////////////////////////////////////////////////////////////////////////////////////////// /////////////////// tests for matrix operations and math functions /////////////////////// ////////////////////////////////////////////////////////////////////////////////////////// #include "test_precomp.hpp" #include #include using namespace cv; using namespace std; /// !!! NOTE !!! These tests happily avoid overflow cases & out-of-range arguments /// so that output arrays contain neigher Inf's nor Nan's. /// Handling such cases would require special modification of check function /// (validate_test_results) => TBD. /// Also, need some logarithmic-scale generation of input data. Right now it is done (in some tests) /// by generating min/max boundaries for random data in logarimithic scale, but /// within the same test case all the input array elements are of the same order. class Core_MathTest : public cvtest::ArrayTest { public: typedef cvtest::ArrayTest Base; Core_MathTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types); double get_success_error_level( int /*test_case_idx*/, int i, int j ); bool test_nd; }; Core_MathTest::Core_MathTest() { optional_mask = false; test_array[INPUT].push_back(NULL); test_array[OUTPUT].push_back(NULL); test_array[REF_OUTPUT].push_back(NULL); test_nd = false; } double Core_MathTest::get_success_error_level( int /*test_case_idx*/, int i, int j ) { return test_mat[i][j].depth() == CV_32F ? FLT_EPSILON*128 : DBL_EPSILON*1024; } void Core_MathTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types) { RNG& rng = ts->get_rng(); int depth = cvtest::randInt(rng)%2 + CV_32F; int cn = cvtest::randInt(rng) % 4 + 1, type = CV_MAKETYPE(depth, cn); size_t i, j; Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); for( i = 0; i < test_array.size(); i++ ) { size_t count = test_array[i].size(); for( j = 0; j < count; j++ ) types[i][j] = type; } test_nd = cvtest::randInt(rng)%3 == 0; } ////////// pow ///////////// class Core_PowTest : public Core_MathTest { public: typedef Core_MathTest Base; Core_PowTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); void get_minmax_bounds( int i, int j, int type, Scalar& low, Scalar& high ); void run_func(); void prepare_to_validation( int test_case_idx ); double get_success_error_level( int test_case_idx, int i, int j ); double power; }; Core_PowTest::Core_PowTest() { power = 0; } void Core_PowTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int depth = cvtest::randInt(rng) % (CV_64F+1); int cn = cvtest::randInt(rng) % 4 + 1; size_t i, j; Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); depth += depth == CV_8S; if( depth < CV_32F || cvtest::randInt(rng)%8 == 0 ) // integer power power = (int)(cvtest::randInt(rng)%21 - 10); else { i = cvtest::randInt(rng)%17; power = i == 16 ? 1./3 : i == 15 ? 0.5 : i == 14 ? -0.5 : cvtest::randReal(rng)*10 - 5; } for( i = 0; i < test_array.size(); i++ ) { size_t count = test_array[i].size(); int type = CV_MAKETYPE(depth, cn); for( j = 0; j < count; j++ ) types[i][j] = type; } test_nd = cvtest::randInt(rng)%3 == 0; } double Core_PowTest::get_success_error_level( int test_case_idx, int i, int j ) { int depth = test_mat[i][j].depth(); if( depth < CV_32F ) return power == cvRound(power) && power >= 0 ? 0 : 1; else return Base::get_success_error_level( test_case_idx, i, j ); } void Core_PowTest::get_minmax_bounds( int /*i*/, int /*j*/, int type, Scalar& low, Scalar& high ) { double l, u = cvtest::randInt(ts->get_rng())%1000 + 1; if( power > 0 ) { double mval = cvtest::getMaxVal(type); double u1 = pow(mval,1./power)*2; u = MIN(u,u1); } l = power == cvRound(power) ? -u : FLT_EPSILON; low = Scalar::all(l); high = Scalar::all(u); } void Core_PowTest::run_func() { if(!test_nd) { if( fabs(power-1./3) <= DBL_EPSILON && test_mat[INPUT][0].depth() == CV_32F ) { Mat a = test_mat[INPUT][0], b = test_mat[OUTPUT][0]; a = a.reshape(1); b = b.reshape(1); for( int i = 0; i < a.rows; i++ ) { b.at(i,0) = (float)fabs(cvCbrt(a.at(i,0))); for( int j = 1; j < a.cols; j++ ) b.at(i,j) = (float)fabs(cv::cubeRoot(a.at(i,j))); } } else cvPow( test_array[INPUT][0], test_array[OUTPUT][0], power ); } else { Mat& a = test_mat[INPUT][0]; Mat& b = test_mat[OUTPUT][0]; if(power == 0.5) cv::sqrt(a, b); else cv::pow(a, power, b); } } inline static int ipow( int a, int power ) { int b = 1; while( power > 0 ) { if( power&1 ) b *= a, power--; else a *= a, power >>= 1; } return b; } inline static double ipow( double a, int power ) { double b = 1.; while( power > 0 ) { if( power&1 ) b *= a, power--; else a *= a, power >>= 1; } return b; } void Core_PowTest::prepare_to_validation( int /*test_case_idx*/ ) { const Mat& a = test_mat[INPUT][0]; Mat& b = test_mat[REF_OUTPUT][0]; int depth = a.depth(); int ncols = a.cols*a.channels(); int ipower = cvRound(power), apower = abs(ipower); int i, j; for( i = 0; i < a.rows; i++ ) { const uchar* a_data = a.ptr(i); uchar* b_data = b.ptr(i); switch( depth ) { case CV_8U: if( ipower < 0 ) for( j = 0; j < ncols; j++ ) { int val = ((uchar*)a_data)[j]; ((uchar*)b_data)[j] = (uchar)(val <= 1 ? val : val == 2 && ipower == -1 ? 