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- // Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
- //
- // Licensed under the Apache License, Version 2.0 (the "License");
- // you may not use this file except in compliance with the License.
- // You may obtain a copy of the License at
- //
- // http://www.apache.org/licenses/LICENSE-2.0
- //
- // Unless required by applicable law or agreed to in writing, software
- // distributed under the License is distributed on an "AS IS" BASIS,
- // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
- // See the License for the specific language governing permissions and
- // limitations under the License.
- #include "include/paddlex/paddlex.h"
- namespace PaddleX {
- void Model::create_predictor(const std::string& model_dir,
- bool use_gpu,
- bool use_trt,
- int gpu_id,
- std::string key) {
- // 读取配置文件
- if (!load_config(model_dir)) {
- std::cerr << "Parse file 'model.yml' failed!" << std::endl;
- exit(-1);
- }
- paddle::AnalysisConfig config;
- std::string model_file = model_dir + OS_PATH_SEP + "__model__";
- std::string params_file = model_dir + OS_PATH_SEP + "__params__";
- #ifdef WITH_ENCRYPTION
- if (key != ""){
- model_file = model_dir + OS_PATH_SEP + "__model__.encrypted";
- params_file = model_dir + OS_PATH_SEP + "__params__.encrypted";
- paddle_security_load_model(&config, key.c_str(), model_file.c_str(), params_file.c_str());
- }
- #endif
- if (key == ""){
- config.SetModel(model_file, params_file);
- }
- if (use_gpu) {
- config.EnableUseGpu(100, gpu_id);
- } else {
- config.DisableGpu();
- }
- config.SwitchUseFeedFetchOps(false);
- config.SwitchSpecifyInputNames(true);
- // 开启内存优化
- config.EnableMemoryOptim();
- if (use_trt) {
- config.EnableTensorRtEngine(
- 1 << 20 /* workspace_size*/,
- 32 /* max_batch_size*/,
- 20 /* min_subgraph_size*/,
- paddle::AnalysisConfig::Precision::kFloat32 /* precision*/,
- true /* use_static*/,
- false /* use_calib_mode*/);
- }
- predictor_ = std::move(CreatePaddlePredictor(config));
- }
- bool Model::load_config(const std::string& model_dir) {
- std::string yaml_file = model_dir + OS_PATH_SEP + "model.yml";
- YAML::Node config = YAML::LoadFile(yaml_file);
- type = config["_Attributes"]["model_type"].as<std::string>();
- name = config["Model"].as<std::string>();
- std::string version = config["version"].as<std::string>();
- if (version[0] == '0') {
- std::cerr << "[Init] Version of the loaded model is lower than 1.0.0, deployment "
- << "cannot be done, please refer to "
- << "https://github.com/PaddlePaddle/PaddleX/blob/develop/docs/tutorials/deploy/upgrade_version.md "
- << "to transfer version."
- << std::endl;
- return false;
- }
- bool to_rgb = true;
- if (config["TransformsMode"].IsDefined()) {
- std::string mode = config["TransformsMode"].as<std::string>();
- if (mode == "BGR") {
- to_rgb = false;
- } else if (mode != "RGB") {
- std::cerr << "[Init] Only 'RGB' or 'BGR' is supported for TransformsMode"
- << std::endl;
- return false;
- }
- }
- // 构建数据处理流
- transforms_.Init(config["Transforms"], to_rgb);
- // 读入label list
- labels.clear();
- for (const auto& item : config["_Attributes"]["labels"]) {
- int index = labels.size();
- labels[index] = item.as<std::string>();
- }
- return true;
- }
- bool Model::preprocess(const cv::Mat& input_im, ImageBlob* blob) {
- cv::Mat im = input_im.clone();
- if (!transforms_.Run(&im, &inputs_)) {
- return false;
- }
- return true;
- }
- bool Model::predict(const cv::Mat& im, ClsResult* result) {
- inputs_.clear();
- if (type == "detector") {
- std::cerr << "Loading model is a 'detector', DetResult should be passed to "
- "function predict()!"
- << std::endl;
- return false;
- } else if (type == "segmenter") {
- std::cerr << "Loading model is a 'segmenter', SegResult should be passed "
- "to function predict()!"
