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/*
* Copyright (c) 2017-2018 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.h"
#include "support/ToolchainSupport.h"
#include "utils/GraphUtils.h"
#include "utils/Utils.h"
#include <cstdlib>
using namespace arm_compute::utils;
using namespace arm_compute::graph::frontend;
using namespace arm_compute::graph_utils;
/** Example demonstrating how to implement Microsoft's ResNet50 network using the Compute Library's graph API
*
* @param[in] argc Number of arguments
* @param[in] argv Arguments ( [optional] Target (0 = NEON, 1 = OpenCL), [optional] Path to the weights folder, [optional] image, [optional] labels )
*/
class GraphResNet50Example : public Example
{
public:
void do_setup(int argc, char **argv) override
{
std::string data_path; /* Path to the trainable data */
std::string image; /* Image data */
std::string label; /* Label data */
// Create a preprocessor object
const std::array<float, 3> mean_rgb{ { 122.68f, 116.67f, 104.01f } };
std::unique_ptr<IPreprocessor> preprocessor = arm_compute::support::cpp14::make_unique<CaffePreproccessor>(mean_rgb,
false /* Do not convert to BGR */);
// Set target. 0 (NEON), 1 (OpenCL), 2 (OpenCL with Tuner). By default it is NEON
const int target = argc > 1 ? std::strtol(argv[1], nullptr, 10) : 0;
Target target_hint = set_target_hint(target);
ConvolutionMethod convolution_hint = (target_hint == Target::CL) ? ConvolutionMethod::WINOGRAD : ConvolutionMethod::GEMM;
// Parse arguments
if(argc < 2)
{
// Print help
std::cout << "Usage: " << argv[0] << " [target] [path_to_data] [image] [labels]\n\n";
std::cout << "No data folder provided: using random values\n\n";
}
else if(argc == 2)
{
std::cout << "Usage: " << argv[0] << " " << argv[1] << " [path_to_data] [image] [labels]\n\n";
std::cout << "No data folder provided: using random values\n\n";
}
else if(argc == 3)
{
data_path = argv[2];
std::cout << "Usage: " << argv[0] << " " << argv[1] << " " << argv[2] << " [image] [labels]\n\n";
std::cout << "No image provided: using random values\n\n";
}
else if(argc == 4)
{
data_path = argv[2];
image = argv[3];
std::cout << "Usage: " << argv[0] << " " << argv[1] << " " << argv[2] << " " << argv[3] << " [labels]\n\n";
std::cout << "No text file with labels provided: skipping output accessor\n\n";
}
else
{
data_path = argv[2];
image = argv[3];
label = argv[4];
}
graph << target_hint
<< InputLayer(TensorDescriptor(TensorShape(224U, 224U, 3U, 1U), DataType::F32),
get_input_accessor(image, std::move(preprocessor), false /* Do not convert to BGR */))
<< ConvolutionLayer(
7U, 7U, 64U,
get_weights_accessor(data_path, "/cnn_data/resnet50_model/conv1_weights.npy"),
std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
PadStrideInfo(2, 2, 3, 3))
<< convolution_hint
<< BatchNormalizationLayer(
get_weights_accessor(data_path, "/cnn_data/resnet50_model/conv1_BatchNorm_moving_mean.npy"),
get_weights_accessor(data_path, "/cnn_data/resnet50_model/conv1_BatchNorm_moving_variance.npy"),
get_weights_accessor(data_path, "/cnn_data/resnet50_model/conv1_BatchNorm_gamma.npy"),
get_weights_accessor(data_path, "/cnn_data/resnet50_model/conv1_BatchNorm_beta.npy"),
0.0000100099996416f)
<< ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU))
<< PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 3, PadStrideInfo(2, 2, 0, 1, 0, 1, DimensionRoundingType::FLOOR)));
add_residual_block(data_path, "block1", 64, 3, 2);
add_residual_block(data_path, "block2", 128, 4, 2);
add_residual_block(data_path, "block3", 256, 6, 2);
add_residual_block(data_path, "block4", 512, 3, 1);
graph << PoolingLayer(PoolingLayerInfo(PoolingType::AVG))
<< ConvolutionLayer(
1U, 1U, 1000U,
get_weights_accessor(data_path, "/cnn_data/resnet50_model/logits_weights.npy"),
get_weights_accessor(data_path, "/cnn_data/resnet50_model/logits_biases.npy"),
PadStrideInfo(1, 1, 0, 0))
<< FlattenLayer()
<< SoftmaxLayer()
<< OutputLayer(get_output_accessor(label, 5));
// Finalize graph