1 : 0); } else for( j = 0; j < ncols; j++ ) { int val = ((uchar*)a_data)[j]; val = ipow( val, ipower ); ((uchar*)b_data)[j] = saturate_cast(val); } break; case CV_8S: if( ipower < 0 ) for( j = 0; j < ncols; j++ ) { int val = ((char*)a_data)[j]; ((char*)b_data)[j] = (char)((val&~1)==0 ? val : val ==-1 ? 1-2*(ipower&1) : val == 2 && ipower == -1 ? 1 : 0); } else for( j = 0; j < ncols; j++ ) { int val = ((char*)a_data)[j]; val = ipow( val, ipower ); ((char*)b_data)[j] = saturate_cast(val); } break; case CV_16U: if( ipower < 0 ) for( j = 0; j < ncols; j++ ) { int val = ((ushort*)a_data)[j]; ((ushort*)b_data)[j] = (ushort)((val&~1)==0 ? val : val ==-1 ? 1-2*(ipower&1) : val == 2 && ipower == -1 ? 1 : 0); } else for( j = 0; j < ncols; j++ ) { int val = ((ushort*)a_data)[j]; val = ipow( val, ipower ); ((ushort*)b_data)[j] = saturate_cast(val); } break; case CV_16S: if( ipower < 0 ) for( j = 0; j < ncols; j++ ) { int val = ((short*)a_data)[j]; ((short*)b_data)[j] = (short)((val&~1)==0 ? val : val ==-1 ? 1-2*(ipower&1) : val == 2 && ipower == -1 ? 1 : 0); } else for( j = 0; j < ncols; j++ ) { int val = ((short*)a_data)[j]; val = ipow( val, ipower ); ((short*)b_data)[j] = saturate_cast(val); } break; case CV_32S: if( ipower < 0 ) for( j = 0; j < ncols; j++ ) { int val = ((int*)a_data)[j]; ((int*)b_data)[j] = (val&~1)==0 ? val : val ==-1 ? 1-2*(ipower&1) : val == 2 && ipower == -1 ? 1 : 0; } else for( j = 0; j < ncols; j++ ) { int val = ((int*)a_data)[j]; val = ipow( val, ipower ); ((int*)b_data)[j] = val; } break; case CV_32F: if( power != ipower ) for( j = 0; j < ncols; j++ ) { double val = ((float*)a_data)[j]; val = pow( fabs(val), power ); ((float*)b_data)[j] = (float)val; } else for( j = 0; j < ncols; j++ ) { double val = ((float*)a_data)[j]; if( ipower < 0 ) val = 1./val; val = ipow( val, apower ); ((float*)b_data)[j] = (float)val; } break; case CV_64F: if( power != ipower ) for( j = 0; j < ncols; j++ ) { double val = ((double*)a_data)[j]; val = pow( fabs(val), power ); ((double*)b_data)[j] = (double)val; } else for( j = 0; j < ncols; j++ ) { double val = ((double*)a_data)[j]; if( ipower < 0 ) val = 1./val; val = ipow( val, apower ); ((double*)b_data)[j] = (double)val; } break; } } } ///////////////////////////////////////// matrix tests //////////////////////////////////////////// class Core_MatrixTest : public cvtest::ArrayTest { public: typedef cvtest::ArrayTest Base; Core_MatrixTest( int in_count, int out_count, bool allow_int, bool scalar_output, int max_cn ); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); double get_success_error_level( int test_case_idx, int i, int j ); bool allow_int; bool scalar_output; int max_cn; }; Core_MatrixTest::Core_MatrixTest( int in_count, int out_count, bool _allow_int, bool _scalar_output, int _max_cn ) : allow_int(_allow_int), scalar_output(_scalar_output), max_cn(_max_cn) { int i; for( i = 0; i < in_count; i++ ) test_array[INPUT].push_back(NULL); for( i = 0; i < out_count; i++ ) { test_array[OUTPUT].push_back(NULL); test_array[REF_OUTPUT].push_back(NULL); } element_wise_relative_error = false; } void Core_MatrixTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int depth = cvtest::randInt(rng) % (allow_int ? CV_64F+1 : 2); int cn = cvtest::randInt(rng) % max_cn + 1; size_t i, j; if( allow_int ) depth += depth == CV_8S; else depth += CV_32F; Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); for( i = 0; i < test_array.size(); i++ ) { size_t count = test_array[i].size(); int flag = (i == OUTPUT || i == REF_OUTPUT) && scalar_output; int type = !flag ? CV_MAKETYPE(depth, cn) : CV_64FC1; for( j = 0; j < count; j++ ) { types[i][j] = type; if( flag ) sizes[i][j] = Size( 4, 1 ); } } } double Core_MatrixTest::get_success_error_level( int test_case_idx, int i, int j ) { int input_depth = test_mat[INPUT][0].depth(); double input_precision = input_depth < CV_32F ? 0 : input_depth == CV_32F ? 5e-5 : 5e-10; double output_precision = Base::get_success_error_level( test_case_idx, i, j ); return MAX(input_precision, output_precision); } ///////////////// Trace ///////////////////// class Core_TraceTest : public Core_MatrixTest { public: Core_TraceTest(); protected: void run_func(); void prepare_to_validation( int test_case_idx ); }; Core_TraceTest::Core_TraceTest() : Core_MatrixTest( 1, 1, true, true, 4 ) { } void Core_TraceTest::run_func() { test_mat[OUTPUT][0].at(0,0) = cvTrace(test_array[INPUT][0]); } void Core_TraceTest::prepare_to_validation( int ) { Mat& mat = test_mat[INPUT][0]; int count = MIN( mat.rows, mat.cols ); Mat diag(count, 1, mat.type(), mat.data, mat.step + mat.elemSize()); Scalar r = cvtest::mean(diag); r *= (double)count; test_mat[REF_OUTPUT][0].at(0,0) = r; } ///////// dotproduct ////////// class Core_DotProductTest : public Core_MatrixTest { public: Core_DotProductTest(); protected: void run_func(); void prepare_to_validation( int test_case_idx ); }; Core_DotProductTest::Core_DotProductTest() : Core_MatrixTest( 2, 1, true, true, 4 ) { } void