183 lines
9.2 KiB
C++
183 lines
9.2 KiB
C++
// Copyright (C) 2018-2020 Intel Corporation
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// SPDX-License-Identifier: Apache-2.0
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//
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#include <vector>
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#include <memory>
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#include <string>
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#include <ie_core.hpp>
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#include <ngraph/function.hpp>
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#include <ngraph/op/experimental/layers/detection_output.hpp>
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#include <samples/ocv_common.hpp>
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#include "reshape_ssd_extension.hpp"
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using namespace InferenceEngine;
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int main(int argc, char* argv[]) {
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try {
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// ------------------------------ Parsing and validation of input args ---------------------------------
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if (argc != 5) {
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std::cout << "Usage : ./hello_reshape_ssd <path_to_model> <path_to_image> <device> <batch>"
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<< std::endl;
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return EXIT_FAILURE;
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}
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const std::string input_model{argv[1]};
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const std::string input_image_path{argv[2]};
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const std::string device_name{argv[3]};
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const size_t batch_size{std::stoul(argv[4])};
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 1. Load inference engine -------------------------------------
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Core ie;
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IExtensionPtr inPlaceExtension;
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if (device_name.find("CPU") != std::string::npos) {
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inPlaceExtension = std::make_shared<InPlaceExtension>();
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// register sample's custom kernel (CustomReLU)
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ie.AddExtension(inPlaceExtension);
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}
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 2. Read IR Generated by ModelOptimizer (.xml and .bin files) ------------
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CNNNetwork network = ie.ReadNetwork(input_model);
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OutputsDataMap outputs_info(network.getOutputsInfo());
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InputsDataMap inputs_info(network.getInputsInfo());
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if (inputs_info.size() != 1 && outputs_info.size() != 1)
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throw std::logic_error("Sample supports clean SSD network with one input and one output");
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// --------------------------- Resize network to match image sizes and given batch----------------------
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auto input_shapes = network.getInputShapes();
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std::string input_name;
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SizeVector input_shape;
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std::tie(input_name, input_shape) = *input_shapes.begin();
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cv::Mat image = cv::imread(input_image_path);
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input_shape[0] = batch_size;
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input_shape[2] = static_cast<size_t>(image.rows);
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input_shape[3] = static_cast<size_t>(image.cols);
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input_shapes[input_name] = input_shape;
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std::cout << "Resizing network to the image size = [" << image.rows << "x" << image.cols << "] "
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<< "with batch = " << batch_size << std::endl;
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network.reshape(input_shapes);
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 3. Configure input & output ---------------------------------------------
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// --------------------------- Prepare input blobs -----------------------------------------------------
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InputInfo::Ptr input_info;
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std::tie(input_name, input_info) = *inputs_info.begin();
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input_info->setLayout(Layout::NCHW);
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input_info->setPrecision(Precision::U8);
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// --------------------------- Prepare output blobs ----------------------------------------------------
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DataPtr output_info;
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std::string output_name;
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std::tie(output_name, output_info) = *outputs_info.begin();
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if (auto ngraphFunction = network.getFunction()) {
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for (const auto & op : ngraphFunction->get_ops()) {
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if (op->get_type_info() == ngraph::op::DetectionOutput::type_info) {
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if (output_info->getName() != op->get_friendly_name()) {
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throw std::logic_error("Detection output op does not produce a network output");
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}
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break;
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}
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}
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}
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const SizeVector output_shape = output_info->getTensorDesc().getDims();
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const size_t max_proposal_count = output_shape[2];
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const size_t object_size = output_shape[3];
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if (object_size != 7) {
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throw std::logic_error("Output item should have 7 as a last dimension");
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}
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if (output_shape.size() != 4) {
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throw std::logic_error("Incorrect output dimensions for SSD model");
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}
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if (output_info == nullptr) {
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THROW_IE_EXCEPTION << "[SAMPLES] internal error - output information is empty";
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}
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output_info->setPrecision(Precision::FP32);
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auto dumpVec = [](const SizeVector& vec) -> std::string {
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if (vec.empty()) return "[]";
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std::stringstream oss;
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oss << "[" << vec[0];
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for (size_t i = 1; i < vec.size(); i++) oss << "," << vec[i];
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oss << "]";
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return oss.str();
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};
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std::cout << "Resulting input shape = " << dumpVec(input_shape) << std::endl;
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std::cout << "Resulting output shape = " << dumpVec(output_shape) << std::endl;
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 4. Loading model to the device ------------------------------------------
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ExecutableNetwork executable_network = ie.LoadNetwork(network, device_name);
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 5. Create infer request -------------------------------------------------
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InferRequest infer_request = executable_network.CreateInferRequest();
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 6. Prepare input --------------------------------------------------------
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Blob::Ptr input = infer_request.GetBlob(input_name);
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for (size_t b = 0; b < batch_size; b++) {
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matU8ToBlob<uint8_t>(image, input, b);
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}
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 7. Do inference --------------------------------------------------------
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infer_request.Infer();
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// -----------------------------------------------------------------------------------------------------
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// --------------------------- 8. Process output ------------------------------------------------------
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Blob::Ptr output = infer_request.GetBlob(output_name);
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MemoryBlob::CPtr moutput = as<MemoryBlob>(output);
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if (!moutput) {
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throw std::logic_error("We expect output to be inherited from MemoryBlob, "
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"but by fact we were not able to cast output to MemoryBlob");
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}
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// locked memory holder should be alive all time while access to its buffer happens
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auto moutputHolder = moutput->rmap();
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const float *detection = moutputHolder.as<const float *>();
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/* Each detection has image_id that denotes processed image */
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for (size_t cur_proposal = 0; cur_proposal < max_proposal_count; cur_proposal++) {
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float image_id = detection[cur_proposal * object_size + 0];
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float label = detection[cur_proposal * object_size + 1];
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float confidence = detection[cur_proposal * object_size + 2];
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/* CPU and GPU devices have difference in DetectionOutput layer, so we need both checks */
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if (image_id < 0 || confidence == 0.0f) {
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continue;
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}
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float xmin = detection[cur_proposal * object_size + 3] * image.cols;
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float ymin = detection[cur_proposal * object_size + 4] * image.rows;
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float xmax = detection[cur_proposal * object_size + 5] * image.cols;
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float ymax = detection[cur_proposal * object_size + 6] * image.rows;
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if (confidence > 0.5f) {
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/** Drawing only objects with >50% probability **/
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std::ostringstream conf;
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conf << ":" << std::fixed << std::setprecision(3) << confidence;
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cv::rectangle(image, cv::Point2f(xmin, ymin), cv::Point2f(xmax, ymax), cv::Scalar(0, 0, 255));
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std::cout << "[" << cur_proposal << "," << label << "] element, prob = " << confidence <<
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", bbox = (" << xmin << "," << ymin << ")-(" << xmax << "," << ymax << ")" << ", batch id = "
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<< image_id << std::endl;
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}
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}
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cv::imwrite("hello_reshape_ssd_output.jpg", image);
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std::cout << "The resulting image was saved in the file: hello_reshape_ssd_output.jpg" << std::endl;
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// -----------------------------------------------------------------------------------------------------
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} catch (const std::exception& ex) {
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std::cerr << ex.what() << std::endl;
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return EXIT_FAILURE;
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}
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std::cout << std::endl << "This sample is an API example, for any performance measurements "
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"please use the dedicated benchmark_app tool" << std::endl;
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return EXIT_SUCCESS;
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}
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