| /* |
| * Copyright (c) 2017 ARM Limited. |
| * |
| * SPDX-License-Identifier: MIT |
| * |
| * Permission is hereby granted, free of charge, to any person obtaining a copy |
| * of this software and associated documentation files (the "Software"), to |
| * deal in the Software without restriction, including without limitation the |
| * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or |
| * sell copies of the Software, and to permit persons to whom the Software is |
| * furnished to do so, subject to the following conditions: |
| * |
| * The above copyright notice and this permission notice shall be included in all |
| * copies or substantial portions of the Software. |
| * |
| * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR |
| * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, |
| * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE |
| * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER |
| * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, |
| * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE |
| * SOFTWARE. |
| */ |
| #include "arm_compute/graph/Graph.h" |
| #include "arm_compute/graph/Nodes.h" |
| #include "arm_compute/graph/SubGraph.h" |
| #include "support/ToolchainSupport.h" |
| #include "utils/GraphUtils.h" |
| #include "utils/Utils.h" |
| |
| #include <cstdlib> |
| #include <tuple> |
| |
| using namespace arm_compute::graph; |
| using namespace arm_compute::graph_utils; |
| |
| BranchLayer get_inception_node(const std::string &data_path, std::string &¶m_path, |
| unsigned int a_filt, |
| std::tuple<unsigned int, unsigned int> b_filters, |
| std::tuple<unsigned int, unsigned int> c_filters, |
| unsigned int d_filt) |
| { |
| std::string total_path = "/cnn_data/googlenet_model/" + param_path + "/" + param_path + "_"; |
| SubGraph i_a; |
| i_a << ConvolutionLayer( |
| 1U, 1U, a_filt, |
| get_weights_accessor(data_path, total_path + "1x1_w.npy"), |
| get_weights_accessor(data_path, total_path + "1x1_b.npy"), |
| PadStrideInfo(1, 1, 0, 0)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)); |
| |
| SubGraph i_b; |
| i_b << ConvolutionLayer( |
| 1U, 1U, std::get<0>(b_filters), |
| get_weights_accessor(data_path, total_path + "3x3_reduce_w.npy"), |
| get_weights_accessor(data_path, total_path + "3x3_reduce_b.npy"), |
| PadStrideInfo(1, 1, 0, 0)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)) |
| << ConvolutionLayer( |
| 3U, 3U, std::get<1>(b_filters), |
| get_weights_accessor(data_path, total_path + "3x3_w.npy"), |
| get_weights_accessor(data_path, total_path + "3x3_b.npy"), |
| PadStrideInfo(1, 1, 1, 1)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)); |
| |
| SubGraph i_c; |
| i_c << ConvolutionLayer( |
| 1U, 1U, std::get<0>(c_filters), |
| get_weights_accessor(data_path, total_path + "5x5_reduce_w.npy"), |
| get_weights_accessor(data_path, total_path + "5x5_reduce_b.npy"), |
| PadStrideInfo(1, 1, 0, 0)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)) |
| << ConvolutionLayer( |
| 5U, 5U, std::get<1>(c_filters), |
| get_weights_accessor(data_path, total_path + "5x5_w.npy"), |
| get_weights_accessor(data_path, total_path + "5x5_b.npy"), |
| PadStrideInfo(1, 1, 2, 2)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)); |
| |
| SubGraph i_d; |
| i_d << PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 3, PadStrideInfo(1, 1, 1, 1, DimensionRoundingType::CEIL))) |
| << ConvolutionLayer( |
| 1U, 1U, d_filt, |
| get_weights_accessor(data_path, total_path + "pool_proj_w.npy"), |
| get_weights_accessor(data_path, total_path + "pool_proj_b.npy"), |
| PadStrideInfo(1, 1, 0, 0)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)); |
| |
| return BranchLayer(BranchMergeMethod::DEPTH_CONCATENATE, std::move(i_a), std::move(i_b), std::move(i_c), std::move(i_d)); |
| } |
| |
| /** Example demonstrating how to implement Googlenet's network using the Compute Library's graph API |
| * |
| * @param[in] argc Number of arguments |
| * @param[in] argv Arguments ( [optional] Path to the weights folder, [optional] image, [optional] labels ) |
| */ |
| void main_graph_googlenet(int argc, const char **argv) |
| { |
| std::string data_path; /* Path to the trainable data */ |
| std::string image; /* Image data */ |
| std::string label; /* Label data */ |
| |
| constexpr float mean_r = 122.68f; /* Mean value to subtract from red channel */ |
| constexpr float mean_g = 116.67f; /* Mean value to subtract from green channel */ |
| constexpr float mean_b = 104.01f; /* Mean value to subtract from blue channel */ |
| |
| // Parse arguments |