Core_DotProductTest::run_func() { test_mat[OUTPUT][0].at(0,0) = Scalar(cvDotProduct( test_array[INPUT][0], test_array[INPUT][1] )); } void Core_DotProductTest::prepare_to_validation( int ) { test_mat[REF_OUTPUT][0].at(0,0) = Scalar(cvtest::crossCorr( test_mat[INPUT][0], test_mat[INPUT][1] )); } ///////// crossproduct ////////// class Core_CrossProductTest : public Core_MatrixTest { public: Core_CrossProductTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); void run_func(); void prepare_to_validation( int test_case_idx ); }; Core_CrossProductTest::Core_CrossProductTest() : Core_MatrixTest( 2, 1, false, false, 1 ) { } void Core_CrossProductTest::get_test_array_types_and_sizes( int, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int depth = cvtest::randInt(rng) % 2 + CV_32F; int cn = cvtest::randInt(rng) & 1 ? 3 : 1, type = CV_MAKETYPE(depth, cn); CvSize sz; types[INPUT][0] = types[INPUT][1] = types[OUTPUT][0] = types[REF_OUTPUT][0] = type; if( cn == 3 ) sz = Size(1,1); else if( cvtest::randInt(rng) & 1 ) sz = Size(3,1); else sz = Size(1,3); sizes[INPUT][0] = sizes[INPUT][1] = sizes[OUTPUT][0] = sizes[REF_OUTPUT][0] = sz; } void Core_CrossProductTest::run_func() { cvCrossProduct( test_array[INPUT][0], test_array[INPUT][1], test_array[OUTPUT][0] ); } void Core_CrossProductTest::prepare_to_validation( int ) { CvScalar a = {{0,0,0,0}}, b = {{0,0,0,0}}, c = {{0,0,0,0}}; if( test_mat[INPUT][0].rows > 1 ) { a.val[0] = cvGetReal2D( test_array[INPUT][0], 0, 0 ); a.val[1] = cvGetReal2D( test_array[INPUT][0], 1, 0 ); a.val[2] = cvGetReal2D( test_array[INPUT][0], 2, 0 ); b.val[0] = cvGetReal2D( test_array[INPUT][1], 0, 0 ); b.val[1] = cvGetReal2D( test_array[INPUT][1], 1, 0 ); b.val[2] = cvGetReal2D( test_array[INPUT][1], 2, 0 ); } else if( test_mat[INPUT][0].cols > 1 ) { a.val[0] = cvGetReal1D( test_array[INPUT][0], 0 ); a.val[1] = cvGetReal1D( test_array[INPUT][0], 1 ); a.val[2] = cvGetReal1D( test_array[INPUT][0], 2 ); b.val[0] = cvGetReal1D( test_array[INPUT][1], 0 ); b.val[1] = cvGetReal1D( test_array[INPUT][1], 1 ); b.val[2] = cvGetReal1D( test_array[INPUT][1], 2 ); } else { a = cvGet1D( test_array[INPUT][0], 0 ); b = cvGet1D( test_array[INPUT][1], 0 ); } c.val[2] = a.val[0]*b.val[1] - a.val[1]*b.val[0]; c.val[1] = -a.val[0]*b.val[2] + a.val[2]*b.val[0]; c.val[0] = a.val[1]*b.val[2] - a.val[2]*b.val[1]; if( test_mat[REF_OUTPUT][0].rows > 1 ) { cvSetReal2D( test_array[REF_OUTPUT][0], 0, 0, c.val[0] ); cvSetReal2D( test_array[REF_OUTPUT][0], 1, 0, c.val[1] ); cvSetReal2D( test_array[REF_OUTPUT][0], 2, 0, c.val[2] ); } else if( test_mat[REF_OUTPUT][0].cols > 1 ) { cvSetReal1D( test_array[REF_OUTPUT][0], 0, c.val[0] ); cvSetReal1D( test_array[REF_OUTPUT][0], 1, c.val[1] ); cvSetReal1D( test_array[REF_OUTPUT][0], 2, c.val[2] ); } else { cvSet1D( test_array[REF_OUTPUT][0], 0, c ); } } ///////////////// gemm ///////////////////// class Core_GEMMTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_GEMMTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); void get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); int tabc_flag; double alpha, beta; }; Core_GEMMTest::Core_GEMMTest() : Core_MatrixTest( 5, 1, false, false, 2 ) { test_case_count = 100; max_log_array_size = 10; alpha = beta = 0; } void Core_GEMMTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); Size sizeA; Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); sizeA = sizes[INPUT][0]; Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); sizes[INPUT][0] = sizeA; sizes[INPUT][2] = sizes[INPUT][3] = Size(1,1); types[INPUT][2] = types[INPUT][3] &= ~CV_MAT_CN_MASK; tabc_flag = cvtest::randInt(rng) & 7; switch( tabc_flag & (CV_GEMM_A_T|CV_GEMM_B_T) ) { case 0: sizes[INPUT][1].height = sizes[INPUT][0].width; sizes[OUTPUT][0].height = sizes[INPUT][0].height; sizes[OUTPUT][0].width = sizes[INPUT][1].width; break; case CV_GEMM_B_T: sizes[INPUT][1].width = sizes[INPUT][0].width; sizes[OUTPUT][0].height = sizes[INPUT][0].height; sizes[OUTPUT][0].width = sizes[INPUT][1].height; break; case CV_GEMM_A_T: sizes[INPUT][1].height = sizes[INPUT][0].height; sizes[OUTPUT][0].height = sizes[INPUT][0].width; sizes[OUTPUT][0].width = sizes[INPUT][1].width; break; case CV_GEMM_A_T | CV_GEMM_B_T: sizes[INPUT][1].width = sizes[INPUT][0].height; sizes[OUTPUT][0].height = sizes[INPUT][0].width; sizes[OUTPUT][0].width = sizes[INPUT][1].height; break; } sizes[REF_OUTPUT][0] = sizes[OUTPUT][0]; if( cvtest::randInt(rng) & 1 ) sizes[INPUT][4] = Size(0,0); else if( !