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Open Source Computer Vision Library
https://opencv.org/
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279 lines
7.8 KiB
279 lines
7.8 KiB
#include "perf_precomp.hpp" |
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#define GPU_PERF_TEST_P(fixture, name, params) \ |
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class fixture##_##name : public fixture {\ |
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public:\ |
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fixture##_##name() {}\ |
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protected:\ |
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virtual void __cpu();\ |
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virtual void __gpu();\ |
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virtual void PerfTestBody();\ |
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};\ |
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TEST_P(fixture##_##name, name /*perf*/){ RunPerfTestBody(); }\ |
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INSTANTIATE_TEST_CASE_P(/*none*/, fixture##_##name, params);\ |
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void fixture##_##name::PerfTestBody() { if (PERF_RUN_GPU()) __gpu(); else __cpu(); } |
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#define RUN_CPU(fixture, name)\ |
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void fixture##_##name::__cpu() |
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#define RUN_GPU(fixture, name)\ |
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void fixture##_##name::__gpu() |
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#define NO_CPU(fixture, name)\ |
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void fixture##_##name::__cpu() { FAIL() << "No such CPU implementation analogy";} |
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namespace { |
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struct DetectionLess |
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{ |
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bool operator()(const cv::gpu::SCascade::Detection& a, |
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const cv::gpu::SCascade::Detection& b) const |
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{ |
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if (a.x != b.x) return a.x < b.x; |
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else if (a.y != b.y) return a.y < b.y; |
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else if (a.w != b.w) return a.w < b.w; |
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else return a.h < b.h; |
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} |
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}; |
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cv::Mat sortDetections(cv::gpu::GpuMat& objects) |
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{ |
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cv::Mat detections(objects); |
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typedef cv::gpu::SCascade::Detection Detection; |
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Detection* begin = (Detection*)(detections.ptr<char>(0)); |
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Detection* end = (Detection*)(detections.ptr<char>(0) + detections.cols); |
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std::sort(begin, end, DetectionLess()); |
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return detections; |
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} |
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} |
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typedef std::tr1::tuple<std::string, std::string> fixture_t; |
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typedef perf::TestBaseWithParam<fixture_t> SCascadeTest; |
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GPU_PERF_TEST_P(SCascadeTest, detect, |
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testing::Combine( |
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testing::Values(std::string("cv/cascadeandhog/sc_cvpr_2012_to_opencv.xml")), |
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testing::Values(std::string("cv/cascadeandhog/bahnhof/image_00000000_0.png")))) |
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RUN_GPU(SCascadeTest, detect) |
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{ |
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cv::Mat cpu = readImage (GET_PARAM(1)); |
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ASSERT_FALSE(cpu.empty()); |
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cv::gpu::GpuMat colored(cpu); |
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cv::gpu::SCascade cascade; |
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cv::FileStorage fs(perf::TestBase::getDataPath(GET_PARAM(0)), cv::FileStorage::READ); |
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ASSERT_TRUE(fs.isOpened()); |
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ASSERT_TRUE(cascade.load(fs.getFirstTopLevelNode())); |
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cv::gpu::GpuMat objectBoxes(1, 10000 * sizeof(cv::gpu::SCascade::Detection), CV_8UC1), rois(colored.size(), CV_8UC1); |
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rois.setTo(1); |
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cascade.detect(colored, rois, objectBoxes); |
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TEST_CYCLE() |
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{ |
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cascade.detect(colored, rois, objectBoxes); |
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} |
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SANITY_CHECK(sortDetections(objectBoxes)); |
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} |
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NO_CPU(SCascadeTest, detect) |
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static cv::Rect getFromTable(int idx) |
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{ |
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static const cv::Rect rois[] = |
