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// Copyright (c) 2022 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.
#pragma once
#include "fastdeploy/fastdeploy_model.h"
#include "fastdeploy/vision/common/processors/transform.h"
#include "fastdeploy/vision/common/result.h"
namespace fastdeploy {
namespace vision {
namespace facedet {
/*! @brief YOLOv5Face model object used when to load a YOLOv5Face model exported by YOLOv5Face.
*/
class FASTDEPLOY_DECL YOLOv5Face : public FastDeployModel {
public:
/** \brief Set path of model file and the configuration of runtime.
*
* \param[in] model_file Path of model file, e.g ./yolov5face.onnx
* \param[in] params_file Path of parameter file, e.g ppyoloe/model.pdiparams, if the model format is ONNX, this parameter will be ignored
* \param[in] custom_option RuntimeOption for inference, the default will use cpu, and choose the backend defined in "valid_cpu_backends"
* \param[in] model_format Model format of the loaded model, default is ONNX format
*/
YOLOv5Face(const std::string& model_file, const std::string& params_file = "",
const RuntimeOption& custom_option = RuntimeOption(),
const ModelFormat& model_format = ModelFormat::ONNX);
std::string ModelName() const { return "yolov5-face"; }
/** \brief Predict the face detection result for an input image
*
* \param[in] im The input image data, comes from cv::imread(), is a 3-D array with layout HWC, BGR format
* \param[in] result The output face detection result will be writen to this structure
* \param[in] conf_threshold confidence threashold for postprocessing, default is 0.25
* \param[in] nms_iou_threshold iou threashold for NMS, default is 0.5
* \return true if the prediction successed, otherwise false
*/
virtual bool Predict(cv::Mat* im, FaceDetectionResult* result,
float conf_threshold = 0.25,
float nms_iou_threshold = 0.5);
/*! @brief
Argument for image preprocessing step, tuple of (width, height), decide the target size after resize, default size = {640, 640}
*/
std::vector<int> size;
// padding value, size should be the same as channels
std::vector<float> padding_value;
// only pad to the minimum rectange which height and width is times of stride
bool is_mini_pad;
// while is_mini_pad = false and is_no_pad = true,
// will resize the image to the set size
bool is_no_pad;
// if is_scale_up is false, the input image only can be zoom out,
// the maximum resize scale cannot exceed 1.0
bool is_scale_up;
// padding stride, for is_mini_pad
int stride;
/*! @brief
Argument for image postprocessing step, setup the number of landmarks for per face (if have), default 5 in
official yolov5face note that, the outupt tensor's shape must be:
(1,n,4+1+2*landmarks_per_face+1=box+obj+landmarks+cls), default 5
*/
int landmarks_per_face;
private:
bool Initialize();
bool Preprocess(Mat* mat, FDTensor* outputs,
std::map<std::string, std::array<float, 2>>* im_info);
bool Postprocess(FDTensor& infer_result, FaceDetectionResult* result,
const std::map<std::string, std::array<float, 2>>& im_info,
float conf_threshold, float nms_iou_threshold);
bool IsDynamicInput() const { return is_dynamic_input_; }
bool is_dynamic_input_;
};
} // namespace facedet
} // namespace vision
} // namespace fastdeploy