.size(), 1);
865
866 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
867 CHECK_VALID_SIZE(outputs.size(), 1);
868
869 auto flatBufferDescriptor = graph->layers()->Get(layerIndex)->layer_as_BatchToSpaceNdLayer()->descriptor();
870 auto flatBufferCrops = flatBufferDescriptor->crops();
871 auto flatBufferBlockShape = flatBufferDescriptor->blockShape();
872
873 if (flatBufferCrops->Length() % 2 != 0)
874 {
875 throw ParseException(boost::str(
876 boost::format("The size of crops must be divisible by 2 %1%") % CHECK_LOCATION().AsString()));
877 }
878
879 std::vector<std::pair<unsigned int, unsigned int>> crops;
880 crops.reserve(flatBufferCrops->Length() / 2);
881 for (unsigned int i = 0; i < flatBufferCrops->Length() - 1; i += 2)
882 {
883 crops.emplace_back(flatBufferCrops->Get(i), flatBufferCrops->Get(i+1));
884 }
885
886 armnn::BatchToSpaceNdDescriptor descriptor;
887 descriptor.m_DataLayout = ToDataLayout(flatBufferDescriptor->dataLayout());
888 descriptor.m_BlockShape =
889 std::vector<unsigned int>(flatBufferBlockShape->begin(), flatBufferBlockShape->end());
890 descriptor.m_Crops = crops;
891
892 auto layerName = GetLayerName(graph, layerIndex);
893 IConnectableLayer* layer = m_Network->AddBatchToSpaceNdLayer(descriptor, layerName.c_str());
894
895 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
896 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
897
898 RegisterInputSlots(graph, layerIndex, layer);
899 RegisterOutputSlots(graph, layerIndex, layer);
900}
901
ruoyan018e7fa232019-02-28 15:09:07 +0000902void Deserializer::ParseBatchNormalization(GraphPtr graph, unsigned int layerIndex)
903{
904 CHECK_LAYERS(graph, 0, layerIndex);
905
906 auto inputs = GetInputs(graph, layerIndex);
907 CHECK_VALID_SIZE(inputs.size(), 1);
908
909 auto outputs = GetOutputs(graph, layerIndex);
910 CHECK_VALID_SIZE(outputs.size(), 1);
911 auto outputInfo = ToTensorInfo(outputs[0]);
912
ruoyan015c7ab052019-03-04 14:48:02 +0000913 auto layerName = GetLayerName(graph, layerIndex);
ruoyan018e7fa232019-02-28 15:09:07 +0000914
915 auto serializerLayer = graph->layers()->Get(layerIndex)->layer_as_BatchNormalizationLayer();
916 auto serializerDescriptor = serializerLayer->descriptor();
917
918 armnn::BatchNormalizationDescriptor descriptor;
919 descriptor.m_Eps = serializerDescriptor->eps();
920 descriptor.m_DataLayout = ToDataLayout(serializerDescriptor->dataLayout());
921
922 armnn::ConstTensor mean = ToConstTensor(serializerLayer->mean());
923 armnn::ConstTensor variance = ToConstTensor(serializerLayer->variance());
924 armnn::ConstTensor beta = ToConstTensor(serializerLayer->beta());
925 armnn::ConstTensor gamma = ToConstTensor(serializerLayer->gamma());
926
927 IConnectableLayer* layer = m_Network->AddBatchNormalizationLayer(descriptor,
928 mean,
929 variance,
930 beta,
931 gamma,
932 layerName.c_str());
933 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
934
935 RegisterInputSlots(graph, layerIndex, layer);
936 RegisterOutputSlots(graph, layerIndex, layer);
937}
938
Conor Kennedy76277882019-02-26 08:29:54 +0000939void Deserializer::ParseConstant(GraphPtr graph, unsigned int layerIndex)
940{
941 CHECK_LAYERS(graph, 0, layerIndex);
942 CHECK_LOCATION();
943
944 auto outputs = GetOutputs(graph, layerIndex);
945 CHECK_VALID_SIZE(outputs.size(), 1);
946
947 auto layerName = GetLayerName(graph, layerIndex);
948
949 auto serializerLayer = graph->layers()->Get(layerIndex)->layer_as_ConstantLayer();
950 auto serializerInput = serializerLayer->input();
951
952 armnn::ConstTensor input = ToConstTensor(serializerInput);
953
954 IConnectableLayer* layer = m_Network->AddConstantLayer(input, layerName.c_str());
955
956 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
957 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
958
959 RegisterOutputSlots(graph, layerIndex, layer);
960}
961
Derek Lamberti8ddae332019-02-21 16:29:43 +0000962void Deserializer::ParseConvolution2d(GraphPtr graph, unsigned int layerIndex)
Mike Kellya0766c32019-02-19 17:22:07 +0000963{
Derek Lamberti8ddae332019-02-21 16:29:43 +0000964 CHECK_LAYERS(graph, 0, layerIndex);
965 auto inputs = GetInputs(graph, layerIndex);
Mike Kellya0766c32019-02-19 17:22:07 +0000966 CHECK_LOCATION();
967 CHECK_VALID_SIZE(inputs.size(), 1);
968
Derek Lamberti8ddae332019-02-21 16:29:43 +0000969 auto outputs = GetOutputs(graph, layerIndex);
Mike Kellya0766c32019-02-19 17:22:07 +0000970 CHECK_VALID_SIZE(outputs.size(), 1);
971
Derek Lamberti8ddae332019-02-21 16:29:43 +0000972 auto serializerLayer = graph->layers()->Get(layerIndex)->layer_as_Convolution2dLayer();
Éanna Ó Catháin633f8592019-02-25 16:26:29 +0000973 auto layerName = GetLayerName(graph, layerIndex);
Mike Kellya0766c32019-02-19 17:22:07 +0000974 auto serializerDescriptor = serializerLayer->descriptor();
975
976 armnn::Convolution2dDescriptor descriptor;
977 descriptor.m_PadLeft = serializerDescriptor->padLeft();
978 descriptor.m_PadRight = serializerDescriptor->padRight();
979 descriptor.m_PadTop = serializerDescriptor->padTop();
980 descriptor.m_PadBottom = serializerDescriptor->padBottom();
981 descriptor.m_StrideX = serializerDescriptor->strideX();
982 descriptor.m_StrideY = serializerDescriptor->strideY();;
983 descriptor.m_BiasEnabled = serializerDescriptor->biasEnabled();;
984 descriptor.m_DataLayout = ToDataLayout(serializerDescriptor->dataLayout());
985
986 armnn::ConstTensor weights = ToConstTensor(serializerLayer->weights());
987 armnn::ConstTensor biases;
988
989 if (descriptor.m_BiasEnabled)
990 {
991 biases = ToConstTensor(serializerLayer->biases());
992 }
993 IConnectableLayer* layer = m_Network->AddConvolution2dLayer(descriptor,
994 weights,
995 biases,
996 layerName.c_str());
997 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
998 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
999
Derek Lamberti8ddae332019-02-21 16:29:43 +00001000 RegisterInputSlots(graph, layerIndex, layer);
1001 RegisterOutputSlots(graph, layerIndex, layer);
Mike Kellya0766c32019-02-19 17:22:07 +00001002}
1003
Derek Lamberti8ddae332019-02-21 16:29:43 +00001004void Deserializer::ParseDepthwiseConvolution2d(GraphPtr graph, unsigned int layerIndex)
Aron Virginas-Tarc04125f2019-02-19 16:31:08 +00001005{
Derek Lamberti8ddae332019-02-21 16:29:43 +00001006 CHECK_LAYERS(graph, 0, layerIndex);
1007 auto inputs = GetInputs(graph, layerIndex);
Aron Virginas-Tarc04125f2019-02-19 16:31:08 +00001008 CHECK_LOCATION();
1009 CHECK_VALID_SIZE(inputs.size(), 1);
1010
Derek Lamberti8ddae332019-02-21 16:29:43 +00001011 auto outputs = GetOutputs(graph, layerIndex);
Aron Virginas-Tarc04125f2019-02-19 16:31:08 +00001012 CHECK_VALID_SIZE(outputs.size(), 1);
1013
Derek Lamberti8ddae332019-02-21 16:29:43 +00001014 auto serializerLayer = graph->layers()->Get(layerIndex)->layer_as_DepthwiseConvolution2dLayer();
