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Open Source Computer Vision Library
https://opencv.org/
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83 lines
2.5 KiB
83 lines
2.5 KiB
#include "precomp.hpp" |
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#include <iomanip> |
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using namespace cv; |
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using namespace cv::ocl; |
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using namespace cvtest; |
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using namespace testing; |
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using namespace std; |
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template <typename T> |
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void blendLinearGold(const cv::Mat& img1, const cv::Mat& img2, const cv::Mat& weights1, const cv::Mat& weights2, cv::Mat& result_gold) |
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{ |
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result_gold.create(img1.size(), img1.type()); |
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int cn = img1.channels(); |
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for (int y = 0; y < img1.rows; ++y) |
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{ |
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const float* weights1_row = weights1.ptr<float>(y); |
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const float* weights2_row = weights2.ptr<float>(y); |
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const T* img1_row = img1.ptr<T>(y); |
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const T* img2_row = img2.ptr<T>(y); |
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T* result_gold_row = result_gold.ptr<T>(y); |
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for (int x = 0; x < img1.cols * cn; ++x) |
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{ |
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float w1 = weights1_row[x / cn]; |
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float w2 = weights2_row[x / cn]; |
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result_gold_row[x] = static_cast<T>((img1_row[x] * w1 + img2_row[x] * w2) / (w1 + w2 + 1e-5f)); |
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} |
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} |
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} |
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PARAM_TEST_CASE(Blend, cv::Size, MatType/*, UseRoi*/) |
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{ |
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std::vector<cv::ocl::Info> oclinfo; |
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cv::Size size; |
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int type; |
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bool useRoi; |
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virtual void SetUp() |
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{ |
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//devInfo = GET_PARAM(0); |
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size = GET_PARAM(0); |
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type = GET_PARAM(1); |
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/*useRoi = GET_PARAM(3);*/ |
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int devnums = getDevice(oclinfo, OPENCV_DEFAULT_OPENCL_DEVICE); |
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CV_Assert(devnums > 0); |
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} |
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}; |
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TEST_P(Blend, Accuracy) |
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{ |
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int depth = CV_MAT_DEPTH(type); |
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cv::Mat img1 = randomMat(size, type, 0.0, depth == CV_8U ? 255.0 : 1.0); |
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cv::Mat img2 = randomMat(size, type, 0.0, depth == CV_8U ? 255.0 : 1.0); |
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cv::Mat weights1 = randomMat(size, CV_32F, 0, 1); |
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cv::Mat weights2 = randomMat(size, CV_32F, 0, 1); |
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cv::ocl::oclMat gimg1(size, type), gimg2(size, type), gweights1(size, CV_32F), gweights2(size, CV_32F); |
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cv::ocl::oclMat dst(size, type); |
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gimg1.upload(img1); |
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gimg2.upload(img2); |
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gweights1.upload(weights1); |
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gweights2.upload(weights2); |
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cv::ocl::blendLinear(gimg1, gimg2, gweights1, gweights2, dst); |
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cv::Mat result; |
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cv::Mat result_gold; |
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dst.download(result); |
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if (depth == CV_8U) |
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blendLinearGold<uchar>(img1, img2, weights1, weights2, result_gold); |
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else |
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blendLinearGold<float>(img1, img2, weights1, weights2, result_gold); |
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EXPECT_MAT_NEAR(result_gold, result, CV_MAT_DEPTH(type) == CV_8U ? 1 : 1e-5f, NULL) |
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} |
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INSTANTIATE_TEST_CASE_P(GPU_ImgProc, Blend, Combine( |
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DIFFERENT_SIZES, |
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testing::Values(MatType(CV_8UC1), MatType(CV_8UC4), MatType(CV_32FC1), MatType(CV_32FC4)) |
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)); |