(tabc_flag & CV_GEMM_C_T) ) sizes[INPUT][4] = sizes[OUTPUT][0]; else { sizes[INPUT][4].width = sizes[OUTPUT][0].height; sizes[INPUT][4].height = sizes[OUTPUT][0].width; } } int Core_GEMMTest::prepare_test_case( int test_case_idx ) { int code = Base::prepare_test_case( test_case_idx ); if( code > 0 ) { alpha = cvGetReal2D( test_array[INPUT][2], 0, 0 ); beta = cvGetReal2D( test_array[INPUT][3], 0, 0 ); } return code; } void Core_GEMMTest::get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ) { low = Scalar::all(-10.); high = Scalar::all(10.); } void Core_GEMMTest::run_func() { cvGEMM( test_array[INPUT][0], test_array[INPUT][1], alpha, test_array[INPUT][4], beta, test_array[OUTPUT][0], tabc_flag ); } void Core_GEMMTest::prepare_to_validation( int ) { cvtest::gemm( test_mat[INPUT][0], test_mat[INPUT][1], alpha, test_array[INPUT][4] ? test_mat[INPUT][4] : Mat(), beta, test_mat[REF_OUTPUT][0], tabc_flag ); } ///////////////// multransposed ///////////////////// class Core_MulTransposedTest : public Core_MatrixTest { public: Core_MulTransposedTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); void get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ); void run_func(); void prepare_to_validation( int test_case_idx ); int order; }; Core_MulTransposedTest::Core_MulTransposedTest() : Core_MatrixTest( 2, 1, false, false, 1 ) { test_case_count = 100; order = 0; test_array[TEMP].push_back(NULL); } void Core_MulTransposedTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); int src_type = cvtest::randInt(rng) % 5; int dst_type = cvtest::randInt(rng) % 2; src_type = src_type == 0 ? CV_8U : src_type == 1 ? CV_16U : src_type == 2 ? CV_16S : src_type == 3 ? CV_32F : CV_64F; dst_type = dst_type == 0 ? CV_32F : CV_64F; dst_type = MAX( dst_type, src_type ); Core_MatrixTest::get_test_array_types_and_sizes( test_case_idx, sizes, types ); if( bits & 1 ) sizes[INPUT][1] = Size(0,0); else { sizes[INPUT][1] = sizes[INPUT][0]; if( bits & 2 ) sizes[INPUT][1].height = 1; if( bits & 4 ) sizes[INPUT][1].width = 1; } sizes[TEMP][0] = sizes[INPUT][0]; types[INPUT][0] = src_type; types[OUTPUT][0] = types[REF_OUTPUT][0] = types[INPUT][1] = types[TEMP][0] = dst_type; order = (bits & 8) != 0; sizes[OUTPUT][0].width = sizes[OUTPUT][0].height = order == 0 ? sizes[INPUT][0].height : sizes[INPUT][0].width; sizes[REF_OUTPUT][0] = sizes[OUTPUT][0]; } void Core_MulTransposedTest::get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ) { low = cvScalarAll(-10.); high = cvScalarAll(10.); } void Core_MulTransposedTest::run_func() { cvMulTransposed( test_array[INPUT][0], test_array[OUTPUT][0], order, test_array[INPUT][1] ); } void Core_MulTransposedTest::prepare_to_validation( int ) { const Mat& src = test_mat[INPUT][0]; Mat delta = test_mat[INPUT][1]; Mat& temp = test_mat[TEMP][0]; if( !delta.empty() ) { if( delta.rows < src.rows || delta.cols < src.cols ) { cv::repeat( delta, src.rows/delta.rows, src.cols/delta.cols, temp); delta = temp; } cvtest::add( src, 1, delta, -1, Scalar::all(0), temp, temp.type()); } else src.convertTo(temp, temp.type()); cvtest::gemm( temp, temp, 1., Mat(), 0, test_mat[REF_OUTPUT][0], order == 0 ? GEMM_2_T : GEMM_1_T ); } ///////////////// Transform ///////////////////// class Core_TransformTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_TransformTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); double get_success_error_level( int test_case_idx, int i, int j ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); double scale; bool diagMtx; }; Core_TransformTest::Core_TransformTest() : Core_MatrixTest( 3, 1, true, false, 4 ) { } void Core_TransformTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); int depth, dst_cn, mat_cols, mattype; Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); mat_cols = CV_MAT_CN(types[INPUT][0]); depth = CV_MAT_DEPTH(types[INPUT][0]); dst_cn = cvtest::randInt(rng) % 4 + 1; types[OUTPUT][0] = types[REF_OUTPUT][0] = CV_MAKETYPE(depth, dst_cn); mattype = depth < CV_32S ? CV_32F : depth == CV_64F ? CV_64F : bits & 1 ? CV_32F : CV_64F; types[INPUT][1] = mattype; types[INPUT][2] = CV_MAKETYPE(mattype, dst_cn); scale = 1./((cvtest::randInt(rng)%4)*50+1); if( bits & 2 ) { sizes[INPUT][2] = Size(0,0); mat_cols += (bits & 4) != 0; } else if( bits & 4 ) sizes[INPUT][2] = Size(1,1); else { if( bits & 8 ) sizes[INPUT][2] = Size(dst_cn,1); else sizes[INPUT][2] = Size(1,dst_cn); types[INPUT][2] &= ~CV_MAT_CN_MASK; } diagMtx = (bits & 16) != 0; sizes[INPUT][1] = Size(mat_cols,dst_cn); } int Core_TransformTest::prepare_test_case( int test_case_idx ) { int code = Base::prepare_test_case( test_case_idx ); if( code > 0 ) { Mat& m = test_mat[INPUT][1]; cvtest::add(m, scale, m, 0, Scalar::all(0), m, m.type() ); if(diagMtx) { Mat mask = Mat::eye(m.rows, m.cols, CV_8U)*255; mask = ~mask; m.setTo(Scalar::all(0), mask); } } return code; } double Core_TransformTest::get_success_error_level( int test_case_idx, int i, int j ) { int depth = test_mat[INPUT][0].depth(); return depth <= CV_8S ? 1 : depth <= CV_32S ? 