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001015 auto layerName = GetLayerName(graph, layerIndex);
Aron Virginas-Tarc04125f2019-02-19 16:31:08 +00001016 auto serializerDescriptor = serializerLayer->descriptor();
1017
1018 armnn::DepthwiseConvolution2dDescriptor descriptor;
1019 descriptor.m_PadLeft = serializerDescriptor->padLeft();
1020 descriptor.m_PadRight = serializerDescriptor->padRight();
1021 descriptor.m_PadTop = serializerDescriptor->padTop();
1022 descriptor.m_PadBottom = serializerDescriptor->padBottom();
1023 descriptor.m_StrideX = serializerDescriptor->strideX();
1024 descriptor.m_StrideY = serializerDescriptor->strideY();;
1025 descriptor.m_BiasEnabled = serializerDescriptor->biasEnabled();;
1026 descriptor.m_DataLayout = ToDataLayout(serializerDescriptor->dataLayout());
1027
1028 armnn::ConstTensor weights = ToConstTensor(serializerLayer->weights());
1029 armnn::ConstTensor biases;
1030
1031 if (descriptor.m_BiasEnabled)
1032 {
1033 biases = ToConstTensor(serializerLayer->biases());
1034 }
1035 IConnectableLayer* layer = m_Network->AddDepthwiseConvolution2dLayer(descriptor,
1036 weights,
1037 biases,
1038 layerName.c_str());
1039
1040 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1041 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1042
Derek Lamberti8ddae332019-02-21 16:29:43 +00001043 RegisterInputSlots(graph, layerIndex, layer);
1044 RegisterOutputSlots(graph, layerIndex, layer);
Aron Virginas-Tarc04125f2019-02-19 16:31:08 +00001045}
1046
Nattapat Chaimanowong3e14a9d2019-03-18 12:37:06 +00001047void Deserializer::ParseDetectionPostProcess(GraphPtr graph, unsigned int layerIndex)
1048{
1049 CHECK_LAYERS(graph, 0, layerIndex);
1050 auto inputs = GetInputs(graph, layerIndex);
1051 CHECK_LOCATION();
1052 CHECK_VALID_SIZE(inputs.size(), 2);
1053
1054 auto outputs = GetOutputs(graph, layerIndex);
1055 CHECK_VALID_SIZE(outputs.size(), 4);
1056
1057 auto flatBufferLayer = graph->layers()->Get(layerIndex)->layer_as_DetectionPostProcessLayer();
1058 auto layerName = GetLayerName(graph, layerIndex);
1059 auto flatBufferDescriptor = flatBufferLayer->descriptor();
1060
1061 armnn::DetectionPostProcessDescriptor descriptor;
1062 descriptor.m_MaxDetections = flatBufferDescriptor->maxDetections();
1063 descriptor.m_MaxClassesPerDetection = flatBufferDescriptor->maxClassesPerDetection();
1064 descriptor.m_DetectionsPerClass = flatBufferDescriptor->detectionsPerClass();
1065 descriptor.m_NmsScoreThreshold = flatBufferDescriptor->nmsScoreThreshold();
1066 descriptor.m_NmsIouThreshold = flatBufferDescriptor->nmsIouThreshold();
1067 descriptor.m_NumClasses = flatBufferDescriptor->numClasses();
1068 descriptor.m_UseRegularNms = flatBufferDescriptor->useRegularNms();
1069 descriptor.m_ScaleX = flatBufferDescriptor->scaleX();
1070 descriptor.m_ScaleY = flatBufferDescriptor->scaleY();
1071 descriptor.m_ScaleW = flatBufferDescriptor->scaleW();
1072 descriptor.m_ScaleH = flatBufferDescriptor->scaleH();
1073
1074 armnn::ConstTensor anchors = ToConstTensor(flatBufferLayer->anchors());
1075
1076 IConnectableLayer* layer = m_Network->AddDetectionPostProcessLayer(descriptor,
1077 anchors,
1078 layerName.c_str());
1079
1080 for (unsigned int i = 0; i < 4; i++)
1081 {
1082 layer->GetOutputSlot(i).SetTensorInfo(ToTensorInfo(outputs[i]));
1083 }
1084
1085 RegisterInputSlots(graph, layerIndex, layer);
1086 RegisterOutputSlots(graph, layerIndex, layer);
1087}
1088
Éanna Ó Catháin58885892019-02-27 16:16:39 +00001089void Deserializer::ParseDivision(GraphPtr graph, unsigned int layerIndex)
1090{
1091 CHECK_LAYERS(graph, 0, layerIndex);
1092 auto inputs = GetInputs(graph, layerIndex);
1093 CHECK_LOCATION();
1094 CHECK_VALID_SIZE(inputs.size(), 2);
1095
1096 auto outputs = GetOutputs(graph, layerIndex);
1097 CHECK_VALID_SIZE(outputs.size(), 1);
1098
1099 auto layerName = GetLayerName(graph, layerIndex);
1100 IConnectableLayer* layer = m_Network->AddDivisionLayer(layerName.c_str());
1101
1102 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1103 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1104
1105 RegisterInputSlots(graph, layerIndex, layer);
1106 RegisterOutputSlots(graph, layerIndex, layer);
1107}
1108
Nattapat Chaimanowong235cea52019-02-28 16:27:30 +00001109void Deserializer::ParseEqual(GraphPtr graph, unsigned int layerIndex)
1110{
1111 CHECK_LAYERS(graph, 0, layerIndex);
1112 auto inputs = GetInputs(graph, layerIndex);
1113 CHECK_LOCATION();
1114 CHECK_VALID_SIZE(inputs.size(), 2);
1115
1116 auto outputs = GetOutputs(graph, layerIndex);
1117 CHECK_VALID_SIZE(outputs.size(), 1);
1118
1119 auto layerName = GetLayerName(graph, layerIndex);
1120 IConnectableLayer* layer = m_Network->AddEqualLayer(layerName.c_str());
1121
1122 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1123 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1124
1125 RegisterInputSlots(graph, layerIndex, layer);
1126 RegisterOutputSlots(graph, layerIndex, layer);
1127}
1128
Conor Kennedy79ffdf52019-03-01 14:24:54 +00001129void Deserializer::ParseGreater(GraphPtr graph, unsigned int layerIndex)
1130{
1131 CHECK_LAYERS(graph, 0, layerIndex);
1132 auto inputs = GetInputs(graph, layerIndex);
1133 CHECK_LOCATION();
1134 CHECK_VALID_SIZE(inputs.size(), 2);
1135
1136 auto outputs = GetOutputs(graph, layerIndex);
1137 CHECK_VALID_SIZE(outputs.size(), 1);
1138
1139 auto layerName = GetLayerName(graph, layerIndex);
1140 IConnectableLayer* layer = m_Network->AddGreaterLayer(layerName.c_str());
1141
1142 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1143 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1144
1145 RegisterInputSlots(graph, layerIndex, layer);
1146 RegisterOutputSlots(graph, layerIndex, layer);
1147}
1148
Narumol Prangnawarat495701f2019-03-07 17:31:34 +00001149void Deserializer::ParseL2Normalization(GraphPtr graph, unsigned int layerIndex)
1150{
1151 CHECK_LAYERS(graph, 0, layerIndex);
1152
1153 auto inputs = GetInputs(graph, layerIndex);
1154 CHECK_VALID_SIZE(inputs.size(), 1);
1155
1156 auto outputs = GetOutputs(graph, layerIndex);
1157 CHECK_VALID_SIZE(outputs.size(), 1);
1158 auto outputInfo = ToTensorInfo(outputs[0]);
1159
1160 auto flatBufferLayer = graph->layers()->Get(layerIndex)->layer_as_L2NormalizationLayer();
1161 auto flatBufferDescriptor = flatBufferLayer->descriptor();
1162
1163 auto layerName = GetLayerName(graph, layerIndex);
1164 armnn::L2NormalizationDescriptor descriptor;
1165 descriptor.m_DataLayout = ToDataLayout(flatBufferDescriptor->dataLayout());
1166
1167 IConnectableLayer* layer = m_Network->AddL2NormalizationLayer(descriptor, layerName.c_str());
1168 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
1169
1170 RegisterInputSlots(graph, layerIndex, layer);
1171 RegisterOutputSlots(graph, layerIndex, layer);