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{ |
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cv::Rect( 65 * 4, 20 * 4, 35 * 4, 80 * 4), |
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cv::Rect( 95 * 4, 35 * 4, 45 * 4, 40 * 4), |
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cv::Rect( 45 * 4, 35 * 4, 45 * 4, 40 * 4), |
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cv::Rect( 25 * 4, 27 * 4, 50 * 4, 45 * 4), |
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cv::Rect(100 * 4, 50 * 4, 45 * 4, 40 * 4), |
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cv::Rect( 60 * 4, 30 * 4, 45 * 4, 40 * 4), |
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cv::Rect( 40 * 4, 55 * 4, 50 * 4, 40 * 4), |
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cv::Rect( 48 * 4, 37 * 4, 72 * 4, 80 * 4), |
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cv::Rect( 48 * 4, 32 * 4, 85 * 4, 58 * 4), |
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cv::Rect( 48 * 4, 0 * 4, 32 * 4, 27 * 4) |
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}; |
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return rois[idx]; |
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} |
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typedef std::tr1::tuple<std::string, std::string, int> roi_fixture_t; |
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typedef perf::TestBaseWithParam<roi_fixture_t> SCascadeTestRoi; |
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GPU_PERF_TEST_P(SCascadeTestRoi, detectInRoi, |
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testing::Combine( |
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testing::Values(std::string("cv/cascadeandhog/sc_cvpr_2012_to_opencv.xml")), |
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testing::Values(std::string("cv/cascadeandhog/bahnhof/image_00000000_0.png")), |
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testing::Range(0, 5))) |
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RUN_GPU(SCascadeTestRoi, detectInRoi) |
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{ |
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cv::Mat cpu = readImage (GET_PARAM(1)); |
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ASSERT_FALSE(cpu.empty()); |
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cv::gpu::GpuMat colored(cpu); |
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cv::gpu::SCascade cascade; |
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cv::FileStorage fs(perf::TestBase::getDataPath(GET_PARAM(0)), cv::FileStorage::READ); |
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ASSERT_TRUE(fs.isOpened()); |
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ASSERT_TRUE(cascade.load(fs.getFirstTopLevelNode())); |
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cv::gpu::GpuMat objectBoxes(1, 16384 * 20, CV_8UC1), rois(colored.size(), CV_8UC1); |
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rois.setTo(0); |
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int nroi = GET_PARAM(2); |
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cv::RNG rng; |
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for (int i = 0; i < nroi; ++i) |
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{ |
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cv::Rect r = getFromTable(rng(10)); |
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cv::gpu::GpuMat sub(rois, r); |
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sub.setTo(1); |
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} |
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cascade.detect(colored, rois, objectBoxes); |
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TEST_CYCLE() |
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{ |
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cascade.detect(colored, rois, objectBoxes); |
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} |
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SANITY_CHECK(sortDetections(objectBoxes)); |
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} |
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NO_CPU(SCascadeTestRoi, detectInRoi) |
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GPU_PERF_TEST_P(SCascadeTestRoi, detectEachRoi, |
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testing::Combine( |
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testing::Values(std::string("cv/cascadeandhog/sc_cvpr_2012_to_opencv.xml")), |
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testing::Values(std::string("cv/cascadeandhog/bahnhof/image_00000000_0.png")), |
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testing::Range(0, 10))) |
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RUN_GPU(SCascadeTestRoi, detectEachRoi) |
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{ |
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cv::Mat cpu = readImage (GET_PARAM(1)); |
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ASSERT_FALSE(cpu.empty()); |
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cv::gpu::GpuMat colored(cpu); |
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cv::gpu::SCascade cascade; |
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cv::FileStorage fs(perf::TestBase::getDataPath(GET_PARAM(0)), cv::FileStorage::READ); |
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ASSERT_TRUE(fs.isOpened()); |
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ASSERT_TRUE(cascade.load(fs.getFirstTopLevelNode())); |
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cv::gpu::GpuMat objectBoxes(1, 16384 * 20, CV_8UC1), rois(colored.size(), CV_8UC1); |
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rois.setTo(0); |
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int idx = GET_PARAM(2); |
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cv::Rect r = getFromTable(idx); |
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cv::gpu::GpuMat sub(rois, r); |
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sub.setTo(1); |
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cascade.detect(colored, rois, objectBoxes); |
