Open Source Computer Vision Library https://opencv.org/
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/*M///////////////////////////////////////////////////////////////////////////////////////
//
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// If you do not agree to this license, do not download, install,
// copy or use the software.
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//
// License Agreement
// For Open Source Computer Vision Library
//
// Copyright (C) 2000-2008, Intel Corporation, all rights reserved.
// Copyright (C) 2009, Willow Garage Inc., all rights reserved.
// Copyright (C) 2014, Itseez, Inc, all rights reserved.
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#include "test_precomp.hpp"
using namespace cv;
using namespace std;
template<typename T>
struct SimilarWith
{
T value;
float theta_eps;
float rho_eps;
SimilarWith<T>(T val, float e, float r_e): value(val), theta_eps(e), rho_eps(r_e) { };
bool operator()(T other);
};
template<>
bool SimilarWith<Vec2f>::operator()(Vec2f other)
{
return abs(other[0] - value[0]) < rho_eps && abs(other[1] - value[1]) < theta_eps;
}
template<>
bool SimilarWith<Vec4i>::operator()(Vec4i other)
{
return norm(value, other) < theta_eps;
}
template <typename T>
int countMatIntersection(Mat expect, Mat actual, float eps, float rho_eps)
{
int count = 0;
if (!expect.empty() && !actual.empty())
{
for (MatIterator_<T> it=expect.begin<T>(); it!=expect.end<T>(); it++)
{
MatIterator_<T> f = std::find_if(actual.begin<T>(), actual.end<T>(), SimilarWith<T>(*it, eps, rho_eps));
if (f != actual.end<T>())
count++;
}
}
return count;
}
String getTestCaseName(String filename)
{
string temp(filename);
size_t pos = temp.find_first_of("\\/.");
while ( pos != string::npos ) {
temp.replace( pos, 1, "_" );
pos = temp.find_first_of("\\/.");
}
return String(temp);
}
class BaseHoughLineTest
{
public:
enum {STANDART = 0, PROBABILISTIC};
protected:
void run_test(int type);
string picture_name;
double rhoStep;
double thetaStep;
int threshold;
int minLineLength;
int maxGap;
};
typedef std::tr1::tuple<string, double, double, int> Image_RhoStep_ThetaStep_Threshold_t;
class StandartHoughLinesTest : public BaseHoughLineTest, public testing::TestWithParam<Image_RhoStep_ThetaStep_Threshold_t>
{
public:
StandartHoughLinesTest()
{
picture_name = std::tr1::get<0>(GetParam());
rhoStep = std::tr1::get<1>(GetParam());
thetaStep = std::tr1::get<2>(GetParam());
threshold = std::tr1::get<3>(GetParam());
minLineLength = 0;
maxGap = 0;
}
};
typedef std::tr1::tuple<string, double, double, int, int, int> Image_RhoStep_ThetaStep_Threshold_MinLine_MaxGap_t;
class ProbabilisticHoughLinesTest : public BaseHoughLineTest, public testing::TestWithParam<Image_RhoStep_ThetaStep_Threshold_MinLine_MaxGap_t>
{
public:
ProbabilisticHoughLinesTest()
{
picture_name = std::tr1::get<0>(GetParam());
rhoStep = std::tr1::get<1>(GetParam());
thetaStep = std::tr1::get<2>(GetParam());
threshold = std::tr1::get<3>(GetParam());
minLineLength = std::tr1::get<4>(GetParam());
maxGap = std::tr1::get<5>(GetParam());
}
};
void BaseHoughLineTest::run_test(int type)
{
string filename = cvtest::TS::ptr()->get_data_path() + picture_name;
Mat src = imread(filename, IMREAD_GRAYSCALE);
EXPECT_FALSE(src.empty()) << "Invalid test image: " << filename;
string xml;
if (type == STANDART)
xml = string(cvtest::TS::ptr()->get_data_path()) + "imgproc/HoughLines.xml";
else if (type == PROBABILISTIC)
xml = string(cvtest::TS::ptr()->get_data_path()) + "imgproc/HoughLinesP.xml";
Mat dst;
Canny(src, dst, 100, 150, 3);
EXPECT_FALSE(dst.empty()) << "Failed Canny edge detector";
Mat lines;
if (type == STANDART)
HoughLines(dst, lines, rhoStep, thetaStep, threshold, 0, 0);
else if (type == PROBABILISTIC)
HoughLinesP(dst, lines, rhoStep, thetaStep, threshold, minLineLength, maxGap);
String test_case_name = format("lines_%s_%.0f_%.2f_%d_%d_%d", picture_name.c_str(), rhoStep, thetaStep,
threshold, minLineLength, maxGap);
test_case_name = getTestCaseName(test_case_name);
FileStorage fs(xml, FileStorage::READ);
FileNode node = fs[test_case_name];
if (node.empty())
{
fs.release();
fs.open(xml, FileStorage::APPEND);
EXPECT_TRUE(fs.isOpened()) << "Cannot open sanity data file: " << xml;
fs << test_case_name << lines;
fs.release();
fs.open(xml, FileStorage::READ);
EXPECT_TRUE(fs.isOpened()) << "Cannot open sanity data file: " << xml;
}
Mat exp_lines;
read( fs[test_case_name], exp_lines, Mat() );
fs.release();
int count = -1;
if (type == STANDART)
count = countMatIntersection<Vec2f>(exp_lines, lines, (float) thetaStep + FLT_EPSILON, (float) rhoStep + FLT_EPSILON);
else if (type == PROBABILISTIC)
count = countMatIntersection<Vec4i>(exp_lines, lines, 1e-4f, 0.f);
#if defined HAVE_IPP && IPP_VERSION_X100 >= 810 && IPP_DISABLE_BLOCK
EXPECT_GE( count, (int) (exp_lines.total() * 0.8) );
#else
EXPECT_EQ( count, (int) exp_lines.total());
#endif
}
TEST_P(StandartHoughLinesTest, regression)
{
run_test(STANDART);
}
TEST_P(ProbabilisticHoughLinesTest, regression)
{
run_test(PROBABILISTIC);
}
INSTANTIATE_TEST_CASE_P( ImgProc, StandartHoughLinesTest, testing::Combine(testing::Values( "shared/pic5.png", "../stitching/a1.png" ),
testing::Values( 1, 10 ),
testing::Values( 0.05, 0.1 ),
testing::Values( 80, 150 )
));
INSTANTIATE_TEST_CASE_P( ImgProc, ProbabilisticHoughLinesTest, testing::Combine(testing::Values( "shared/pic5.png", "shared/pic1.png" ),
testing::Values( 5, 10 ),
testing::Values( 0.05, 0.1 ),
testing::Values( 75, 150 ),
testing::Values( 0, 10 ),
testing::Values( 0, 4 )
));