1172}
1173
Aron Virginas-Tar0fe32452019-02-28 13:12:47 +00001174void Deserializer::ParseMinimum(GraphPtr graph, unsigned int layerIndex)
1175{
1176 CHECK_LAYERS(graph, 0, layerIndex);
1177 auto inputs = GetInputs(graph, layerIndex);
1178 CHECK_LOCATION();
1179 CHECK_VALID_SIZE(inputs.size(), 2);
1180
1181 auto outputs = GetOutputs(graph, layerIndex);
1182 CHECK_VALID_SIZE(outputs.size(), 1);
1183
1184 auto layerName = GetLayerName(graph, layerIndex);
1185 IConnectableLayer* layer = m_Network->AddMinimumLayer(layerName.c_str());
1186
1187 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1188 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1189
1190 RegisterInputSlots(graph, layerIndex, layer);
1191 RegisterOutputSlots(graph, layerIndex, layer);
1192}
1193
Aron Virginas-Tar377351e2019-02-27 14:42:31 +00001194void Deserializer::ParseMaximum(GraphPtr graph, unsigned int layerIndex)
1195{
1196 CHECK_LAYERS(graph, 0, layerIndex);
1197 auto inputs = GetInputs(graph, layerIndex);
1198 CHECK_LOCATION();
1199 CHECK_VALID_SIZE(inputs.size(), 2);
1200
1201 auto outputs = GetOutputs(graph, layerIndex);
1202 CHECK_VALID_SIZE(outputs.size(), 1);
1203
1204 auto layerName = GetLayerName(graph, layerIndex);
1205 IConnectableLayer* layer = m_Network->AddMaximumLayer(layerName.c_str());
1206
1207 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1208 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1209
1210 RegisterInputSlots(graph, layerIndex, layer);
1211 RegisterOutputSlots(graph, layerIndex, layer);
1212}
1213
Jim Flynnac25a1b2019-02-28 10:40:49 +00001214void Deserializer::ParseMerger(GraphPtr graph, unsigned int layerIndex)
1215{
1216 CHECK_LAYERS(graph, 0, layerIndex);
1217 CHECK_LOCATION();
1218
1219 auto outputs = GetOutputs(graph, layerIndex);
1220 CHECK_VALID_SIZE(outputs.size(), 1);
1221
1222 auto mergerLayer = graph->layers()->Get(layerIndex)->layer_as_MergerLayer();
1223 auto layerName = GetLayerName(graph, layerIndex);
1224 auto mergerDescriptor = mergerLayer->descriptor();
1225 unsigned int numViews = mergerDescriptor->numViews();
1226 unsigned int numDimensions = mergerDescriptor->numDimensions();
1227
1228 // can now check the number of inputs == number of views
1229 auto inputs = GetInputs(graph, layerIndex);
1230 CHECK_VALID_SIZE(inputs.size(), numViews);
1231
1232 armnn::OriginsDescriptor descriptor(numViews, numDimensions);
1233 auto originsPtr = mergerDescriptor->viewOrigins();
1234 for (unsigned int v = 0; v < numViews; ++v)
1235 {
1236 auto originPtr = originsPtr->Get(v);
1237 for (unsigned int d = 0; d < numDimensions; ++d)
1238 {
1239 uint32_t value = originPtr->data()->Get(d);
1240 descriptor.SetViewOriginCoord(v, d, value);
1241 }
1242 }
1243 descriptor.SetConcatAxis(mergerDescriptor->concatAxis());
1244
1245 IConnectableLayer* layer = m_Network->AddMergerLayer(descriptor, layerName.c_str());
1246 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1247 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1248
1249 RegisterInputSlots(graph, layerIndex, layer);
1250 RegisterOutputSlots(graph, layerIndex, layer);
1251}
1252
Derek Lamberti8ddae332019-02-21 16:29:43 +00001253void Deserializer::ParseMultiplication(GraphPtr graph, unsigned int layerIndex)
Sadik Armagan5f450272019-02-12 14:31:45 +00001254{
Derek Lamberti8ddae332019-02-21 16:29:43 +00001255 CHECK_LAYERS(graph, 0, layerIndex);
1256 auto inputs = GetInputs(graph, layerIndex);
Sadik Armagan5f450272019-02-12 14:31:45 +00001257 CHECK_LOCATION();
1258 CHECK_VALID_SIZE(inputs.size(), 2);
1259
Derek Lamberti8ddae332019-02-21 16:29:43 +00001260 auto outputs = GetOutputs(graph, layerIndex);
Sadik Armagan5f450272019-02-12 14:31:45 +00001261 CHECK_VALID_SIZE(outputs.size(), 1);
1262
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001263 auto layerName = GetLayerName(graph, layerIndex);
1264 IConnectableLayer* layer = m_Network->AddMultiplicationLayer(layerName.c_str());
Sadik Armagan5f450272019-02-12 14:31:45 +00001265
1266 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1267 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1268
Derek Lamberti8ddae332019-02-21 16:29:43 +00001269 RegisterInputSlots(graph, layerIndex, layer);
1270 RegisterOutputSlots(graph, layerIndex, layer);
Sadik Armagan5f450272019-02-12 14:31:45 +00001271}
1272
Finn Williamsdd2ba7e2019-03-01 11:51:52 +00001273void Deserializer::ParseFloor(GraphPtr graph, unsigned int layerIndex)
1274{
1275 CHECK_LAYERS(graph, 0, layerIndex);
1276 CHECK_LOCATION();
1277
1278 auto inputs = GetInputs(graph, layerIndex);
1279 CHECK_VALID_SIZE(inputs.size(), 1);
1280
1281 auto outputs = GetOutputs(graph, layerIndex);
1282 CHECK_VALID_SIZE(outputs.size(), 1);
1283
1284 auto layerName = GetLayerName(graph, layerIndex);
1285
1286 armnn::IConnectableLayer* layer;
1287
Nattapat Chaimanowongc192f352019-03-05 17:35:28 +00001288 layer = m_Network->AddFloorLayer(layerName.c_str());
Finn Williamsdd2ba7e2019-03-01 11:51:52 +00001289
1290 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1291 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1292
1293 RegisterInputSlots(graph, layerIndex, layer);
1294 RegisterOutputSlots(graph, layerIndex, layer);
1295}
1296
Derek Lamberti8ddae332019-02-21 16:29:43 +00001297void Deserializer::ParseFullyConnected(GraphPtr graph, unsigned int layerIndex)
Sadik Armagandbb0c0c2019-02-21 09:01:41 +00001298{
Derek Lamberti8ddae332019-02-21 16:29:43 +00001299 CHECK_LAYERS(graph, 0, layerIndex);
1300 auto inputs = GetInputs(graph, layerIndex);
Sadik Armagandbb0c0c2019-02-21 09:01:41 +00001301 CHECK_LOCATION();
1302 CHECK_VALID_SIZE(inputs.size(), 1);
1303
Derek Lamberti8ddae332019-02-21 16:29:43 +00001304 auto outputs = GetOutputs(graph, layerIndex);
Sadik Armagandbb0c0c2019-02-21 09:01:41 +00001305 CHECK_VALID_SIZE(outputs.size(), 1);
1306
Derek Lamberti8ddae332019-02-21 16:29:43 +00001307 auto flatBufferLayer = graph->layers()->Get(layerIndex)->layer_as_FullyConnectedLayer();
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001308 auto layerName = GetLayerName(graph, layerIndex);
Sadik Armagandbb0c0c2019-02-21 09:01:41 +00001309 auto flatBufferDescriptor = flatBufferLayer->descriptor();
1310
1311 armnn::FullyConnectedDescriptor fullyConnectedDescriptor;
1312 fullyConnectedDescriptor.m_BiasEnabled = flatBufferDescriptor->biasEnabled();
1313 fullyConnectedDescriptor.m_TransposeWeightMatrix = flatBufferDescriptor->transposeWeightsMatrix();
1314
1315 armnn::ConstTensor weightsTensor = ToConstTensor(flatBufferLayer->weights());
1316
1317 armnn::IConnectableLayer* layer;
1318 if (flatBufferDescriptor->biasEnabled())
1319 {
1320 armnn::ConstTensor biasTensorData = ToConstTensor(flatBufferLayer->biases());
1321 layer = m_Network->AddFullyConnectedLayer(fullyConnectedDescriptor,