9 : Base::get_success_error_level( test_case_idx, i, j ); } void Core_TransformTest::run_func() { CvMat _m = test_mat[INPUT][1], _shift = test_mat[INPUT][2]; cvTransform( test_array[INPUT][0], test_array[OUTPUT][0], &_m, _shift.data.ptr ? &_shift : 0); } void Core_TransformTest::prepare_to_validation( int ) { Mat transmat = test_mat[INPUT][1]; Mat shift = test_mat[INPUT][2]; cvtest::transform( test_mat[INPUT][0], test_mat[REF_OUTPUT][0], transmat, shift ); } ///////////////// PerspectiveTransform ///////////////////// class Core_PerspectiveTransformTest : public Core_MatrixTest { public: Core_PerspectiveTransformTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); double get_success_error_level( int test_case_idx, int i, int j ); void run_func(); void prepare_to_validation( int test_case_idx ); }; Core_PerspectiveTransformTest::Core_PerspectiveTransformTest() : Core_MatrixTest( 2, 1, false, false, 2 ) { } void Core_PerspectiveTransformTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); int depth, cn, mattype; Core_MatrixTest::get_test_array_types_and_sizes( test_case_idx, sizes, types ); cn = CV_MAT_CN(types[INPUT][0]) + 1; depth = CV_MAT_DEPTH(types[INPUT][0]); types[INPUT][0] = types[OUTPUT][0] = types[REF_OUTPUT][0] = CV_MAKETYPE(depth, cn); mattype = depth == CV_64F ? CV_64F : bits & 1 ? CV_32F : CV_64F; types[INPUT][1] = mattype; sizes[INPUT][1] = Size(cn + 1, cn + 1); } double Core_PerspectiveTransformTest::get_success_error_level( int test_case_idx, int i, int j ) { int depth = test_mat[INPUT][0].depth(); return depth == CV_32F ? 1e-4 : depth == CV_64F ? 1e-8 : Core_MatrixTest::get_success_error_level(test_case_idx, i, j); } void Core_PerspectiveTransformTest::run_func() { CvMat _m = test_mat[INPUT][1]; cvPerspectiveTransform( test_array[INPUT][0], test_array[OUTPUT][0], &_m ); } static void cvTsPerspectiveTransform( const CvArr* _src, CvArr* _dst, const CvMat* transmat ) { int i, j, cols; int cn, depth, mat_depth; CvMat astub, bstub, *a, *b; double mat[16]; a = cvGetMat( _src, &astub, 0, 0 ); b = cvGetMat( _dst, &bstub, 0, 0 ); cn = CV_MAT_CN(a->type); depth = CV_MAT_DEPTH(a->type); mat_depth = CV_MAT_DEPTH(transmat->type); cols = transmat->cols; // prepare cn x (cn + 1) transform matrix if( mat_depth == CV_32F ) { for( i = 0; i < transmat->rows; i++ ) for( j = 0; j < cols; j++ ) mat[i*cols + j] = ((float*)(transmat->data.ptr + transmat->step*i))[j]; } else { assert( mat_depth == CV_64F ); for( i = 0; i < transmat->rows; i++ ) for( j = 0; j < cols; j++ ) mat[i*cols + j] = ((double*)(transmat->data.ptr + transmat->step*i))[j]; } // transform data cols = a->cols * cn; vector buf(cols); for( i = 0; i < a->rows; i++ ) { uchar* src = a->data.ptr + i*a->step; uchar* dst = b->data.ptr + i*b->step; switch( depth ) { case CV_32F: for( j = 0; j < cols; j++ ) buf[j] = ((float*)src)[j]; break; case CV_64F: for( j = 0; j < cols; j++ ) buf[j] = ((double*)src)[j]; break; default: assert(0); } switch( cn ) { case 2: for( j = 0; j < cols; j += 2 ) { double t0 = buf[j]*mat[0] + buf[j+1]*mat[1] + mat[2]; double t1 = buf[j]*mat[3] + buf[j+1]*mat[4] + mat[5]; double w = buf[j]*mat[6] + buf[j+1]*mat[7] + mat[8]; w = w ? 1./w : 0; buf[j] = t0*w; buf[j+1] = t1*w; } break; case 3: for( j = 0; j < cols; j += 3 ) { double t0 = buf[j]*mat[0] + buf[j+1]*mat[1] + buf[j+2]*mat[2] + mat[3]; double t1 = buf[j]*mat[4] + buf[j+1]*mat[5] + buf[j+2]*mat[6] + mat[7]; double t2 = buf[j]*mat[8] + buf[j+1]*mat[9] + buf[j+2]*mat[10] + mat[11]; double w = buf[j]*mat[12] + buf[j+1]*mat[13] + buf[j+2]*mat[14] + mat[15]; w = w ? 1./w : 0; buf[j] = t0*w; buf[j+1] = t1*w; buf[j+2] = t2*w; } break; default: assert(0); } switch( depth ) { case CV_32F: for( j = 0; j < cols; j++ ) ((float*)dst)[j] = (float)buf[j]; break; case CV_64F: for( j = 0; j < cols; j++ ) ((double*)dst)[j] = buf[j]; break; default: assert(0); } } } void Core_PerspectiveTransformTest::prepare_to_validation( int ) { CvMat transmat = test_mat[INPUT][1]; cvTsPerspectiveTransform( test_array[INPUT][0], test_array[REF_OUTPUT][0], &transmat ); } ///////////////// Mahalanobis ///////////////////// class Core_MahalanobisTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_MahalanobisTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); }; Core_MahalanobisTest::Core_MahalanobisTest() : Core_MatrixTest( 3, 1, false, true, 1 ) { test_case_count = 100; test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); } void Core_MahalanobisTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); Core_MatrixTest::get_test_array_types_and_sizes( test_case_idx, sizes, types ); if( cvtest::randInt(rng) & 1 ) sizes[INPUT][0].width = sizes[INPUT][1].width = 1; else sizes[INPUT][0].height = sizes[INPUT][1].height = 1; sizes[TEMP][0] = sizes[TEMP][1] = sizes[INPUT][0]; sizes[INPUT][2].width = sizes[INPUT][2].height = sizes[INPUT][0].width + sizes[INPUT][0].height - 1; sizes[TEMP][2] = sizes[INPUT][2]; types[TEMP][0] = types[TEMP][1] = types[TEMP][2] = types[INPUT][0]; } int Core_MahalanobisTest::prepare_test_case( int test_case_idx ) { int code = Base::prepare_test_case( test_case_idx ); if( code > 0 ) { // make sure that the inverted "covariation" matrix is symmetrix and positively defined. cvtest::gemm( test_mat[INPUT][2], test_mat[INPUT][2], 1., Mat(), 0., test_mat[TEMP][2], GEMM_2_T ); cvtest::copy( test_mat[TEMP][2], test_mat[INPUT][2] ); } return code; } void Core_MahalanobisTest::run_func() { test_mat[OUTPUT][0].at(0,0) = cvRealScalar(cvMahalanobis(test_array[INPUT][0], test_array[INPUT][1], test_array[INPUT][2])); } void Core_MahalanobisTest::prepare_to_validation( int ) { cvtest::add( test_mat[INPUT][0], 