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Open Source Computer Vision Library
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209 lines
5.2 KiB
209 lines
5.2 KiB
#include "perf_precomp.hpp" |
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using namespace std; |
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using namespace testing; |
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#define GPU_DENOISING_IMAGE_SIZES testing::Values(perf::szVGA, perf::szXGA, perf::sz720p, perf::sz1080p) |
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////////////////////////////////////////////////////////////////////// |
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// BilateralFilter |
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DEF_PARAM_TEST(Sz_Depth_Cn_KernelSz, cv::Size, MatDepth, MatCn, int); |
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PERF_TEST_P(Sz_Depth_Cn_KernelSz, Denoising_BilateralFilter, |
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Combine(GPU_DENOISING_IMAGE_SIZES, Values(CV_8U, CV_32F), GPU_CHANNELS_1_3, Values(3, 5, 9))) |
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{ |
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declare.time(60.0); |
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cv::Size size = GET_PARAM(0); |
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int depth = GET_PARAM(1); |
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int channels = GET_PARAM(2); |
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int kernel_size = GET_PARAM(3); |
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float sigma_color = 7; |
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float sigma_spatial = 5; |
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int borderMode = cv::BORDER_REFLECT101; |
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int type = CV_MAKE_TYPE(depth, channels); |
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cv::Mat src(size, type); |
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fillRandom(src); |
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if (PERF_RUN_GPU()) |
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{ |
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cv::gpu::GpuMat d_src(src); |
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cv::gpu::GpuMat d_dst; |
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cv::gpu::bilateralFilter(d_src, d_dst, kernel_size, sigma_color, sigma_spatial, borderMode); |
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TEST_CYCLE() |
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{ |
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cv::gpu::bilateralFilter(d_src, d_dst, kernel_size, sigma_color, sigma_spatial, borderMode); |
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} |
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GPU_SANITY_CHECK(d_dst); |
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} |
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else |
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{ |
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cv::Mat dst; |
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cv::bilateralFilter(src, dst, kernel_size, sigma_color, sigma_spatial, borderMode); |
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TEST_CYCLE() |
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{ |
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cv::bilateralFilter(src, dst, kernel_size, sigma_color, sigma_spatial, borderMode); |
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} |
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CPU_SANITY_CHECK(dst); |
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} |
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} |
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////////////////////////////////////////////////////////////////////// |
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// nonLocalMeans |
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DEF_PARAM_TEST(Sz_Depth_Cn_WinSz_BlockSz, cv::Size, MatDepth, MatCn, int, int); |
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PERF_TEST_P(Sz_Depth_Cn_WinSz_BlockSz, Denoising_NonLocalMeans, |
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Combine(GPU_DENOISING_IMAGE_SIZES, Values<MatDepth>(CV_8U), GPU_CHANNELS_1_3, Values(21), Values(5, 7))) |
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{ |
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declare.time(60.0); |
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cv::Size size = GET_PARAM(0); |
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int depth = GET_PARAM(1); |
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int channels = GET_PARAM(2); |
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int search_widow_size = GET_PARAM(3); |
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int block_size = GET_PARAM(4); |
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float h = 10; |
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int borderMode = cv::BORDER_REFLECT101; |
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int type = CV_MAKE_TYPE(depth, channels); |
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cv::Mat src(size, type); |
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fillRandom(src); |
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if (PERF_RUN_GPU()) |
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{ |
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cv::gpu::GpuMat d_src(src); |
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cv::gpu::GpuMat d_dst; |
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cv::gpu::nonLocalMeans(d_src, d_dst, h, search_widow_size, block_size, borderMode); |
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TEST_CYCLE() |
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{ |
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cv::gpu::nonLocalMeans(d_src, d_dst, h, search_widow_size, block_size, borderMode); |
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} |
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GPU_SANITY_CHECK(d_dst); |
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} |
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else |
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{ |
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FAIL() << "No such CPU implementation analogy"; |
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} |
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} |
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////////////////////////////////////////////////////////////////////// |
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// fastNonLocalMeans |
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DEF_PARAM_TEST(Sz_Depth_Cn_WinSz_BlockSz, cv::Size, MatDepth, MatCn, int, int); |
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PERF_TEST_P(Sz_Depth_Cn_WinSz_BlockSz, Denoising_FastNonLocalMeans, |
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Combine(GPU_DENOISING_IMAGE_SIZES, Values<MatDepth>(CV_8U), GPU_CHANNELS_1_3, Values(21), Values(7))) |
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{ |
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declare.time(150.0); |
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cv::Size size = GET_PARAM(0); |
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int depth = GET_PARAM(1); |
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int search_widow_size = GET_PARAM(2); |
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int block_size = GET_PARAM(3); |
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float h = 10; |
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int type = CV_MAKE_TYPE(depth, 1); |
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cv::Mat src(size, type); |
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fillRandom(src); |
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if (PERF_RUN_GPU()) |
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{ |
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cv::gpu::GpuMat d_src(src); |
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cv::gpu::GpuMat d_dst; |
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cv::gpu::FastNonLocalMeansDenoising fnlmd; |
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fnlmd.simpleMethod(d_src, d_dst, h, search_widow_size, block_size); |
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TEST_CYCLE() |
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{ |
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fnlmd.simpleMethod(d_src, d_dst, h, search_widow_size, block_size); |
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} |
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GPU_SANITY_CHECK(d_dst); |
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} |
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else |
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{ |
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cv::Mat dst; |
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cv::fastNlMeansDenoising(src, dst, h, block_size, search_widow_size); |
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TEST_CYCLE() |
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{ |
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cv::fastNlMeansDenoising(src, dst, h, block_size, search_widow_size); |
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} |
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CPU_SANITY_CHECK(dst); |
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} |
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} |
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////////////////////////////////////////////////////////////////////// |
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// fastNonLocalMeans (colored) |
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DEF_PARAM_TEST(Sz_Depth_WinSz_BlockSz, cv::Size, MatDepth, int, int); |
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PERF_TEST_P(Sz_Depth_WinSz_BlockSz, Denoising_FastNonLocalMeansColored, |
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Combine(GPU_DENOISING_IMAGE_SIZES, Values<MatDepth>(CV_8U), Values(21), Values(7))) |
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{ |
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declare.time(350.0); |
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cv::Size size = GET_PARAM(0); |
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int depth = GET_PARAM(1); |
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int search_widow_size = GET_PARAM(2); |
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int block_size = GET_PARAM(3); |
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float h = 10; |
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int type = CV_MAKE_TYPE(depth, 3); |
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cv::Mat src(size, type); |
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fillRandom(src); |
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if (PERF_RUN_GPU()) |
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{ |
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cv::gpu::GpuMat d_src(src); |
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cv::gpu::GpuMat d_dst; |
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cv::gpu::FastNonLocalMeansDenoising fnlmd; |
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fnlmd.labMethod(d_src, d_dst, h, h, search_widow_size, block_size); |
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TEST_CYCLE() |
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{ |
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fnlmd.labMethod(d_src, d_dst, h, h, search_widow_size, block_size); |
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} |
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GPU_SANITY_CHECK(d_dst); |
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} |
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else |
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{ |
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cv::Mat dst; |
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cv::fastNlMeansDenoisingColored(src, dst, h, h, block_size, search_widow_size); |
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TEST_CYCLE() |
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{ |
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cv::fastNlMeansDenoisingColored(src, dst, h, h, block_size, search_widow_size); |
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} |
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CPU_SANITY_CHECK(dst); |
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} |
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} |