1322 weightsTensor,
1323 biasTensorData,
1324 layerName.c_str());
1325 }
1326 else
1327 {
1328 layer = m_Network->AddFullyConnectedLayer(fullyConnectedDescriptor,
1329 weightsTensor,
1330 layerName.c_str());
1331 }
1332
1333 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1334 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1335
Derek Lamberti8ddae332019-02-21 16:29:43 +00001336 RegisterInputSlots(graph, layerIndex, layer);
1337 RegisterOutputSlots(graph, layerIndex, layer);
Sadik Armagandbb0c0c2019-02-21 09:01:41 +00001338}
1339
Nattapat Chaimanowongebb0f9c2019-03-01 12:14:06 +00001340void Deserializer::ParsePad(GraphPtr graph, unsigned int layerIndex)
1341{
1342 CHECK_LAYERS(graph, 0, layerIndex);
1343
1344 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1345 CHECK_VALID_SIZE(inputs.size(), 1);
1346
1347 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1348 CHECK_VALID_SIZE(outputs.size(), 1);
1349
1350 auto flatBufferDescriptor = graph->layers()->Get(layerIndex)->layer_as_PadLayer()->descriptor();
1351 auto flatBufferPadList = flatBufferDescriptor->padList();
1352
1353 if (flatBufferPadList->Length() % 2 != 0)
1354 {
1355 throw ParseException(boost::str(
1356 boost::format("The size of the pad list must be divisible by 2 %1%") % CHECK_LOCATION().AsString()));
1357 }
1358
1359 std::vector<std::pair<unsigned int, unsigned int>> padList;
1360 padList.reserve(flatBufferPadList->Length() / 2);
1361 for (unsigned int i = 0; i < flatBufferPadList->Length() - 1; i += 2)
1362 {
1363 padList.emplace_back(flatBufferPadList->Get(i), flatBufferPadList->Get(i+1));
1364 }
1365
1366 armnn::PadDescriptor descriptor(padList);
1367
1368 auto layerName = GetLayerName(graph, layerIndex);
1369 IConnectableLayer* layer = m_Network->AddPadLayer(descriptor, layerName.c_str());
1370
1371 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1372 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1373
1374 RegisterInputSlots(graph, layerIndex, layer);
1375 RegisterOutputSlots(graph, layerIndex, layer);
1376}
1377
Derek Lamberti8ddae332019-02-21 16:29:43 +00001378void Deserializer::ParsePermute(GraphPtr graph, unsigned int layerIndex)
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001379{
Derek Lamberti8ddae332019-02-21 16:29:43 +00001380 CHECK_LAYERS(graph, 0, layerIndex);
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001381
1382 auto dimsMapping =
Derek Lamberti8ddae332019-02-21 16:29:43 +00001383 graph->layers()->Get(layerIndex)->layer_as_PermuteLayer()->descriptor()->dimMappings();
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001384
Derek Lamberti8ddae332019-02-21 16:29:43 +00001385 auto inputs = GetInputs(graph, layerIndex);
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001386 CHECK_VALID_SIZE(inputs.size(), 1);
1387
Derek Lamberti8ddae332019-02-21 16:29:43 +00001388 auto outputs = GetOutputs(graph, layerIndex);
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001389 CHECK_VALID_SIZE(outputs.size(), 1);
1390 auto outputInfo = ToTensorInfo(outputs[0]);
1391
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001392 auto layerName = GetLayerName(graph, layerIndex);
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001393 const armnn::PermuteDescriptor descriptor(armnn::PermutationVector(dimsMapping->data(), dimsMapping->Length()));
1394
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001395 IConnectableLayer* layer = m_Network->AddPermuteLayer(descriptor, layerName.c_str());
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001396 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
1397
Derek Lamberti8ddae332019-02-21 16:29:43 +00001398 RegisterInputSlots(graph, layerIndex, layer);
1399 RegisterOutputSlots(graph, layerIndex, layer);
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001400}
1401
Derek Lamberti0028d1b2019-02-20 13:57:42 +00001402armnn::Pooling2dDescriptor Deserializer::GetPoolingDescriptor(Deserializer::PoolingDescriptor pooling2dDesc,
Nattapat Chaimanowong30b00202019-02-20 17:31:34 +00001403 unsigned int layerIndex)
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001404{
1405 armnn::Pooling2dDescriptor desc;
1406
1407 switch (pooling2dDesc->poolType())
1408 {
1409 case PoolingAlgorithm_Average:
1410 {
1411 desc.m_PoolType = armnn::PoolingAlgorithm::Average;
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001412 break;
1413 }
1414 case PoolingAlgorithm_Max:
1415 {
1416 desc.m_PoolType = armnn::PoolingAlgorithm::Max;
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001417 break;
1418 }
1419 default:
1420 {
1421 BOOST_ASSERT_MSG(false, "Unsupported pooling algorithm");
1422 }
1423 }
1424
1425 switch (pooling2dDesc->outputShapeRounding())
1426 {
1427 case OutputShapeRounding_Floor:
1428 {
1429 desc.m_OutputShapeRounding = armnn::OutputShapeRounding::Floor;
1430 break;
1431 }
1432 case OutputShapeRounding_Ceiling:
1433 {
1434 desc.m_OutputShapeRounding = armnn::OutputShapeRounding::Ceiling;
1435 break;
1436 }
1437 default:
1438 {
1439 BOOST_ASSERT_MSG(false, "Unsupported output shape rounding");
1440 }
1441 }
1442
1443 switch (pooling2dDesc->paddingMethod())
1444 {
1445 case PaddingMethod_Exclude:
1446 {
1447 desc.m_PaddingMethod = armnn::PaddingMethod::Exclude;
1448 break;
1449 }
1450 case PaddingMethod_IgnoreValue:
1451 {
1452 desc.m_PaddingMethod = armnn::PaddingMethod::IgnoreValue;
1453 break;
1454 }
1455 default:
1456 {
1457 BOOST_ASSERT_MSG(false, "Unsupported padding method");
1458 }
1459 }
1460
1461 switch (pooling2dDesc->dataLayout())
1462 {
1463 case DataLayout_NCHW:
1464 {
1465 desc.m_DataLayout = armnn::DataLayout::NCHW;
1466 break;
1467 }
1468 case DataLayout_NHWC:
1469 {
1470 desc.m_DataLayout = armnn::DataLayout::NHWC;
1471 break;
1472 }
1473 default:
1474 {
1475 BOOST_ASSERT_MSG(false, "Unsupported data layout");
1476 }
1477 }
1478
1479 desc.m_PadRight = pooling2dDesc->padRight();
1480 desc.m_PadLeft = pooling2dDesc->padLeft();
1481 desc.m_PadBottom = pooling2dDesc->padBottom();
1482 desc.m_PadTop = pooling2dDesc->padTop();
1483 desc.m_StrideX = pooling2dDesc->strideX();
1484 desc.m_StrideY = pooling2dDesc->strideY();
1485 desc.m_PoolWidth = pooling2dDesc->poolWidth();
1486 desc.m_PoolHeight = pooling2dDesc->poolHeight();
1487
1488 return desc;
1489}
1490
Derek Lamberti8ddae332019-02-21 16:29:43 +00001491void Deserializer::ParsePooling2d(GraphPtr graph, unsigned int layerIndex)
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001492{
Derek Lamberti8ddae332019-02-21 16:29:43 +00001493 CHECK_LAYERS(graph, 0, layerIndex);
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001494
Derek Lamberti8ddae332019-02-21 16:29:43 +00001495 auto pooling2dDes = graph->layers()->Get(layerIndex)->layer_as_Pooling2dLayer()->descriptor();