1., test_mat[INPUT][1], -1., Scalar::all(0), test_mat[TEMP][0], test_mat[TEMP][0].type() ); if( test_mat[INPUT][0].rows == 1 ) cvtest::gemm( test_mat[TEMP][0], test_mat[INPUT][2], 1., Mat(), 0., test_mat[TEMP][1], 0 ); else cvtest::gemm( test_mat[INPUT][2], test_mat[TEMP][0], 1., Mat(), 0., test_mat[TEMP][1], 0 ); test_mat[REF_OUTPUT][0].at(0,0) = cvRealScalar(sqrt(cvtest::crossCorr(test_mat[TEMP][0], test_mat[TEMP][1]))); } ///////////////// covarmatrix ///////////////////// class Core_CovarMatrixTest : public Core_MatrixTest { public: Core_CovarMatrixTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); vector temp_hdrs; vector hdr_data; int flags, t_flag, len, count; bool are_images; }; Core_CovarMatrixTest::Core_CovarMatrixTest() : Core_MatrixTest( 1, 1, true, false, 1 ), flags(0), t_flag(0), are_images(false) { test_case_count = 100; test_array[INPUT_OUTPUT].push_back(NULL); test_array[REF_INPUT_OUTPUT].push_back(NULL); test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); } void Core_CovarMatrixTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); int i, single_matrix; Core_MatrixTest::get_test_array_types_and_sizes( test_case_idx, sizes, types ); flags = bits & (CV_COVAR_NORMAL | CV_COVAR_USE_AVG | CV_COVAR_SCALE | CV_COVAR_ROWS ); single_matrix = flags & CV_COVAR_ROWS; t_flag = (bits & 256) != 0; const int min_count = 2; if( !t_flag ) { len = sizes[INPUT][0].width; count = sizes[INPUT][0].height; count = MAX(count, min_count); sizes[INPUT][0] = Size(len, count); } else { len = sizes[INPUT][0].height; count = sizes[INPUT][0].width; count = MAX(count, min_count); sizes[INPUT][0] = Size(count, len); } if( single_matrix && t_flag ) flags = (flags & ~CV_COVAR_ROWS) | CV_COVAR_COLS; if( CV_MAT_DEPTH(types[INPUT][0]) == CV_32S ) types[INPUT][0] = (types[INPUT][0] & ~CV_MAT_DEPTH_MASK) | CV_32F; sizes[OUTPUT][0] = sizes[REF_OUTPUT][0] = flags & CV_COVAR_NORMAL ? Size(len,len) : Size(count,count); sizes[INPUT_OUTPUT][0] = sizes[REF_INPUT_OUTPUT][0] = !t_flag ? Size(len,1) : Size(1,len); sizes[TEMP][0] = sizes[INPUT][0]; types[INPUT_OUTPUT][0] = types[REF_INPUT_OUTPUT][0] = types[OUTPUT][0] = types[REF_OUTPUT][0] = types[TEMP][0] = CV_MAT_DEPTH(types[INPUT][0]) == CV_64F || (bits & 512) ? CV_64F : CV_32F; are_images = (bits & 1024) != 0; for( i = 0; i < (single_matrix ? 1 : count); i++ ) temp_hdrs.push_back(NULL); } int Core_CovarMatrixTest::prepare_test_case( int test_case_idx ) { int code = Core_MatrixTest::prepare_test_case( test_case_idx ); if( code > 0 ) { int i; int single_matrix = flags & (CV_COVAR_ROWS|CV_COVAR_COLS); int hdr_size = are_images ? sizeof(IplImage) : sizeof(CvMat); hdr_data.resize(count*hdr_size); uchar* _hdr_data = &hdr_data[0]; if( single_matrix ) { if( !are_images ) *((CvMat*)_hdr_data) = test_mat[INPUT][0]; else *((IplImage*)_hdr_data) = test_mat[INPUT][0]; temp_hdrs[0] = _hdr_data; } else for( i = 0; i < count; i++ ) { Mat part; void* ptr = _hdr_data + i*hdr_size; if( !t_flag ) part = test_mat[INPUT][0].row(i); else part = test_mat[INPUT][0].col(i); if( !are_images ) *((CvMat*)ptr) = part; else *((IplImage*)ptr) = part; temp_hdrs[i] = ptr; } } return code; } void Core_CovarMatrixTest::run_func() { cvCalcCovarMatrix( (const void**)&temp_hdrs[0], count, test_array[OUTPUT][0], test_array[INPUT_OUTPUT][0], flags ); } void Core_CovarMatrixTest::prepare_to_validation( int ) { Mat& avg = test_mat[REF_INPUT_OUTPUT][0]; double scale = 1.; if( !(flags & CV_COVAR_USE_AVG) ) { Mat hdrs0 = cvarrToMat(temp_hdrs[0]); int i; avg = Scalar::all(0); for( i = 0; i < count; i++ ) { Mat vec; if( flags & CV_COVAR_ROWS ) vec = hdrs0.row(i); else if( flags & CV_COVAR_COLS ) vec = hdrs0.col(i); else vec = cvarrToMat(temp_hdrs[i]); cvtest::add(avg, 1, vec, 1, Scalar::all(0), avg, avg.type()); } cvtest::add(avg, 1./count, avg, 0., Scalar::all(0), avg, avg.type()); } if( flags & CV_COVAR_SCALE ) { scale = 1./count; } Mat& temp0 = test_mat[TEMP][0]; cv::repeat( avg, temp0.rows/avg.rows, temp0.cols/avg.cols, temp0 ); cvtest::add( test_mat[INPUT][0], 1, temp0, -1, Scalar::all(0), temp0, temp0.type()); cvtest::gemm( temp0, temp0, scale, Mat(), 0., test_mat[REF_OUTPUT][0], t_flag ^ ((flags & CV_COVAR_NORMAL) != 0) ? CV_GEMM_A_T : CV_GEMM_B_T ); temp_hdrs.clear(); } static void cvTsFloodWithZeros( Mat& mat, RNG& rng ) { int k, total = mat.rows*mat.cols, type = mat.type(); int zero_total = cvtest::randInt(rng) % total; CV_Assert( type == CV_32FC1 || type == CV_64FC1 ); for( k = 0; k < zero_total; k++ ) { int i = cvtest::randInt(rng) % mat.rows; int j = cvtest::randInt(rng) % mat.cols; if( type == CV_32FC1 ) mat.at(i,j) = 0.f; else mat.at(i,j) = 0.; } } ///////////////// determinant ///////////////////// class Core_DetTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_DetTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); double get_success_error_level( int test_case_idx, int i, int j ); void get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); }; Core_DetTest::Core_DetTest() : Core_MatrixTest( 1, 1, false, true, 1 ) { test_case_count = 100; max_log_array_size = 7; test_array[TEMP].push_back(NULL); } void Core_DetTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); sizes[INPUT][0].width = sizes[INPUT][0].height = sizes[INPUT][0].height; sizes[TEMP][0] = sizes[INPUT][0]; types[TEMP][0] = CV_64FC1; } void Core_DetTest::get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ) { low = cvScalarAll(-2.); high = cvScalarAll(2.); } double Core_DetTest::get_success_error_level( int /*test_case_idx*/, int /*i*/, int /*j*/ ) { return CV_MAT_DEPTH(cvGetElemType(test_array[INPUT][0])) == CV_32F ? 