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mnn_yolo5face.cpp
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mnn_yolo5face.cpp
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//
// Created by DefTruth on 2022/1/16.
//
#include "mnn_yolo5face.h"
using mnncv::MNNYOLO5Face;
MNNYOLO5Face::MNNYOLO5Face(const std::string &_mnn_path, unsigned int _num_threads) :
BasicMNNHandler(_mnn_path, _num_threads)
{
initialize_pretreat();
}
inline void MNNYOLO5Face::initialize_pretreat()
{
pretreat = std::shared_ptr<MNN::CV::ImageProcess>(
MNN::CV::ImageProcess::create(
MNN::CV::BGR,
MNN::CV::RGB,
mean_vals, 3,
norm_vals, 3
)
);
}
inline void MNNYOLO5Face::transform(const cv::Mat &mat_rs)
{
pretreat->convert(mat_rs.data, input_width, input_height, mat_rs.step[0], input_tensor);
}
void MNNYOLO5Face::resize_unscale(const cv::Mat &mat, cv::Mat &mat_rs,
int target_height, int target_width,
YOLO5FaceScaleParams &scale_params)
{
if (mat.empty()) return;
int img_height = static_cast<int>(mat.rows);
int img_width = static_cast<int>(mat.cols);
mat_rs = cv::Mat(target_height, target_width, CV_8UC3,
cv::Scalar(0, 0, 0));
// scale ratio (new / old) new_shape(h,w)
float w_r = (float) target_width / (float) img_width;
float h_r = (float) target_height / (float) img_height;
float r = std::min(w_r, h_r);
// compute padding
int new_unpad_w = static_cast<int>((float) img_width * r); // floor
int new_unpad_h = static_cast<int>((float) img_height * r); // floor
int pad_w = target_width - new_unpad_w; // >=0
int pad_h = target_height - new_unpad_h; // >=0
int dw = pad_w / 2;
int dh = pad_h / 2;
// resize with unscaling
cv::Mat new_unpad_mat;
// cv::Mat new_unpad_mat = mat.clone(); // may not need clone.
cv::resize(mat, new_unpad_mat, cv::Size(new_unpad_w, new_unpad_h));
new_unpad_mat.copyTo(mat_rs(cv::Rect(dw, dh, new_unpad_w, new_unpad_h)));
// record scale params.
scale_params.ratio = r;
scale_params.dw = dw;
scale_params.dh = dh;
scale_params.flag = true;
}
void MNNYOLO5Face::detect(const cv::Mat &mat, std::vector<types::BoxfWithLandmarks> &detected_boxes_kps,
float score_threshold, float iou_threshold, unsigned int topk)
{
if (mat.empty()) return;
auto img_height = static_cast<float>(mat.rows);
auto img_width = static_cast<float>(mat.cols);
// resize & unscale
cv::Mat mat_rs;
YOLO5FaceScaleParams scale_params;
this->resize_unscale(mat, mat_rs, input_height, input_width, scale_params);
// 1. make input tensor
this->transform(mat_rs);
// 2. inference scores & boxes.
mnn_interpreter->runSession(mnn_session);
auto output_tensors = mnn_interpreter->getSessionOutputAll(mnn_session);
// 3. rescale & exclude.
std::vector<types::BoxfWithLandmarks> bbox_kps_collection;
this->generate_bboxes_kps(scale_params, bbox_kps_collection, output_tensors,
score_threshold, img_height, img_width);
// 4. hard nms with topk.
this->nms_bboxes_kps(bbox_kps_collection, detected_boxes_kps, iou_threshold, topk);
}
void MNNYOLO5Face::generate_bboxes_kps(const YOLO5FaceScaleParams &scale_params,
std::vector<types::BoxfWithLandmarks> &bbox_kps_collection,
const std::map<std::string, MNN::Tensor *> &output_tensors,
float score_threshold, float img_height, float img_width)
{
auto device_output_pred = output_tensors.at("output");
MNN::Tensor host_output_pred(device_output_pred, device_output_pred->getDimensionType());
device_output_pred->copyToHostTensor(&host_output_pred);
auto output_dims = host_output_pred.shape();
const unsigned int num_anchors = output_dims.at(1); // n = ?
const float *output_ptr = host_output_pred.host<float>();
float r_ = scale_params.ratio;
int dw_ = scale_params.dw;
int dh_ = scale_params.dh;
bbox_kps_collection.clear();
unsigned int count = 0;
for (unsigned int i = 0; i < num_anchors; ++i)
{
const float *row_ptr = output_ptr + i * 16;
float obj_conf = row_ptr[4];
if (obj_conf < score_threshold) continue; // filter first.
float cls_conf = row_ptr[15];
if (cls_conf < score_threshold) continue; // face score.
// bounding box
const float *offsets = row_ptr;
float cx = offsets[0];
float cy = offsets[1];
float w = offsets[2];
float h = offsets[3];
types::BoxfWithLandmarks box_kps;
float x1 = ((cx - w / 2.f) - (float) dw_) / r_;
float y1 = ((cy - h / 2.f) - (float) dh_) / r_;
float x2 = ((cx + w / 2.f) - (float) dw_) / r_;
float y2 = ((cy + h / 2.f) - (float) dh_) / r_;
box_kps.box.x1 = std::max(0.f, x1);
box_kps.box.y1 = std::max(0.f, y1);
box_kps.box.x2 = std::min(img_width - 1.f, x2);
box_kps.box.y2 = std::min(img_height - 1.f, y2);
box_kps.box.score = cls_conf;
box_kps.box.label = 1;
box_kps.box.label_text = "face";
box_kps.box.flag = true;
// landmarks
const float *kps_offsets = row_ptr + 5;
for (unsigned int j = 0; j < 10; j += 2)
{
cv::Point2f kps;
float kps_x = (kps_offsets[j] - (float) dw_) / r_;
float kps_y = (kps_offsets[j + 1] - (float) dh_) / r_;
kps.x = std::min(std::max(0.f, kps_x), img_width - 1.f);
kps.y = std::min(std::max(0.f, kps_y), img_height - 1.f);
box_kps.landmarks.points.push_back(kps);
}
box_kps.landmarks.flag = true;
box_kps.flag = true;
bbox_kps_collection.push_back(box_kps);
count += 1; // limit boxes for nms.
if (count > max_nms)
break;
}
#if LITEMNN_DEBUG
std::cout << "generate_bboxes_kps num: " << bbox_kps_collection.size() << "\n";
#endif
}
void MNNYOLO5Face::nms_bboxes_kps(std::vector<types::BoxfWithLandmarks> &input,
std::vector<types::BoxfWithLandmarks> &output,
float iou_threshold, unsigned int topk)
{
if (input.empty()) return;
std::sort(
input.begin(), input.end(),
[](const types::BoxfWithLandmarks &a, const types::BoxfWithLandmarks &b)
{ return a.box.score > b.box.score; }
);
const unsigned int box_num = input.size();
std::vector<int> merged(box_num, 0);
unsigned int count = 0;
for (unsigned int i = 0; i < box_num; ++i)
{
if (merged[i]) continue;
std::vector<types::BoxfWithLandmarks> buf;
buf.push_back(input[i]);
merged[i] = 1;
for (unsigned int j = i + 1; j < box_num; ++j)
{
if (merged[j]) continue;
float iou = static_cast<float>(input[i].box.iou_of(input[j].box));
if (iou > iou_threshold)
{
merged[j] = 1;
buf.push_back(input[j]);
}
}
output.push_back(buf[0]);
// keep top k
count += 1;
if (count >= topk)
break;
}
}