Derek Lamberti8ddae332019-02-21 16:29:43 +00001496 auto inputs = GetInputs(graph, layerIndex);
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001497 CHECK_VALID_SIZE(inputs.size(), 1);
1498
Derek Lamberti8ddae332019-02-21 16:29:43 +00001499 auto outputs = GetOutputs(graph, layerIndex);
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001500 CHECK_VALID_SIZE(outputs.size(), 1);
1501 auto outputInfo = ToTensorInfo(outputs[0]);
1502
1503 auto pooling2dDescriptor = GetPoolingDescriptor(pooling2dDes, layerIndex);
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001504 auto layerName = GetLayerName(graph, layerIndex);
1505 IConnectableLayer* layer = m_Network->AddPooling2dLayer(pooling2dDescriptor, layerName.c_str());
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001506 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
1507
Derek Lamberti8ddae332019-02-21 16:29:43 +00001508 RegisterInputSlots(graph, layerIndex, layer);
1509 RegisterOutputSlots(graph, layerIndex, layer);
Saoirse Stewart3166c3e2019-02-18 15:24:53 +00001510}
1511
Derek Lamberti87acb272019-03-27 16:51:31 +00001512void Deserializer::ParseQuantize(GraphPtr graph, unsigned int layerIndex)
1513{
1514 CHECK_LAYERS(graph, 0, layerIndex);
1515
1516 auto inputs = GetInputs(graph, layerIndex);
1517 CHECK_VALID_SIZE(inputs.size(), 1);
1518
1519 auto outputs = GetOutputs(graph, layerIndex);
1520 CHECK_VALID_SIZE(outputs.size(), 1);
1521 auto outputInfo = ToTensorInfo(outputs[0]);
1522
1523 auto layerName = GetLayerName(graph, layerIndex);
1524 IConnectableLayer* layer = m_Network->AddQuantizeLayer(layerName.c_str());
1525 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
1526
1527 RegisterInputSlots(graph, layerIndex, layer);
1528 RegisterOutputSlots(graph, layerIndex, layer);
1529}
1530
Derek Lamberti0028d1b2019-02-20 13:57:42 +00001531armnn::TensorInfo Deserializer::OutputShapeOfReshape(const armnn::TensorInfo& inputTensorInfo,
Saoirse Stewart263829c2019-02-19 15:54:14 +00001532 const std::vector<uint32_t>& targetDimsIn)
1533{
1534 std::vector<unsigned int> outputDims(targetDimsIn.begin(), targetDimsIn.end());
1535 const auto stretchDim = std::find(targetDimsIn.begin(), targetDimsIn.end(), -1);
1536
1537 if (stretchDim != targetDimsIn.end())
1538 {
1539 if (std::find(std::next(stretchDim), targetDimsIn.end(), -1) != targetDimsIn.end())
1540 {
1541 throw ParseException(boost::str(
1542 boost::format("At most one component of shape can be -1 %1%") % CHECK_LOCATION().AsString()));
1543 }
1544
1545 auto targetNumElements =
1546 boost::numeric_cast<unsigned int>(
1547 std::accumulate(targetDimsIn.begin(), targetDimsIn.end(), -1, std::multiplies<int32_t>()));
1548
1549 auto stretchIndex = static_cast<size_t>(std::distance(targetDimsIn.begin(), stretchDim));
1550 outputDims[stretchIndex] = inputTensorInfo.GetNumElements() / targetNumElements;
1551 }
1552
1553 TensorShape outputShape = TensorShape(static_cast<unsigned int>(outputDims.size()), outputDims.data());
1554
1555 armnn::TensorInfo reshapeInfo = inputTensorInfo;
1556 reshapeInfo.SetShape(outputShape);
1557
1558 return reshapeInfo;
1559}
1560
Derek Lamberti8ddae332019-02-21 16:29:43 +00001561void Deserializer::ParseReshape(GraphPtr graph, unsigned int layerIndex)
Saoirse Stewart263829c2019-02-19 15:54:14 +00001562{
Derek Lamberti8ddae332019-02-21 16:29:43 +00001563 CHECK_LAYERS(graph, 0, layerIndex);
1564 auto inputs = GetInputs(graph, layerIndex);
Saoirse Stewart263829c2019-02-19 15:54:14 +00001565
Derek Lamberti8ddae332019-02-21 16:29:43 +00001566 auto outputs = GetOutputs(graph, layerIndex);
Saoirse Stewart263829c2019-02-19 15:54:14 +00001567 CHECK_VALID_SIZE(outputs.size(), 1);
1568
1569 armnn::TensorInfo inputTensorInfo = ToTensorInfo(inputs[0]);
1570 armnn::TensorInfo actualOutputTensorInfo = ToTensorInfo(outputs[0]);
1571
Derek Lamberti8ddae332019-02-21 16:29:43 +00001572 const auto targetDims = graph->layers()->Get(layerIndex)->layer_as_ReshapeLayer()->descriptor()->targetShape();
Saoirse Stewart263829c2019-02-19 15:54:14 +00001573 std::vector<uint32_t> outputDims(targetDims->begin(), targetDims->begin() + targetDims->size());
1574
Derek Lamberti0028d1b2019-02-20 13:57:42 +00001575 armnn::TensorInfo reshapeOutputTensorInfo = Deserializer::OutputShapeOfReshape(inputTensorInfo, outputDims);
Saoirse Stewart263829c2019-02-19 15:54:14 +00001576 const armnn::TensorShape& reshapeOutputTensorShape = reshapeOutputTensorInfo.GetShape();
1577
1578 const std::vector<uint32_t> expectedDims(outputs[0]->dimensions()->begin(),
1579 outputs[0]->dimensions()->begin() + outputs[0]->dimensions()->size());
1580
1581 if (inputs.size() > 1 && !CheckShape(reshapeOutputTensorShape, expectedDims))
1582 {
1583 std::stringstream ss;
1584 ss << "New shape defined in reshape parameters "
1585 << reshapeOutputTensorShape
1586 << " does not equal output shape "
1587 << actualOutputTensorInfo.GetShape()
1588 << ": "
1589 << CHECK_LOCATION().AsString();
1590 throw ParseException(ss.str());
1591 }
1592
1593 armnn::ReshapeDescriptor reshapeDesc;
1594 reshapeDesc.m_TargetShape = reshapeOutputTensorShape;
1595
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001596 auto layerName = GetLayerName(graph, layerIndex);
Saoirse Stewart263829c2019-02-19 15:54:14 +00001597 IConnectableLayer* layer = m_Network->AddReshapeLayer(reshapeDesc, layerName.c_str());
1598 layer->GetOutputSlot(0).SetTensorInfo(reshapeOutputTensorInfo);
1599
Derek Lamberti8ddae332019-02-21 16:29:43 +00001600 RegisterInputSlots(graph, layerIndex, layer);
1601 RegisterOutputSlots(graph, layerIndex, layer);
Saoirse Stewart263829c2019-02-19 15:54:14 +00001602}
1603
Nattapat Chaimanowong6522cdc2019-03-01 16:14:13 +00001604void Deserializer::ParseResizeBilinear(GraphPtr graph, unsigned int layerIndex)
1605{
1606 CHECK_LAYERS(graph, 0, layerIndex);
1607
1608 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1609 CHECK_VALID_SIZE(inputs.size(), 1);
1610
1611 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1612 CHECK_VALID_SIZE(outputs.size(), 1);
1613
1614 auto flatBufferDescriptor = graph->layers()->Get(layerIndex)->layer_as_ResizeBilinearLayer()->descriptor();
1615
1616 armnn::ResizeBilinearDescriptor descriptor;
1617 descriptor.m_TargetWidth = flatBufferDescriptor->targetWidth();
1618 descriptor.m_TargetHeight = flatBufferDescriptor->targetHeight();
1619 descriptor.m_DataLayout = ToDataLayout(flatBufferDescriptor->dataLayout());
1620
1621 auto layerName = GetLayerName(graph, layerIndex);
1622 IConnectableLayer* layer = m_Network->AddResizeBilinearLayer(descriptor, layerName.c_str());
1623
1624 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1625 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1626
1627 RegisterInputSlots(graph, layerIndex, layer);
1628 RegisterOutputSlots(graph, layerIndex, layer);
1629}
1630
