Files
FastDeploy/fastdeploy/vision/detection/contrib/rknpu2/preprocessor.cc
Zheng_Bicheng c7dc7d5eee Add RKYOLOv5 RKYOLOX RKYOLOV7 (#709)
* 更正代码格式

* 更正代码格式

* 修复语法错误

* fix rk error

* update

* update

* update

* update

* update

* update

* update

Co-authored-by: Jason <jiangjiajun@baidu.com>
2022-12-10 15:44:00 +08:00

128 lines
3.9 KiB
C++
Executable File

// 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.
#include "fastdeploy/vision/detection/contrib/rknpu2/preprocessor.h"
#include "fastdeploy/function/concat.h"
namespace fastdeploy {
namespace vision {
namespace detection {
RKYOLOPreprocessor::RKYOLOPreprocessor() {
size_ = {640, 640};
padding_value_ = {114.0, 114.0, 114.0};
is_mini_pad_ = false;
is_no_pad_ = false;
is_scale_up_ = true;
stride_ = 32;
max_wh_ = 7680.0;
}
void RKYOLOPreprocessor::LetterBox(FDMat* mat) {
std::cout << "mat->Height() = " << mat->Height() << std::endl;
std::cout << "mat->Width() = " << mat->Width() << std::endl;
float scale =
std::min(size_[1] * 1.0 / mat->Height(), size_[0] * 1.0 / mat->Width());
std::cout << "RKYOLOPreprocessor scale_ = " << scale << std::endl;
if (!is_scale_up_) {
scale = std::min(scale, 1.0f);
}
std::cout << "RKYOLOPreprocessor scale_ = " << scale << std::endl;
scale_.push_back(scale);
int resize_h = int(round(mat->Height() * scale));
int resize_w = int(round(mat->Width() * scale));
int pad_w = size_[0] - resize_w;
int pad_h = size_[1] - resize_h;
if (is_mini_pad_) {
pad_h = pad_h % stride_;
pad_w = pad_w % stride_;
} else if (is_no_pad_) {
pad_h = 0;
pad_w = 0;
resize_h = size_[1];
resize_w = size_[0];
}
pad_hw_values_.push_back({pad_h,pad_w});
if (std::fabs(scale - 1.0f) > 1e-06) {
Resize::Run(mat, resize_w, resize_h);
}
if (pad_h > 0 || pad_w > 0) {
float half_h = pad_h * 1.0 / 2;
int top = int(round(half_h - 0.1));
int bottom = int(round(half_h + 0.1));
float half_w = pad_w * 1.0 / 2;
int left = int(round(half_w - 0.1));
int right = int(round(half_w + 0.1));
Pad::Run(mat, top, bottom, left, right, padding_value_);
}
}
bool RKYOLOPreprocessor::Preprocess(FDMat* mat, FDTensor* output) {
// process after image load
// float ratio = std::min(size_[1] * 1.0f / static_cast<float>(mat->Height()),
// size_[0] * 1.0f / static_cast<float>(mat->Width()));
// if (std::fabs(ratio - 1.0f) > 1e-06) {
// int interp = cv::INTER_AREA;
// if (ratio > 1.0) {
// interp = cv::INTER_LINEAR;
// }
// int resize_h = int(mat->Height() * ratio);
// int resize_w = int(mat->Width() * ratio);
// Resize::Run(mat, resize_w, resize_h, -1, -1, interp);
// }
// RKYOLO's preprocess steps
// 1. letterbox
// 2. convert_and_permute(swap_rb=true)
LetterBox(mat);
BGR2RGB::Run(mat);
mat->ShareWithTensor(output);
output->ExpandDim(0); // reshape to n, h, w, c
return true;
}
bool RKYOLOPreprocessor::Run(std::vector<FDMat>* images,
std::vector<FDTensor>* outputs) {
if (images->size() == 0) {
FDERROR << "The size of input images should be greater than 0."
<< std::endl;
return false;
}
outputs->resize(1);
// Concat all the preprocessed data to a batch tensor
std::vector<FDTensor> tensors(images->size());
for (size_t i = 0; i < images->size(); ++i) {
if (!Preprocess(&(*images)[i], &tensors[i])) {
FDERROR << "Failed to preprocess input image." << std::endl;
return false;
}
}
if (tensors.size() == 1) {
(*outputs)[0] = std::move(tensors[0]);
} else {
function::Concat(tensors, &((*outputs)[0]), 0);
}
return true;
}
} // namespace detection
} // namespace vision
} // namespace fastdeploy