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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 <string>
#include <thread>
#include <vector>
#include "include/preprocess_op.h"
namespace PaddleDetection {
void InitInfo::Run(cv::Mat* im, ImageBlob* data) {
data->im_shape_ = {static_cast<float>(im->rows),
static_cast<float>(im->cols)};
data->scale_factor_ = {1., 1.};
data->in_net_shape_ = {static_cast<float>(im->rows),
static_cast<float>(im->cols)};
}
void NormalizeImage::Run(cv::Mat* im, ImageBlob* data) {
double e = 1.0;
if (is_scale_) {
e /= 255.0;
}
(*im).convertTo(*im, CV_32FC3, e);
if (norm_type_ == "mean_std"){
for (int h = 0; h < im->rows; h++) {
for (int w = 0; w < im->cols; w++) {
im->at<cv::Vec3f>(h, w)[0] =
(im->at<cv::Vec3f>(h, w)[0] - mean_[0]) / scale_[0];
im->at<cv::Vec3f>(h, w)[1] =
(im->at<cv::Vec3f>(h, w)[1] - mean_[1]) / scale_[1];
im->at<cv::Vec3f>(h, w)[2] =
(im->at<cv::Vec3f>(h, w)[2] - mean_[2]) / scale_[2];
}
}
}
}
void Permute::Run(cv::Mat* im, ImageBlob* data) {
(*im).convertTo(*im, CV_32FC3);
int rh = im->rows;
int rw = im->cols;
int rc = im->channels();
(data->im_data_).resize(rc * rh * rw);
float* base = (data->im_data_).data();
for (int i = 0; i < rc; ++i) {
cv::extractChannel(*im, cv::Mat(rh, rw, CV_32FC1, base + i * rh * rw), i);
}
}
void Resize::Run(cv::Mat* im, ImageBlob* data) {
auto resize_scale = GenerateScale(*im);
cv::resize(
*im, *im, cv::Size(), resize_scale.first, resize_scale.second, interp_);
data->in_net_shape_ = {static_cast<float>(im->rows),
static_cast<float>(im->cols)};
data->im_shape_ = {
static_cast<float>(im->rows), static_cast<float>(im->cols),
};
data->scale_factor_ = {
resize_scale.second, resize_scale.first,
};
}
std::pair<float, float> Resize::GenerateScale(const cv::Mat& im) {
std::pair<float, float> resize_scale;
int origin_w = im.cols;
int origin_h = im.rows;
if (keep_ratio_) {
int im_size_max = std::max(origin_w, origin_h);
int im_size_min = std::min(origin_w, origin_h);
int target_size_max =
*std::max_element(target_size_.begin(), target_size_.end());
int target_size_min =
*std::min_element(target_size_.begin(), target_size_.end());
float scale_min =
static_cast<float>(target_size_min) / static_cast<float>(im_size_min);
float scale_max =
static_cast<float>(target_size_max) / static_cast<float>(im_size_max);
float scale_ratio = std::min(scale_min, scale_max);
resize_scale = {scale_ratio, scale_ratio};
} else {
resize_scale.first =
static_cast<float>(target_size_[1]) / static_cast<float>(origin_w);
resize_scale.second =
static_cast<float>(target_size_[0]) / static_cast<float>(origin_h);
}
return resize_scale;
}
void LetterBoxResize::Run(cv::Mat* im, ImageBlob* data) {
float resize_scale = GenerateScale(*im);
int new_shape_w = std::round(im->cols * resize_scale);
int new_shape_h = std::round(im->rows * resize_scale);
data->im_shape_ = {static_cast<float>(new_shape_h),
static_cast<float>(new_shape_w)};
float padw = (target_size_[1] - new_shape_w) / 2.;
float padh = (target_size_[0] - new_shape_h) / 2.;
int top = std::round(padh - 0.1);
int bottom = std::round(padh + 0.1);