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TEST_CYCLE() |
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{ |
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cascade.detect(colored, rois, objectBoxes); |
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} |
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SANITY_CHECK(sortDetections(objectBoxes)); |
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} |
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NO_CPU(SCascadeTestRoi, detectEachRoi) |
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GPU_PERF_TEST_P(SCascadeTest, detectOnIntegral, |
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testing::Combine( |
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testing::Values(std::string("cv/cascadeandhog/sc_cvpr_2012_to_opencv.xml")), |
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testing::Values(std::string("cv/cascadeandhog/integrals.xml")))) |
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static std::string itoa(long i) |
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{ |
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static char s[65]; |
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sprintf(s, "%ld", i); |
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return std::string(s); |
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} |
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RUN_GPU(SCascadeTest, detectOnIntegral) |
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{ |
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cv::FileStorage fsi(perf::TestBase::getDataPath(GET_PARAM(1)), cv::FileStorage::READ); |
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ASSERT_TRUE(fsi.isOpened()); |
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cv::gpu::GpuMat hogluv(121 * 10, 161, CV_32SC1); |
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for (int i = 0; i < 10; ++i) |
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{ |
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cv::Mat channel; |
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fsi[std::string("channel") + itoa(i)] >> channel; |
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cv::gpu::GpuMat gchannel(hogluv, cv::Rect(0, 121 * i, 161, 121)); |
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gchannel.upload(channel); |
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} |
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cv::gpu::SCascade cascade; |
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cv::FileStorage fs(perf::TestBase::getDataPath(GET_PARAM(0)), cv::FileStorage::READ); |
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ASSERT_TRUE(fs.isOpened()); |
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ASSERT_TRUE(cascade.load(fs.getFirstTopLevelNode())); |
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cv::gpu::GpuMat objectBoxes(1, 10000 * sizeof(cv::gpu::SCascade::Detection), CV_8UC1), rois(cv::Size(640, 480), CV_8UC1); |
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rois.setTo(1); |
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cascade.detect(hogluv, rois, objectBoxes); |
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TEST_CYCLE() |
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{ |
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cascade.detect(hogluv, rois, objectBoxes); |
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} |
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SANITY_CHECK(sortDetections(objectBoxes)); |
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} |
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NO_CPU(SCascadeTest, detectOnIntegral) |
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GPU_PERF_TEST_P(SCascadeTest, detectStream, |
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testing::Combine( |
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testing::Values(std::string("cv/cascadeandhog/sc_cvpr_2012_to_opencv.xml")), |
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testing::Values(std::string("cv/cascadeandhog/bahnhof/image_00000000_0.png")))) |
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RUN_GPU(SCascadeTest, detectStream) |
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{ |
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cv::Mat cpu = readImage (GET_PARAM(1)); |
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ASSERT_FALSE(cpu.empty()); |
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cv::gpu::GpuMat colored(cpu); |
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cv::gpu::SCascade cascade; |
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cv::FileStorage fs(perf::TestBase::getDataPath(GET_PARAM(0)), cv::FileStorage::READ); |
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ASSERT_TRUE(fs.isOpened()); |
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ASSERT_TRUE(cascade.load(fs.getFirstTopLevelNode())); |
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cv::gpu::GpuMat objectBoxes(1, 10000 * sizeof(cv::gpu::SCascade::Detection), CV_8UC1), rois(colored.size(), CV_8UC1); |
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rois.setTo(1); |
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cv::gpu::Stream s; |
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cascade.detect(colored, rois, objectBoxes, s); |
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TEST_CYCLE() |
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{ |
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cascade.detect(colored, rois, objectBoxes, s); |
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} |
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#ifdef HAVE_CUDA |
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cudaDeviceSynchronize(); |
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#endif |
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SANITY_CHECK(sortDetections(objectBoxes)); |
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} |
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NO_CPU(SCascadeTest, detectStream)
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