- << std::endl;
- return false;
- }
- // 处理输入图像
- if (!preprocess(im, &inputs_)) {
- std::cerr << "Preprocess failed!" << std::endl;
- return false;
- }
- // 使用加载的模型进行预测
- auto in_tensor = predictor_->GetInputTensor("image");
- int h = inputs_.new_im_size_[0];
- int w = inputs_.new_im_size_[1];
- in_tensor->Reshape({1, 3, h, w});
- in_tensor->copy_from_cpu(inputs_.im_data_.data());
- predictor_->ZeroCopyRun();
- // 取出模型的输出结果
- auto output_names = predictor_->GetOutputNames();
- auto output_tensor = predictor_->GetOutputTensor(output_names[0]);
- std::vector<int> output_shape = output_tensor->shape();
- int size = 1;
- for (const auto& i : output_shape) {
- size *= i;
- }
- outputs_.resize(size);
- output_tensor->copy_to_cpu(outputs_.data());
- // 对模型输出结果进行后处理
- auto ptr = std::max_element(std::begin(outputs_), std::end(outputs_));
- result->category_id = std::distance(std::begin(outputs_), ptr);
- result->score = *ptr;
- result->category = labels[result->category_id];
- }
- bool Model::predict(const cv::Mat& im, DetResult* result) {
- result->clear();
- inputs_.clear();
- if (type == "classifier") {
- std::cerr << "Loading model is a 'classifier', ClsResult should be passed "
- "to function predict()!"
- << std::endl;
- return false;
- } else if (type == "segmenter") {
- std::cerr << "Loading model is a 'segmenter', SegResult should be passed "
- "to function predict()!"
- << std::endl;
- return false;
- }
- // 处理输入图像
- if (!preprocess(im, &inputs_)) {
- std::cerr << "Preprocess failed!" << std::endl;
- return false;
- }
- int h = inputs_.new_im_size_[0];
- int w = inputs_.new_im_size_[1];
- auto im_tensor = predictor_->GetInputTensor("image");
- im_tensor->Reshape({1, 3, h, w});
- im_tensor->copy_from_cpu(inputs_.im_data_.data());
- if (name == "YOLOv3") {
- auto im_size_tensor = predictor_->GetInputTensor("im_size");
- im_size_tensor->Reshape({1, 2});
- im_size_tensor->copy_from_cpu(inputs_.ori_im_size_.data());
- } else if (name == "FasterRCNN" || name == "MaskRCNN") {
- auto im_info_tensor = predictor_->GetInputTensor("im_info");
- auto im_shape_tensor = predictor_->GetInputTensor("im_shape");
- im_info_tensor->Reshape({1, 3});
- im_shape_tensor->Reshape({1, 3});
- float ori_h = static_cast<float>(inputs_.ori_im_size_[0]);
- float ori_w = static_cast<float>(inputs_.ori_im_size_[1]);
- float new_h = static_cast<float>(inputs_.new_im_size_[0]);
- float new_w = static_cast<float>(inputs_.new_im_size_[1]);
- float im_info[] = {new_h, new_w, inputs_.scale};
- float im_shape[] = {ori_h, ori_w, 1.0};
- im_info_tensor->copy_from_cpu(im_info);
- im_shape_tensor->copy_from_cpu(im_shape);
- }
- // 使用加载的模型进行预测
- predictor_->ZeroCopyRun();
- std::vector<float> output_box;
- auto output_names = predictor_->GetOutputNames();
- auto output_box_tensor = predictor_->GetOutputTensor(output_names[0]);
- std::vector<int> output_box_shape = output_box_tensor->shape();
- int size = 1;
- for (const auto& i : output_box_shape) {
- size *= i;
- }
- output_box.resize(size);
- output_box_tensor->copy_to_cpu(output_box.data());
- if (size < 6) {
- std::cerr << "[WARNING] There's no object detected." << std::endl;
- return true;
- }
- int num_boxes = size / 6;
- // 解析预测框box
- for (int i = 0; i < num_boxes; ++i) {
- Box box;
- box.category_id = static_cast<int>(round(output_box[i * 6]));
- box.category = labels[box.category_id];
- box.score = output_box[i * 6 + 1];
- float xmin = output_box[i * 6 + 2];
- float ymin = output_box[i * 6 + 3];
- float xmax = output_box[i * 6 + 4];
- float ymax = output_box[i * 6 + 5];
- float w = xmax - xmin + 1;
- float h = ymax - ymin + 1;
- box.coordinate = {xmin, ymin, w, h};
- result->boxes.push_back(std::move(box));
- }
- // 实例分割需解析mask
- if (name == "MaskRCNN") {
- std::vector<float> output_mask;
- auto output_mask_tensor = predictor_->GetOutputTensor(output_names[1]);
- std::vector<int> output_mask_shape = output_mask_tensor->shape();
- int masks_size = 1;
- for (const auto& i : output_mask_shape) {
- masks_size *= i;
- }
- int mask_pixels = output_mask_shape[2] * output_mask_shape[3];
- int classes = output_mask_shape[1];
- output_mask.resize(masks_size);
- output_mask_tensor->copy_to_cpu(output_mask.data());
- result->mask_resolution = output_mask_shape[2];
- for (int i = 0; i < result->boxes.size(); ++i) {
- Box* box = &result->boxes[i];
- auto begin_mask =
- output_mask.begin() + (i * classes + box->category_id) * mask_pixels;
- auto end_mask = begin_mask + mask_pixels;
- box->mask.data.assign(begin_mask, end_mask);
- box->mask.shape = {static_cast<int>(box->coordinate[2]),
- static_cast<int>(box->coordinate[3])};
- }
- }
- }
- bool Model::predict(const cv::Mat& im, SegResult* result) {
- result->clear();
- inputs_.clear();
- if (type == "classifier") {
- std::cerr << "Loading model is a 'classifier', ClsResult should be passed "
- "to function predict()!"