1e-2 : 1e-5; } int Core_DetTest::prepare_test_case( int test_case_idx ) { int code = Core_MatrixTest::prepare_test_case( test_case_idx ); if( code > 0 ) cvTsFloodWithZeros( test_mat[INPUT][0], ts->get_rng() ); return code; } void Core_DetTest::run_func() { test_mat[OUTPUT][0].at(0,0) = cvRealScalar(cvDet(test_array[INPUT][0])); } // LU method that chooses the optimal in a column pivot element static double cvTsLU( CvMat* a, CvMat* b=NULL, CvMat* x=NULL, int* rank=0 ) { int i, j, k, N = a->rows, N1 = a->cols, Nm = MIN(N, N1), step = a->step/sizeof(double); int M = b ? b->cols : 0, b_step = b ? b->step/sizeof(double) : 0; int x_step = x ? x->step/sizeof(double) : 0; double *a0 = a->data.db, *b0 = b ? b->data.db : 0; double *x0 = x ? x->data.db : 0; double t, det = 1.; assert( CV_MAT_TYPE(a->type) == CV_64FC1 && (!b || CV_ARE_TYPES_EQ(a,b)) && (!x || CV_ARE_TYPES_EQ(a,x))); for( i = 0; i < Nm; i++ ) { double max_val = fabs(a0[i*step + i]); double *a1, *a2, *b1 = 0, *b2 = 0; k = i; for( j = i+1; j < N; j++ ) { t = fabs(a0[j*step + i]); if( max_val < t ) { max_val = t; k = j; } } if( k != i ) { for( j = i; j < N1; j++ ) CV_SWAP( a0[i*step + j], a0[k*step + j], t ); for( j = 0; j < M; j++ ) CV_SWAP( b0[i*b_step + j], b0[k*b_step + j], t ); det = -det; } if( max_val == 0 ) { if( rank ) *rank = i; return 0.; } a1 = a0 + i*step; a2 = a1 + step; b1 = b0 + i*b_step; b2 = b1 + b_step; for( j = i+1; j < N; j++, a2 += step, b2 += b_step ) { t = a2[i]/a1[i]; for( k = i+1; k < N1; k++ ) a2[k] -= t*a1[k]; for( k = 0; k < M; k++ ) b2[k] -= t*b1[k]; } det *= a1[i]; } if( x ) { assert( b ); for( i = N-1; i >= 0; i-- ) { double* a1 = a0 + i*step; double* b1 = b0 + i*b_step; for( j = 0; j < M; j++ ) { t = b1[j]; for( k = i+1; k < N1; k++ ) t -= a1[k]*x0[k*x_step + j]; x0[i*x_step + j] = t/a1[i]; } } } if( rank ) *rank = i; return det; } void Core_DetTest::prepare_to_validation( int ) { test_mat[INPUT][0].convertTo(test_mat[TEMP][0], test_mat[TEMP][0].type()); CvMat temp0 = test_mat[TEMP][0]; test_mat[REF_OUTPUT][0].at(0,0) = cvRealScalar(cvTsLU(&temp0, 0, 0)); } ///////////////// invert ///////////////////// class Core_InvertTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_InvertTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); void get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ); double get_success_error_level( int test_case_idx, int i, int j ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); int method, rank; double result; }; Core_InvertTest::Core_InvertTest() : Core_MatrixTest( 1, 1, false, false, 1 ), method(0), rank(0), result(0.) { test_case_count = 100; max_log_array_size = 7; test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); } void Core_InvertTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); int min_size = MIN( sizes[INPUT][0].width, sizes[INPUT][0].height ); if( (bits & 3) == 0 ) { method = CV_SVD; if( bits & 4 ) { sizes[INPUT][0] = Size(min_size, min_size); if( bits & 16 ) method = CV_CHOLESKY; } } else { method = CV_LU; sizes[INPUT][0] = Size(min_size, min_size); } sizes[TEMP][0].width = sizes[INPUT][0].height; sizes[TEMP][0].height = sizes[INPUT][0].width; sizes[TEMP][1] = sizes[INPUT][0]; types[TEMP][0] = types[INPUT][0]; types[TEMP][1] = CV_64FC1; sizes[OUTPUT][0] = sizes[REF_OUTPUT][0] = Size(min_size, min_size); } double Core_InvertTest::get_success_error_level( int /*test_case_idx*/, int, int ) { return CV_MAT_DEPTH(cvGetElemType(test_array[OUTPUT][0])) == CV_32F ? 1e-2 : 1e-6; } int Core_InvertTest::prepare_test_case( int test_case_idx ) { int code = Core_MatrixTest::prepare_test_case( test_case_idx ); if( code > 0 ) { cvTsFloodWithZeros( test_mat[INPUT][0], ts->get_rng() ); if( method == CV_CHOLESKY ) { cvtest::gemm( test_mat[INPUT][0], test_mat[INPUT][0], 1., Mat(), 0., test_mat[TEMP][0], CV_GEMM_B_T ); cvtest::copy( test_mat[TEMP][0], test_mat[INPUT][0] ); } } return code; } void Core_InvertTest::get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ) { low = cvScalarAll(-1.); high = cvScalarAll(1.); } void Core_InvertTest::run_func() { result = cvInvert(test_array[INPUT][0], test_array[TEMP][0], method); } static double cvTsSVDet( CvMat* mat, double* ratio ) { int type = CV_MAT_TYPE(mat->type); int i, nm = MIN( mat->rows, mat->cols ); CvMat* w = cvCreateMat( nm, 1, type ); double det = 1.; cvSVD( mat, w, 0, 0, 0 ); if( type == CV_32FC1 ) { for( i = 0; i < nm; i++ ) det *= w->data.fl[i]; *ratio = w->data.fl[nm-1] < FLT_EPSILON ? 