Derek Lamberti8ddae332019-02-21 16:29:43 +00001631void Deserializer::ParseSoftmax(GraphPtr graph, unsigned int layerIndex)
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +00001632{
Derek Lamberti8ddae332019-02-21 16:29:43 +00001633 CHECK_LAYERS(graph, 0, layerIndex);
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +00001634
Derek Lamberti8ddae332019-02-21 16:29:43 +00001635 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +00001636 CHECK_VALID_SIZE(inputs.size(), 1);
1637
Derek Lamberti8ddae332019-02-21 16:29:43 +00001638 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +00001639 CHECK_VALID_SIZE(outputs.size(), 1);
1640
1641 armnn::SoftmaxDescriptor descriptor;
Derek Lamberti8ddae332019-02-21 16:29:43 +00001642 descriptor.m_Beta = graph->layers()->Get(layerIndex)->layer_as_SoftmaxLayer()->descriptor()->beta();
Éanna Ó Catháin633f8592019-02-25 16:26:29 +00001643 auto layerName = GetLayerName(graph, layerIndex);
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +00001644
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +00001645 IConnectableLayer* layer = m_Network->AddSoftmaxLayer(descriptor, layerName.c_str());
1646
1647 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1648 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1649
Derek Lamberti8ddae332019-02-21 16:29:43 +00001650 RegisterInputSlots(graph, layerIndex, layer);
1651 RegisterOutputSlots(graph, layerIndex, layer);
Kevin May43a799c2019-02-08 16:31:42 +00001652}
Aron Virginas-Tarfc413c02019-02-13 15:41:52 +00001653
Nattapat Chaimanowong45286992019-02-26 15:53:02 +00001654void Deserializer::ParseSpaceToBatchNd(GraphPtr graph, unsigned int layerIndex)
1655{
1656 CHECK_LAYERS(graph, 0, layerIndex);
1657
1658 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1659 CHECK_VALID_SIZE(inputs.size(), 1);
1660
1661 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1662 CHECK_VALID_SIZE(outputs.size(), 1);
1663
1664 auto flatBufferDescriptor = graph->layers()->Get(layerIndex)->layer_as_SpaceToBatchNdLayer()->descriptor();
1665 auto flatBufferPadList = flatBufferDescriptor->padList();
1666 auto flatBufferBlockShape = flatBufferDescriptor->blockShape();
1667
1668 if (flatBufferPadList->Length() % 2 != 0)
1669 {
1670 throw ParseException(boost::str(
1671 boost::format("The size of the pad list must be divisible by 2 %1%") % CHECK_LOCATION().AsString()));
1672 }
1673
1674 std::vector<std::pair<unsigned int, unsigned int>> padList;
1675 padList.reserve(flatBufferPadList->Length() / 2);
1676 for (unsigned int i = 0; i < flatBufferPadList->Length() - 1; i += 2)
1677 {
1678 padList.emplace_back(flatBufferPadList->Get(i), flatBufferPadList->Get(i+1));
1679 }
1680
1681 armnn::SpaceToBatchNdDescriptor descriptor;
1682 descriptor.m_DataLayout = ToDataLayout(flatBufferDescriptor->dataLayout());
1683 descriptor.m_BlockShape =
1684 std::vector<unsigned int>(flatBufferBlockShape->begin(), flatBufferBlockShape->end());
1685 descriptor.m_PadList = padList;
1686
1687 auto layerName = GetLayerName(graph, layerIndex);
1688 IConnectableLayer* layer = m_Network->AddSpaceToBatchNdLayer(descriptor, layerName.c_str());
1689
1690 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1691 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1692
1693 RegisterInputSlots(graph, layerIndex, layer);
1694 RegisterOutputSlots(graph, layerIndex, layer);
1695}
1696
Nina Drozd57728782019-02-27 10:53:27 +00001697armnn::NormalizationDescriptor Deserializer::GetNormalizationDescriptor(
1698 Deserializer::NormalizationDescriptorPtr normalizationDescriptor,
1699 unsigned int layerIndex)
1700{
1701 armnn::NormalizationDescriptor desc;
1702
1703 switch (normalizationDescriptor->normChannelType())
1704 {
1705 case NormalizationAlgorithmChannel_Across:
1706 {
1707 desc.m_NormChannelType = armnn::NormalizationAlgorithmChannel::Across;
1708 break;
1709 }
1710 case NormalizationAlgorithmChannel_Within:
1711 {
1712 desc.m_NormChannelType = armnn::NormalizationAlgorithmChannel::Within;
1713 break;
1714 }
1715 default:
1716 {
1717 BOOST_ASSERT_MSG(false, "Unsupported normalization channel type");
1718 }
1719 }
1720
1721 switch (normalizationDescriptor->normMethodType())
1722 {
1723 case NormalizationAlgorithmMethod_LocalBrightness:
1724 {
1725 desc.m_NormMethodType = armnn::NormalizationAlgorithmMethod::LocalBrightness;
1726 break;
1727 }
1728 case NormalizationAlgorithmMethod_LocalContrast:
1729 {
1730 desc.m_NormMethodType = armnn::NormalizationAlgorithmMethod::LocalContrast;
1731 break;
1732 }
1733 default:
1734 {
1735 BOOST_ASSERT_MSG(false, "Unsupported normalization method type");
1736 }
1737 }
1738
1739 switch (normalizationDescriptor->dataLayout())
1740 {
1741 case DataLayout_NCHW:
1742 {
1743 desc.m_DataLayout = armnn::DataLayout::NCHW;
1744 break;
1745 }
1746 case DataLayout_NHWC:
1747 {
1748 desc.m_DataLayout = armnn::DataLayout::NHWC;
1749 break;
1750 }
1751 default:
1752 {
1753 BOOST_ASSERT_MSG(false, "Unsupported data layout");
1754 }
1755 }
1756
1757 desc.m_Alpha = normalizationDescriptor->alpha();
1758 desc.m_Beta = normalizationDescriptor->beta();
1759 desc.m_K = normalizationDescriptor->k();
1760 desc.m_NormSize = normalizationDescriptor->normSize();
1761
1762 return desc;
1763}
1764
1765void Deserializer::ParseNormalization(GraphPtr graph, unsigned int layerIndex)
1766{
1767 CHECK_LAYERS(graph, 0, layerIndex);
1768
1769 auto normalizationDes = graph->layers()->Get(layerIndex)->layer_as_NormalizationLayer()->descriptor();
1770
1771 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1772 CHECK_VALID_SIZE(inputs.size(), 1);
1773
1774 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1775 CHECK_VALID_SIZE(outputs.size(), 1);
1776
1777 auto outputInfo = ToTensorInfo(outputs[0]);
1778
1779 auto normalizationDescriptor = GetNormalizationDescriptor(normalizationDes, layerIndex);
1780 auto layerName = GetLayerName(graph, layerIndex);
1781
1782 IConnectableLayer* layer = m_Network->AddNormalizationLayer(normalizationDescriptor, layerName.c_str());
1783 layer->GetOutputSlot(0).SetTensorInfo(outputInfo);
1784
1785 RegisterInputSlots(graph, layerIndex, layer);
1786 RegisterOutputSlots(graph, layerIndex, layer);
1787}
1788
Sadik Armagan8b42a382019-03-01 14:24:49 +00001789void Deserializer::ParseRsqrt(GraphPtr graph, unsigned int layerIndex)
1790{
1791 CHECK_LAYERS(graph, 0, layerIndex);
1792 auto inputs = GetInputs(graph, layerIndex);
1793 CHECK_LOCATION();
1794 CHECK_VALID_SIZE(inputs.size(), 1);
1795
1796 auto outputs = GetOutputs(graph, layerIndex);
1797 CHECK_VALID_SIZE(outputs.size(), 1);
1798
1799 auto layerName = GetLayerName(graph, layerIndex);
1800 IConnectableLayer* layer = m_Network->AddRsqrtLayer(layerName.c_str());
1801
1802 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1803 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1804