- << std::endl;
- return false;
- } else if (type == "detector") {
- std::cerr << "Loading model is a 'detector', DetResult should be passed to "
- "function predict()!"
- << std::endl;
- return false;
- }
- // 处理输入图像
- if (!preprocess(im, &inputs_)) {
- std::cerr << "Preprocess failed!" << std::endl;
- return false;
- }
- int h = inputs_.new_im_size_[0];
- int w = inputs_.new_im_size_[1];
- auto im_tensor = predictor_->GetInputTensor("image");
- im_tensor->Reshape({1, 3, h, w});
- im_tensor->copy_from_cpu(inputs_.im_data_.data());
- // 使用加载的模型进行预测
- predictor_->ZeroCopyRun();
- // 获取预测置信度,经过argmax后的labelmap
- auto output_names = predictor_->GetOutputNames();
- auto output_label_tensor = predictor_->GetOutputTensor(output_names[0]);
- std::vector<int> output_label_shape = output_label_tensor->shape();
- int size = 1;
- for (const auto& i : output_label_shape) {
- size *= i;
- result->label_map.shape.push_back(i);
- }
- result->label_map.data.resize(size);
- output_label_tensor->copy_to_cpu(result->label_map.data.data());
- // 获取预测置信度scoremap
- auto output_score_tensor = predictor_->GetOutputTensor(output_names[1]);
- std::vector<int> output_score_shape = output_score_tensor->shape();
- size = 1;
- for (const auto& i : output_score_shape) {
- size *= i;
- result->score_map.shape.push_back(i);
- }
- result->score_map.data.resize(size);
- output_score_tensor->copy_to_cpu(result->score_map.data.data());
- // 解析输出结果到原图大小
- std::vector<uint8_t> label_map(result->label_map.data.begin(),
- result->label_map.data.end());
- cv::Mat mask_label(result->label_map.shape[1],
- result->label_map.shape[2],
- CV_8UC1,
- label_map.data());
- cv::Mat mask_score(result->score_map.shape[2],
- result->score_map.shape[3],
- CV_32FC1,
- result->score_map.data.data());
- int idx = 1;
- int len_postprocess = inputs_.im_size_before_resize_.size();
- for (std::vector<std::string>::reverse_iterator iter =
- inputs_.reshape_order_.rbegin();
- iter != inputs_.reshape_order_.rend();
- ++iter) {
- if (*iter == "padding") {
- auto before_shape = inputs_.im_size_before_resize_[len_postprocess - idx];
- inputs_.im_size_before_resize_.pop_back();
- auto padding_w = before_shape[0];
- auto padding_h = before_shape[1];
- mask_label = mask_label(cv::Rect(0, 0, padding_w, padding_h));
- mask_score = mask_score(cv::Rect(0, 0, padding_w, padding_h));
- } else if (*iter == "resize") {
- auto before_shape = inputs_.im_size_before_resize_[len_postprocess - idx];
- inputs_.im_size_before_resize_.pop_back();
- auto resize_w = before_shape[0];
- auto resize_h = before_shape[1];
- cv::resize(mask_label,
- mask_label,
- cv::Size(resize_h, resize_w),
- 0,
- 0,
- cv::INTER_NEAREST);
- cv::resize(mask_score,
- mask_score,
- cv::Size(resize_h, resize_w),
- 0,
- 0,
- cv::INTER_NEAREST);
- }
- ++idx;
- }
- result->label_map.data.assign(mask_label.begin<uint8_t>(),
- mask_label.end<uint8_t>());
- result->label_map.shape = {mask_label.rows, mask_label.cols};
- result->score_map.data.assign(mask_score.begin<float>(),
- mask_score.end<float>());
- result->score_map.shape = {mask_score.rows, mask_score.cols};
- }
- } // namespce of PaddleX
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