int left = std::round(padw - 0.1);
int right = std::round(padw + 0.1);
cv::resize(
*im, *im, cv::Size(new_shape_w, new_shape_h), 0, 0, cv::INTER_AREA);
data->in_net_shape_ = {
static_cast<float>(im->rows), static_cast<float>(im->cols),
};
cv::copyMakeBorder(*im,
*im,
top,
bottom,
left,
right,
cv::BORDER_CONSTANT,
cv::Scalar(127.5));
data->in_net_shape_ = {
static_cast<float>(im->rows), static_cast<float>(im->cols),
};
data->scale_factor_ = {
resize_scale, resize_scale,
};
}
float LetterBoxResize::GenerateScale(const cv::Mat& im) {
int origin_w = im.cols;
int origin_h = im.rows;
int target_h = target_size_[0];
int target_w = target_size_[1];
float ratio_h = static_cast<float>(target_h) / static_cast<float>(origin_h);
float ratio_w = static_cast<float>(target_w) / static_cast<float>(origin_w);
float resize_scale = std::min(ratio_h, ratio_w);
return resize_scale;
}
void PadStride::Run(cv::Mat* im, ImageBlob* data) {
if (stride_ <= 0) {
data->in_net_im_ = im->clone();
return;
}
int rc = im->channels();
int rh = im->rows;
int rw = im->cols;
int nh = (rh / stride_) * stride_ + (rh % stride_ != 0) * stride_;
int nw = (rw / stride_) * stride_ + (rw % stride_ != 0) * stride_;
cv::copyMakeBorder(
*im, *im, 0, nh - rh, 0, nw - rw, cv::BORDER_CONSTANT, cv::Scalar(0));
data->in_net_im_ = im->clone();
data->in_net_shape_ = {
static_cast<float>(im->rows), static_cast<float>(im->cols),
};
}
void TopDownEvalAffine::Run(cv::Mat* im, ImageBlob* data) {
cv::resize(*im, *im, cv::Size(trainsize_[0], trainsize_[1]), 0, 0, interp_);
// todo: Simd::ResizeBilinear();
data->in_net_shape_ = {
static_cast<float>(trainsize_[1]), static_cast<float>(trainsize_[0]),
};
}
void GetAffineTrans(const cv::Point2f center,
const cv::Point2f input_size,
const cv::Point2f output_size,
cv::Mat* trans) {
cv::Point2f srcTri[3];
cv::Point2f dstTri[3];
float src_w = input_size.x;
float dst_w = output_size.x;
float dst_h = output_size.y;
cv::Point2f src_dir(0, -0.5 * src_w);
cv::Point2f dst_dir(0, -0.5 * dst_w);
srcTri[0] = center;
srcTri[1] = center + src_dir;
cv::Point2f src_d = srcTri[0] - srcTri[1];
srcTri[2] = srcTri[1] + cv::Point2f(-src_d.y, src_d.x);
dstTri[0] = cv::Point2f(dst_w * 0.5, dst_h * 0.5);
dstTri[1] = cv::Point2f(dst_w * 0.5, dst_h * 0.5) + dst_dir;
cv::Point2f dst_d = dstTri[0] - dstTri[1];
dstTri[2] = dstTri[1] + cv::Point2f(-dst_d.y, dst_d.x);
*trans = cv::getAffineTransform(srcTri, dstTri);
}
void WarpAffine::Run(cv::Mat* im, ImageBlob* data) {
cv::cvtColor(*im, *im, cv::COLOR_RGB2BGR);
cv::Mat trans(2, 3, CV_32FC1);
cv::Point2f center;
cv::Point2f input_size;
int h = im->rows;
int w = im->cols;
if (keep_res_) {
input_h_ = (h | pad_) + 1;
input_w_ = (w + pad_) + 1;
input_size = cv::Point2f(input_w_, input_h_);
center = cv::Point2f(w / 2, h / 2);
} else {
float s = std::max(h, w) * 1.0;
input_size = cv::Point2f(s, s);
center = cv::Point2f(w / 2., h / 2.);
}
cv::Point2f output_size(input_w_, input_h_);
GetAffineTrans(center, input_size, output_size, &trans);
cv::warpAffine(*im, *im, trans, cv::Size(input_w_, input_h_));
data->in_net_shape_ = {