1805 RegisterInputSlots(graph, layerIndex, layer);
1806 RegisterOutputSlots(graph, layerIndex, layer);
1807}
1808
Nattapat Chaimanowongb3485212019-03-04 12:35:39 +00001809void Deserializer::ParseStridedSlice(GraphPtr graph, unsigned int layerIndex)
1810{
1811 CHECK_LAYERS(graph, 0, layerIndex);
1812
1813 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1814 CHECK_VALID_SIZE(inputs.size(), 1);
1815
1816 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1817 CHECK_VALID_SIZE(outputs.size(), 1);
1818
1819 auto flatBufferDescriptor = graph->layers()->Get(layerIndex)->layer_as_StridedSliceLayer()->descriptor();
1820
1821 auto flatBufferBegin = flatBufferDescriptor->begin();
1822 auto flatBufferEnd = flatBufferDescriptor->end();
1823 auto flatBufferStride = flatBufferDescriptor->stride();
1824
1825 if (!(flatBufferBegin->Length() == flatBufferEnd->Length() &&
1826 flatBufferBegin->Length() == flatBufferStride->Length()))
1827 {
1828 throw ParseException(boost::str(
1829 boost::format("The size of the begin, end, and stride must be equal %1%") % CHECK_LOCATION().AsString()));
1830 }
1831
1832 std::vector<int> begin(flatBufferBegin->begin(), flatBufferBegin->end());
1833 std::vector<int> end(flatBufferEnd->begin(), flatBufferEnd->end());
1834 std::vector<int> stride(flatBufferStride->begin(), flatBufferStride->end());
1835
1836 armnn::StridedSliceDescriptor descriptor(begin, end, stride);
1837 descriptor.m_BeginMask = flatBufferDescriptor->beginMask();
1838 descriptor.m_EndMask = flatBufferDescriptor->endMask();
1839 descriptor.m_ShrinkAxisMask = flatBufferDescriptor->shrinkAxisMask();
1840 descriptor.m_EllipsisMask = flatBufferDescriptor->ellipsisMask();
1841 descriptor.m_NewAxisMask = flatBufferDescriptor->newAxisMask();
1842 descriptor.m_DataLayout = ToDataLayout(flatBufferDescriptor->dataLayout());
1843
1844 auto layerName = GetLayerName(graph, layerIndex);
1845 IConnectableLayer* layer = m_Network->AddStridedSliceLayer(descriptor, layerName.c_str());
1846
1847 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1848 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1849
1850 RegisterInputSlots(graph, layerIndex, layer);
1851 RegisterOutputSlots(graph, layerIndex, layer);
1852}
1853
Conor Kennedyda1f9752019-03-01 14:37:12 +00001854void Deserializer::ParseSubtraction(GraphPtr graph, unsigned int layerIndex)
1855{
1856 CHECK_LAYERS(graph, 0, layerIndex);
1857 auto inputs = GetInputs(graph, layerIndex);
1858 CHECK_LOCATION();
1859 CHECK_VALID_SIZE(inputs.size(), 2);
1860
1861 auto outputs = GetOutputs(graph, layerIndex);
1862 CHECK_VALID_SIZE(outputs.size(), 1);
1863
1864 auto layerName = GetLayerName(graph, layerIndex);
1865 IConnectableLayer* layer = m_Network->AddSubtractionLayer(layerName.c_str());
1866
1867 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1868 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1869
1870 RegisterInputSlots(graph, layerIndex, layer);
1871 RegisterOutputSlots(graph, layerIndex, layer);
1872}
1873
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +00001874void Deserializer::ParseGather(GraphPtr graph, unsigned int layerIndex)
1875{
1876 CHECK_LAYERS(graph, 0, layerIndex);
1877
1878 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1879 CHECK_VALID_SIZE(inputs.size(), 2);
1880
1881 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1882 CHECK_VALID_SIZE(outputs.size(), 1);
1883
1884 auto layerName = GetLayerName(graph, layerIndex);
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +00001885 IConnectableLayer* layer = m_Network->AddGatherLayer(layerName.c_str());
1886
1887 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +00001888 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1889
1890 RegisterInputSlots(graph, layerIndex, layer);
1891 RegisterOutputSlots(graph, layerIndex, layer);
Saoirse Stewarta1ed73a2019-03-04 13:40:12 +00001892}
1893
Sadik Armaganac97c8c2019-03-04 17:44:21 +00001894void Deserializer::ParseMean(GraphPtr graph, unsigned int layerIndex)
1895{
1896 CHECK_LAYERS(graph, 0, layerIndex);
1897
1898 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1899 CHECK_VALID_SIZE(inputs.size(), 1);
1900
1901 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1902 CHECK_VALID_SIZE(outputs.size(), 1);
1903
1904 auto flatBufferDescriptor = graph->layers()->Get(layerIndex)->layer_as_MeanLayer()->descriptor();
1905 auto flatBufferAxis = flatBufferDescriptor->axis();
1906 auto flatBufferKeepDims = flatBufferDescriptor->keepDims();
1907
1908 armnn::MeanDescriptor descriptor;
1909 descriptor.m_Axis = std::vector<unsigned int>(flatBufferAxis->begin(), flatBufferAxis->end());
1910 descriptor.m_KeepDims = flatBufferKeepDims;
1911
1912 auto layerName = GetLayerName(graph, layerIndex);
1913 IConnectableLayer* layer = m_Network->AddMeanLayer(descriptor, layerName.c_str());
1914
1915 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
1916 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
1917
1918 RegisterInputSlots(graph, layerIndex, layer);
1919 RegisterOutputSlots(graph, layerIndex, layer);
1920}
1921
Jim Flynn18ce3382019-03-08 11:08:30 +00001922void Deserializer::ParseSplitter(GraphPtr graph, unsigned int layerIndex)
1923{
1924 CHECK_LAYERS(graph, 0, layerIndex);
1925
1926 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
1927 CHECK_VALID_SIZE(inputs.size(), 1);
1928
1929 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
1930
1931 auto flatBufferViewsDescriptor = graph->layers()->Get(layerIndex)->layer_as_SplitterLayer()->descriptor();
1932 auto flatBufferViewSizes = flatBufferViewsDescriptor->viewSizes();
1933 auto flatBufferOriginsDescriptor = flatBufferViewsDescriptor->origins();
1934 auto flatBufferViewOrigins = flatBufferOriginsDescriptor->viewOrigins();
1935 uint32_t numViews = flatBufferOriginsDescriptor->numViews();
1936 uint32_t numDimensions = flatBufferOriginsDescriptor->numDimensions();
1937
1938 // Check numViews and numDimensions corresponds to the ones already serialized ...
1939 // numViews == flatBufferViewSizes.size();
1940 // foreach: numDimensions == flatBufferViewSizes[x].size();
1941
1942 armnn::ViewsDescriptor viewsDescriptor(numViews, numDimensions);
1943 for(unsigned int vIdx = 0; vIdx < numViews; ++vIdx)
1944 {
1945 for (unsigned int dIdx = 0; dIdx < numDimensions; ++dIdx)
1946 {
1947 viewsDescriptor.SetViewSize(vIdx, dIdx, flatBufferViewSizes->Get(vIdx)->data()->Get(dIdx));
1948 viewsDescriptor.SetViewOriginCoord(vIdx, dIdx, flatBufferViewOrigins->Get(vIdx)->data()->Get(dIdx));
1949 }
1950 }
1951
1952 auto layerName = GetLayerName(graph, layerIndex);
1953 IConnectableLayer* layer = m_Network->AddSplitterLayer(viewsDescriptor, layerName.c_str());
1954
1955 // I could have as many outputs as views ...