GraphConfig config;
config.use_function_memory_manager = true;
config.use_tuner = (target == 2);
graph.finalize(target_hint, config);
}
void do_run() override
{
// Run graph
graph.run();
}
private:
Stream graph{ 0, "ResNet50" };
void add_residual_block(const std::string &data_path, const std::string &name, unsigned int base_depth, unsigned int num_units, unsigned int stride)
{
for(unsigned int i = 0; i < num_units; ++i)
{
std::stringstream unit;
unit << "/cnn_data/resnet50_model/" << name << "_unit_" << (i + 1) << "_bottleneck_v1_";
std::string unit_name = unit.str();
unsigned int middle_stride = 1;
if(i == (num_units - 1))
{
middle_stride = stride;
}
SubStream right(graph);
right << ConvolutionLayer(
1U, 1U, base_depth,
get_weights_accessor(data_path, unit_name + "conv1_weights.npy"),
std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
PadStrideInfo(1, 1, 0, 0))
<< BatchNormalizationLayer(
get_weights_accessor(data_path, unit_name + "conv1_BatchNorm_moving_mean.npy"),
get_weights_accessor(data_path, unit_name + "conv1_BatchNorm_moving_variance.npy"),
get_weights_accessor(data_path, unit_name + "conv1_BatchNorm_gamma.npy"),
get_weights_accessor(data_path, unit_name + "conv1_BatchNorm_beta.npy"),
0.0000100099996416f)
<< ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU))
<< ConvolutionLayer(
3U, 3U, base_depth,
get_weights_accessor(data_path, unit_name + "conv2_weights.npy"),
std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
PadStrideInfo(middle_stride, middle_stride, 1, 1))
<< BatchNormalizationLayer(
get_weights_accessor(data_path, unit_name + "conv2_BatchNorm_moving_mean.npy"),
get_weights_accessor(data_path, unit_name + "conv2_BatchNorm_moving_variance.npy"),
get_weights_accessor(data_path, unit_name + "conv2_BatchNorm_gamma.npy"),
get_weights_accessor(data_path, unit_name + "conv2_BatchNorm_beta.npy"),
0.0000100099996416f)
<< ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU))
<< ConvolutionLayer(
1U, 1U, base_depth * 4,
get_weights_accessor(data_path, unit_name + "conv3_weights.npy"),
std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
PadStrideInfo(1, 1, 0, 0))
<< BatchNormalizationLayer(
get_weights_accessor(data_path, unit_name + "conv3_BatchNorm_moving_mean.npy"),
get_weights_accessor(data_path, unit_name + "conv3_BatchNorm_moving_variance.npy"),
get_weights_accessor(data_path, unit_name + "conv3_BatchNorm_gamma.npy"),
get_weights_accessor(data_path, unit_name + "conv3_BatchNorm_beta.npy"),
0.0000100099996416f);
if(i == 0)
{
SubStream left(graph);
left << ConvolutionLayer(
1U, 1U, base_depth * 4,
get_weights_accessor(data_path, unit_name + "shortcut_weights.npy"),
std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
PadStrideInfo(1, 1, 0, 0))
<< BatchNormalizationLayer(
get_weights_accessor(data_path, unit_name + "shortcut_BatchNorm_moving_mean.npy"),
get_weights_accessor(data_path, unit_name + "shortcut_BatchNorm_moving_variance.npy"),
get_weights_accessor(data_path, unit_name + "shortcut_BatchNorm_gamma.npy"),
get_weights_accessor(data_path, unit_name + "shortcut_BatchNorm_beta.npy"),
0.0000100099996416f);
graph << BranchLayer(BranchMergeMethod::ADD, std::move(left), std::move(right));
}
else if(middle_stride > 1)
{
SubStream left(graph);
left << PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 1, PadStrideInfo(middle_stride, middle_stride, 0, 0), true));
graph << BranchLayer(BranchMergeMethod::ADD, std::move(left), std::move(right));
}
else
{
SubStream left(graph);
graph << BranchLayer(BranchMergeMethod::ADD, std::move(left), std::move(right));
}
graph << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU));
}
}
};
/** Main program for ResNet50
*
* @param[in] argc Number of arguments
* @param[in] argv Arguments ( [optional] Target (0 = NEON, 1 = OpenCL), [optional] Path to the weights folder, [optional] image, [optional] labels )
*/
int main(int argc, char **argv)
{
return arm_compute::utils::run_example<GraphResNet50Example>(argc, argv);
}