| if(argc < 2) |
| { |
| // Print help |
| std::cout << "Usage: " << argv[0] << " [path_to_data] [image] [labels]\n\n"; |
| std::cout << "No data folder provided: using random values\n\n"; |
| } |
| else if(argc == 2) |
| { |
| //Do something with argv[1] |
| data_path = argv[1]; |
| std::cout << "Usage: " << argv[0] << " " << argv[1] << " [image] [labels]\n\n"; |
| std::cout << "No image provided: using random values\n"; |
| } |
| else if(argc == 3) |
| { |
| data_path = argv[1]; |
| image = argv[2]; |
| std::cout << "Usage: " << argv[0] << " " << argv[1] << " " << argv[2] << " [labels]\n\n"; |
| std::cout << "No text file with labels provided: skipping output accessor\n"; |
| } |
| else |
| { |
| data_path = argv[1]; |
| image = argv[2]; |
| label = argv[3]; |
| } |
| |
| // Check if OpenCL is available and initialize the scheduler |
| TargetHint hint = TargetHint::NEON; |
| if(Graph::opencl_is_available()) |
| { |
| hint = TargetHint::OPENCL; |
| } |
| |
| Graph graph; |
| |
| graph << hint |
| << Tensor(TensorInfo(TensorShape(224U, 224U, 3U, 1U), 1, DataType::F32), |
| get_input_accessor(image, mean_r, mean_g, mean_b)) |
| << ConvolutionLayer( |
| 7U, 7U, 64U, |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/conv1/conv1_7x7_s2_w.npy"), |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/conv1/conv1_7x7_s2_b.npy"), |
| PadStrideInfo(2, 2, 3, 3)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)) |
| << PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 3, PadStrideInfo(2, 2, 0, 0, DimensionRoundingType::CEIL))) |
| << NormalizationLayer(NormalizationLayerInfo(NormType::CROSS_MAP, 5, 0.0001f, 0.75f)) |
| << ConvolutionLayer( |
| 1U, 1U, 64U, |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/conv2/conv2_3x3_reduce_w.npy"), |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/conv2/conv2_3x3_reduce_b.npy"), |
| PadStrideInfo(1, 1, 0, 0)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)) |
| << ConvolutionLayer( |
| 3U, 3U, 192U, |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/conv2/conv2_3x3_w.npy"), |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/conv2/conv2_3x3_b.npy"), |
| PadStrideInfo(1, 1, 1, 1)) |
| << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)) |
| << NormalizationLayer(NormalizationLayerInfo(NormType::CROSS_MAP, 5, 0.0001f, 0.75f)) |
| << PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 3, PadStrideInfo(2, 2, 0, 0, DimensionRoundingType::CEIL))) |
| << get_inception_node(data_path, "inception_3a", 64, std::make_tuple(96U, 128U), std::make_tuple(16U, 32U), 32U) |
| << get_inception_node(data_path, "inception_3b", 128, std::make_tuple(128U, 192U), std::make_tuple(32U, 96U), 64U) |
| << PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 3, PadStrideInfo(2, 2, 0, 0, DimensionRoundingType::CEIL))) |
| << get_inception_node(data_path, "inception_4a", 192, std::make_tuple(96U, 208U), std::make_tuple(16U, 48U), 64U) |
| << get_inception_node(data_path, "inception_4b", 160, std::make_tuple(112U, 224U), std::make_tuple(24U, 64U), 64U) |
| << get_inception_node(data_path, "inception_4c", 128, std::make_tuple(128U, 256U), std::make_tuple(24U, 64U), 64U) |
| << get_inception_node(data_path, "inception_4d", 112, std::make_tuple(144U, 288U), std::make_tuple(32U, 64U), 64U) |
| << get_inception_node(data_path, "inception_4e", 256, std::make_tuple(160U, 320U), std::make_tuple(32U, 128U), 128U) |
| << PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 3, PadStrideInfo(2, 2, 0, 0, DimensionRoundingType::CEIL))) |
| << get_inception_node(data_path, "inception_5a", 256, std::make_tuple(160U, 320U), std::make_tuple(32U, 128U), 128U) |
| << get_inception_node(data_path, "inception_5b", 384, std::make_tuple(192U, 384U), std::make_tuple(48U, 128U), 128U) |
| << PoolingLayer(PoolingLayerInfo(PoolingType::AVG, 7, PadStrideInfo(1, 1, 0, 0, DimensionRoundingType::CEIL))) |
| << FullyConnectedLayer( |
| 1000U, |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/loss3/loss3_classifier_w.npy"), |
| get_weights_accessor(data_path, "/cnn_data/googlenet_model/loss3/loss3_classifier_b.npy")) |
| << SoftmaxLayer() |
| << Tensor(get_output_accessor(label, 5)); |
| |
| graph.run(); |
| } |
| |
| /** Main program for Googlenet |
| * |
| * @param[in] argc Number of arguments |
| * @param[in] argv Arguments ( [optional] Path to the weights folder, [optional] image, [optional] labels ) |
| */ |
| int main(int argc, const char **argv) |
| { |
| return arm_compute::utils::run_example(argc, argv, main_graph_googlenet); |
| } |