1956 for(unsigned int vIdx = 0; vIdx < numViews; ++vIdx)
1957 {
1958 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[vIdx]);
1959 layer->GetOutputSlot(vIdx).SetTensorInfo(outputTensorInfo);
1960 }
1961
1962 RegisterInputSlots(graph, layerIndex, layer);
1963 RegisterOutputSlots(graph, layerIndex, layer);
1964}
1965
Jim Flynn11af3752019-03-19 17:22:29 +00001966armnn::LstmDescriptor Deserializer::GetLstmDescriptor(Deserializer::LstmDescriptorPtr lstmDescriptor)
1967{
1968 armnn::LstmDescriptor desc;
1969
1970 desc.m_ActivationFunc = lstmDescriptor->activationFunc();
1971 desc.m_ClippingThresCell = lstmDescriptor->clippingThresCell();
1972 desc.m_ClippingThresProj = lstmDescriptor->clippingThresProj();
1973 desc.m_CifgEnabled = lstmDescriptor->cifgEnabled();
1974 desc.m_PeepholeEnabled = lstmDescriptor->peepholeEnabled();
1975 desc.m_ProjectionEnabled = lstmDescriptor->projectionEnabled();
1976
1977 return desc;
1978}
1979
1980void Deserializer::ParseLstm(GraphPtr graph, unsigned int layerIndex)
1981{
1982 CHECK_LAYERS(graph, 0, layerIndex);
1983
1984 auto inputs = GetInputs(graph, layerIndex);
1985 CHECK_VALID_SIZE(inputs.size(), 3);
1986
1987 auto outputs = GetOutputs(graph, layerIndex);
1988 CHECK_VALID_SIZE(outputs.size(), 4);
1989
1990 auto flatBufferLayer = graph->layers()->Get(layerIndex)->layer_as_LstmLayer();
1991 auto layerName = GetLayerName(graph, layerIndex);
1992 auto flatBufferDescriptor = flatBufferLayer->descriptor();
1993 auto flatBufferInputParams = flatBufferLayer->inputParams();
1994
1995 auto lstmDescriptor = GetLstmDescriptor(flatBufferDescriptor);
1996
1997 armnn::LstmInputParams lstmInputParams;
1998
1999 armnn::ConstTensor inputToForgetWeights = ToConstTensor(flatBufferInputParams->inputToForgetWeights());
2000 armnn::ConstTensor inputToCellWeights = ToConstTensor(flatBufferInputParams->inputToCellWeights());
2001 armnn::ConstTensor inputToOutputWeights = ToConstTensor(flatBufferInputParams->inputToOutputWeights());
2002 armnn::ConstTensor recurrentToForgetWeights = ToConstTensor(flatBufferInputParams->recurrentToForgetWeights());
2003 armnn::ConstTensor recurrentToCellWeights = ToConstTensor(flatBufferInputParams->recurrentToCellWeights());
2004 armnn::ConstTensor recurrentToOutputWeights = ToConstTensor(flatBufferInputParams->recurrentToOutputWeights());
2005 armnn::ConstTensor forgetGateBias = ToConstTensor(flatBufferInputParams->forgetGateBias());
2006 armnn::ConstTensor cellBias = ToConstTensor(flatBufferInputParams->cellBias());
2007 armnn::ConstTensor outputGateBias = ToConstTensor(flatBufferInputParams->outputGateBias());
2008
2009 lstmInputParams.m_InputToForgetWeights = &inputToForgetWeights;
2010 lstmInputParams.m_InputToCellWeights = &inputToCellWeights;
2011 lstmInputParams.m_InputToOutputWeights = &inputToOutputWeights;
2012 lstmInputParams.m_RecurrentToForgetWeights = &recurrentToForgetWeights;
2013 lstmInputParams.m_RecurrentToCellWeights = &recurrentToCellWeights;
2014 lstmInputParams.m_RecurrentToOutputWeights = &recurrentToOutputWeights;
2015 lstmInputParams.m_ForgetGateBias = &forgetGateBias;
2016 lstmInputParams.m_CellBias = &cellBias;
2017 lstmInputParams.m_OutputGateBias = &outputGateBias;
2018
2019 armnn::ConstTensor inputToInputWeights;
2020 armnn::ConstTensor recurrentToInputWeights;
2021 armnn::ConstTensor cellToInputWeights;
2022 armnn::ConstTensor inputGateBias;
2023 if (!lstmDescriptor.m_CifgEnabled)
2024 {
2025 inputToInputWeights = ToConstTensor(flatBufferInputParams->inputToInputWeights());
2026 recurrentToInputWeights = ToConstTensor(flatBufferInputParams->recurrentToInputWeights());
2027 cellToInputWeights = ToConstTensor(flatBufferInputParams->cellToInputWeights());
2028 inputGateBias = ToConstTensor(flatBufferInputParams->inputGateBias());
2029
2030 lstmInputParams.m_InputToInputWeights = &inputToInputWeights;
2031 lstmInputParams.m_RecurrentToInputWeights = &recurrentToInputWeights;
2032 lstmInputParams.m_CellToInputWeights = &cellToInputWeights;
2033 lstmInputParams.m_InputGateBias = &inputGateBias;
2034 }
2035
2036 armnn::ConstTensor projectionWeights;
2037 armnn::ConstTensor projectionBias;
2038 if (lstmDescriptor.m_ProjectionEnabled)
2039 {
2040 projectionWeights = ToConstTensor(flatBufferInputParams->projectionWeights());
2041 projectionBias = ToConstTensor(flatBufferInputParams->projectionBias());
2042
2043 lstmInputParams.m_ProjectionWeights = &projectionWeights;
2044 lstmInputParams.m_ProjectionBias = &projectionBias;
2045 }
2046
2047 armnn::ConstTensor cellToForgetWeights;
2048 armnn::ConstTensor cellToOutputWeights;
2049 if (lstmDescriptor.m_PeepholeEnabled)
2050 {
2051 cellToForgetWeights = ToConstTensor(flatBufferInputParams->cellToForgetWeights());
2052 cellToOutputWeights = ToConstTensor(flatBufferInputParams->cellToOutputWeights());
2053
2054 lstmInputParams.m_CellToForgetWeights = &cellToForgetWeights;
2055 lstmInputParams.m_CellToOutputWeights = &cellToOutputWeights;
2056 }
2057
2058 IConnectableLayer* layer = m_Network->AddLstmLayer(lstmDescriptor, lstmInputParams, layerName.c_str());
2059
2060 armnn::TensorInfo outputTensorInfo1 = ToTensorInfo(outputs[0]);
2061 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo1);
2062
2063 armnn::TensorInfo outputTensorInfo2 = ToTensorInfo(outputs[1]);
2064 layer->GetOutputSlot(1).SetTensorInfo(outputTensorInfo2);
2065
2066 armnn::TensorInfo outputTensorInfo3 = ToTensorInfo(outputs[2]);
2067 layer->GetOutputSlot(2).SetTensorInfo(outputTensorInfo3);
2068
2069 armnn::TensorInfo outputTensorInfo4 = ToTensorInfo(outputs[3]);
2070 layer->GetOutputSlot(3).SetTensorInfo(outputTensorInfo4);
2071
2072 RegisterInputSlots(graph, layerIndex, layer);
2073 RegisterOutputSlots(graph, layerIndex, layer);
2074}
2075
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +00002076void Deserializer::ParseDequantize(GraphPtr graph, unsigned int layerIndex)
2077{
2078 CHECK_LAYERS(graph, 0, layerIndex);
2079
2080 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
2081 CHECK_VALID_SIZE(inputs.size(), 1);
2082
2083 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
2084 CHECK_VALID_SIZE(outputs.size(), 1);
2085
2086 const std::string layerName = GetLayerName(graph, layerIndex);
2087 IConnectableLayer* layer = m_Network->AddDequantizeLayer(layerName.c_str());
2088
2089 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
2090 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
2091
2092 RegisterInputSlots(graph, layerIndex, layer);
2093 RegisterOutputSlots(graph, layerIndex, layer);
2094}
2095
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +01002096void Deserializer::ParseMerge(GraphPtr graph, unsigned int layerIndex)
2097{
2098 CHECK_LAYERS(graph, 0, layerIndex);
2099
2100 Deserializer::TensorRawPtrVector inputs = GetInputs(graph, layerIndex);
2101 CHECK_VALID_SIZE(inputs.size(), 2);
2102
2103 Deserializer::TensorRawPtrVector outputs = GetOutputs(graph, layerIndex);
2104 CHECK_VALID_SIZE(outputs.size(), 1);
2105
2106 const std::string layerName = GetLayerName(graph, layerIndex);
2107 IConnectableLayer* layer = m_Network->AddMergeLayer(layerName.c_str());
2108
2109 armnn::TensorInfo outputTensorInfo = ToTensorInfo(outputs[0]);
2110 layer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo);
2111
2112 RegisterInputSlots(graph, layerIndex, layer);
2113 RegisterOutputSlots(graph, layerIndex, layer);
2114}
2115
Sadik Armaganeff363d2019-04-05 15:25:46 +01002116void Deserializer::ParseSwitch(GraphPtr graph, unsigned int layerIndex)
2117{
2118 CHECK_LAYERS(graph, 0, layerIndex);
2119 auto inputs = GetInputs(graph, layerIndex);
2120 CHECK_LOCATION();
2121 CHECK_VALID_SIZE(inputs.size(), 2);
2122
2123 auto outputs = GetOutputs(graph, layerIndex);
2124 CHECK_VALID_SIZE(outputs.size(), 2);
2125
2126 auto layerName = GetLayerName(graph, layerIndex);
2127 IConnectableLayer* layer = m_Network->AddSwitchLayer(layerName.c_str());
2128
2129 armnn::TensorInfo output0TensorInfo = ToTensorInfo(outputs[0]);
2130 layer->GetOutputSlot(0).SetTensorInfo(output0TensorInfo);
2131
2132 armnn::TensorInfo output1TensorInfo = ToTensorInfo(outputs[1]);
2133 layer->GetOutputSlot(1).SetTensorInfo(output1TensorInfo);
2134
2135 RegisterInputSlots(graph, layerIndex, layer);
2136 RegisterOutputSlots(graph, layerIndex, layer);
2137}
2138
Derek Lamberti0028d1b2019-02-20 13:57:42 +00002139} // namespace armnnDeserializer