Files
FastDeploy/benchmark/cpp/benchmark_ppshituv2_det.cc
DefTruth 77cb9db6da [Model] Support PP-ShiTuV2 models for PaddleClas (#1900)
* [cmake] add faiss.cmake -> pp-shituv2

* [PP-ShiTuV2] Support PP-ShituV2-Det model

* [PP-ShiTuV2] Support PP-ShiTuV2-Det model

* [PP-ShiTuV2] Add PPShiTuV2Recognizer c++&python support

* [PP-ShiTuV2] Add PPShiTuV2Recognizer c++&python support

* [Bug Fix] fix ppshitu_pybind error

* [benchmark] Add ppshituv2-det c++ benchmark

* [examples] Add PP-ShiTuV2 det & rec examples

* [vision] Update vision classification result

* [Bug Fix] fix trt shapes setting errors
2023-05-08 14:04:09 +08:00

90 lines
3.6 KiB
C++

// Copyright (c) 2023 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 "flags.h"
#include "macros.h"
#include "option.h"
namespace vision = fastdeploy::vision;
namespace benchmark = fastdeploy::benchmark;
DEFINE_bool(no_nms, false, "Whether the model contains nms.");
int main(int argc, char* argv[]) {
#if defined(ENABLE_BENCHMARK) && defined(ENABLE_VISION)
// Initialization
auto option = fastdeploy::RuntimeOption();
if (!CreateRuntimeOption(&option, argc, argv, true)) {
return -1;
}
auto im = cv::imread(FLAGS_image);
std::unordered_map<std::string, std::string> config_info;
benchmark::ResultManager::LoadBenchmarkConfig(FLAGS_config_path,
&config_info);
std::string model_name, params_name, config_name;
auto model_format = fastdeploy::ModelFormat::PADDLE;
if (!UpdateModelResourceName(&model_name, &params_name, &config_name,
&model_format, config_info)) {
return -1;
}
auto model_file = FLAGS_model + sep + model_name;
auto params_file = FLAGS_model + sep + params_name;
auto config_file = FLAGS_model + sep + config_name;
if (config_info["backend"] == "paddle_trt") {
option.paddle_infer_option.collect_trt_shape = true;
}
if (config_info["backend"] == "paddle_trt" ||
config_info["backend"] == "trt") {
option.trt_option.SetShape("image", {1, 3, 640, 640}, {1, 3, 640, 640},
{1, 3, 640, 640});
option.trt_option.SetShape("scale_factor", {1, 2}, {1, 2}, {1, 2});
option.trt_option.SetShape("im_shape", {1, 2}, {1, 2}, {1, 2});
}
auto model = vision::classification::PPShiTuV2Detector(
model_file, params_file, config_file, option, model_format);
if (FLAGS_no_nms) {
model.GetPostprocessor().ApplyNMS();
}
vision::DetectionResult res;
if (config_info["precision_compare"] == "true") {
// Run once at least
model.Predict(im, &res);
// 1. Test result diff
std::cout << "=============== Test result diff =================\n";
// Save result to -> disk.
std::string det_result_path = "ppshituv2_det_result.txt";
benchmark::ResultManager::SaveDetectionResult(res, det_result_path);
// Load result from <- disk.
vision::DetectionResult res_loaded;
benchmark::ResultManager::LoadDetectionResult(&res_loaded, det_result_path);
// Calculate diff between two results.
auto det_diff =
benchmark::ResultManager::CalculateDiffStatis(res, res_loaded);
std::cout << "Boxes diff: mean=" << det_diff.boxes.mean
<< ", max=" << det_diff.boxes.max
<< ", min=" << det_diff.boxes.min << std::endl;
std::cout << "Label_ids diff: mean=" << det_diff.labels.mean
<< ", max=" << det_diff.labels.max
<< ", min=" << det_diff.labels.min << std::endl;
}
// Run profiling
BENCHMARK_MODEL(model, model.Predict(im, &res))
auto vis_im = vision::VisDetection(im, res, 0.5f);
cv::imwrite("vis_result.jpg", vis_im);
std::cout << "Visualized result saved in ./vis_result.jpg" << std::endl;
#endif
return 0;
}