static_cast<float>(input_h_), static_cast<float>(input_w_),
};
}
void Pad::Run(cv::Mat* im, ImageBlob* data) {
int h = size_[0];
int w = size_[1];
int rh = im->rows;
int rw = im->cols;
if (h == rh && w == rw){
data->in_net_im_ = im->clone();
return;
}
cv::copyMakeBorder(
*im, *im, 0, h - rh, 0, w - rw, cv::BORDER_CONSTANT, cv::Scalar(114));
data->in_net_im_ = im->clone();
data->in_net_shape_ = {
static_cast<float>(im->rows), static_cast<float>(im->cols),
};
}
// Preprocessor op running order
const std::vector<std::string> Preprocessor::RUN_ORDER = {"InitInfo",
"TopDownEvalAffine",
"Resize",
"LetterBoxResize",
"WarpAffine",
"NormalizeImage",
"PadStride",
"Pad",
"Permute"};
void Preprocessor::Run(cv::Mat* im, ImageBlob* data) {
for (const auto& name : RUN_ORDER) {
if (ops_.find(name) != ops_.end()) {
ops_[name]->Run(im, data);
}
}
}
void CropImg(cv::Mat& img,
cv::Mat& crop_img,
std::vector<int>& area,
std::vector<float>& center,
std::vector<float>& scale,
float expandratio) {
int crop_x1 = std::max(0, area[0]);
int crop_y1 = std::max(0, area[1]);
int crop_x2 = std::min(img.cols - 1, area[2]);
int crop_y2 = std::min(img.rows - 1, area[3]);
int center_x = (crop_x1 + crop_x2) / 2.;
int center_y = (crop_y1 + crop_y2) / 2.;
int half_h = (crop_y2 - crop_y1) / 2.;
int half_w = (crop_x2 - crop_x1) / 2.;
// adjust h or w to keep image ratio, expand the shorter edge
if (half_h * 3 > half_w * 4) {
half_w = static_cast<int>(half_h * 0.75);
} else {
half_h = static_cast<int>(half_w * 4 / 3);
}
crop_x1 =
std::max(0, center_x - static_cast<int>(half_w * (1 + expandratio)));
crop_y1 =
std::max(0, center_y - static_cast<int>(half_h * (1 + expandratio)));
crop_x2 = std::min(img.cols - 1,
static_cast<int>(center_x + half_w * (1 + expandratio)));
crop_y2 = std::min(img.rows - 1,
static_cast<int>(center_y + half_h * (1 + expandratio)));
crop_img =
img(cv::Range(crop_y1, crop_y2 + 1), cv::Range(crop_x1, crop_x2 + 1));
center.clear();
center.emplace_back((crop_x1 + crop_x2) / 2);
center.emplace_back((crop_y1 + crop_y2) / 2);
scale.clear();
scale.emplace_back((crop_x2 - crop_x1));
scale.emplace_back((crop_y2 - crop_y1));
}
bool CheckDynamicInput(const std::vector<cv::Mat>& imgs) {
if (imgs.size() == 1) return false;
int h = imgs.at(0).rows;
int w = imgs.at(0).cols;
for (int i = 1; i < imgs.size(); ++i) {
int hi = imgs.at(i).rows;
int wi = imgs.at(i).cols;
if (hi != h || wi != w) {
return true;
}
}
return false;
}
std::vector<cv::Mat> PadBatch(const std::vector<cv::Mat>& imgs) {
std::vector<cv::Mat> out_imgs;
int max_h = 0;
int max_w = 0;
int rh = 0;
int rw = 0;
// find max_h and max_w in batch
for (int i = 0; i < imgs.size(); ++i) {
rh = imgs.at(i).rows;
rw = imgs.at(i).cols;
if (rh > max_h) max_h = rh;
if (rw > max_w) max_w = rw;
}
for (int i = 0; i < imgs.size(); ++i) {
cv::Mat im = imgs.at(i);
cv::copyMakeBorder(im,
im,
0,
max_h - imgs.at(i).rows,
0,
max_w - imgs.at(i).cols,
cv::BORDER_CONSTANT,
cv::Scalar(0));
out_imgs.push_back(im);
}
return out_imgs;
}
} // namespace PaddleDetection
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