0 : w->data.fl[nm-1]/w->data.fl[0]; } else { for( i = 0; i < nm; i++ ) det *= w->data.db[i]; *ratio = w->data.db[nm-1] < FLT_EPSILON ? 0 : w->data.db[nm-1]/w->data.db[0]; } cvReleaseMat( &w ); return det; } void Core_InvertTest::prepare_to_validation( int ) { Mat& input = test_mat[INPUT][0]; Mat& temp0 = test_mat[TEMP][0]; Mat& temp1 = test_mat[TEMP][1]; Mat& dst0 = test_mat[REF_OUTPUT][0]; Mat& dst = test_mat[OUTPUT][0]; CvMat _input = input; double ratio = 0, det = cvTsSVDet( &_input, &ratio ); double threshold = (input.depth() == CV_32F ? FLT_EPSILON : DBL_EPSILON)*1000; cvtest::convert( input, temp1, temp1.type() ); if( det < threshold || ((method == CV_LU || method == CV_CHOLESKY) && (result == 0 || ratio < threshold)) || ((method == CV_SVD || method == CV_SVD_SYM) && result < threshold) ) { dst = Scalar::all(0); dst0 = Scalar::all(0); return; } if( input.rows >= input.cols ) cvtest::gemm( temp0, input, 1., Mat(), 0., dst, 0 ); else cvtest::gemm( input, temp0, 1., Mat(), 0., dst, 0 ); cv::setIdentity( dst0, Scalar::all(1) ); } ///////////////// solve ///////////////////// class Core_SolveTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_SolveTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); void get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ); double get_success_error_level( int test_case_idx, int i, int j ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); int method, rank; double result; }; Core_SolveTest::Core_SolveTest() : Core_MatrixTest( 2, 1, false, false, 1 ), method(0), rank(0), result(0.) { test_case_count = 100; max_log_array_size = 7; test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); } void Core_SolveTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); CvSize in_sz = sizes[INPUT][0]; if( in_sz.width > in_sz.height ) in_sz = cvSize(in_sz.height, in_sz.width); Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); sizes[INPUT][0] = in_sz; int min_size = MIN( sizes[INPUT][0].width, sizes[INPUT][0].height ); if( (bits & 3) == 0 ) { method = CV_SVD; if( bits & 4 ) { sizes[INPUT][0] = Size(min_size, min_size); /*if( bits & 8 ) method = CV_SVD_SYM;*/ } } else { method = CV_LU; sizes[INPUT][0] = Size(min_size, min_size); } sizes[INPUT][1].height = sizes[INPUT][0].height; sizes[TEMP][0].width = sizes[INPUT][1].width; sizes[TEMP][0].height = sizes[INPUT][0].width; sizes[TEMP][1] = sizes[INPUT][0]; types[TEMP][0] = types[INPUT][0]; types[TEMP][1] = CV_64FC1; sizes[OUTPUT][0] = sizes[REF_OUTPUT][0] = Size(sizes[INPUT][1].width, min_size); } int Core_SolveTest::prepare_test_case( int test_case_idx ) { int code = Core_MatrixTest::prepare_test_case( test_case_idx ); /*if( method == CV_SVD_SYM ) { cvTsGEMM( test_array[INPUT][0], test_array[INPUT][0], 1., 0, 0., test_array[TEMP][0], CV_GEMM_B_T ); cvTsCopy( test_array[TEMP][0], test_array[INPUT][0] ); }*/ return code; } void Core_SolveTest::get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ) { low = cvScalarAll(-1.); high = cvScalarAll(1.); } double Core_SolveTest::get_success_error_level( int /*test_case_idx*/, int, int ) { return CV_MAT_DEPTH(cvGetElemType(test_array[OUTPUT][0])) == CV_32F ? 5e-2 : 1e-8; } void Core_SolveTest::run_func() { result = cvSolve(test_array[INPUT][0], test_array[INPUT][1], test_array[TEMP][0], method); } void Core_SolveTest::prepare_to_validation( int ) { //int rank = test_mat[REF_OUTPUT][0].rows; Mat& input = test_mat[INPUT][0]; Mat& dst = test_mat[OUTPUT][0]; Mat& dst0 = test_mat[REF_OUTPUT][0]; if( method == CV_LU ) { if( result == 0 ) { Mat& temp1 = test_mat[TEMP][1]; cvtest::convert(input, temp1, temp1.type()); dst = Scalar::all(0); CvMat _temp1 = temp1; double det = cvTsLU( &_temp1, 0, 0 ); dst0 = Scalar::all(det != 0); return; } double threshold = (input.type() == CV_32F ? FLT_EPSILON : DBL_EPSILON)*1000; CvMat _input = input; double ratio = 0, det = cvTsSVDet( &_input, &ratio ); if( det < threshold || ratio < threshold ) { dst = Scalar::all(0); dst0 = Scalar::all(0); return; } } Mat* pdst = input.rows <= input.cols ? &test_mat[OUTPUT][0] : &test_mat[INPUT][1]; cvtest::gemm( input, test_mat[TEMP][0], 1., test_mat[INPUT][1], -1., *pdst, 0 ); if( pdst != &dst ) cvtest::gemm( input, *pdst, 1., Mat(), 0., dst, CV_GEMM_A_T ); dst0 = Scalar::all(0); } ///////////////// SVD ///////////////////// class Core_SVDTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_SVDTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); double get_success_error_level( int test_case_idx, int i, int j ); void get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); int flags; bool have_u, have_v, symmetric, compact, vector_w; }; Core_SVDTest::Core_SVDTest() : Core_MatrixTest( 1, 4, false, false, 1 ), flags(0), have_u(false), have_v(false), symmetric(false), compact(false), vector_w(false) { test_case_count = 100; max_log_array_size = 8; test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); } void Core_SVDTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); Core_MatrixTest::get_test_array_types_and_sizes( test_case_idx, sizes, types ); int min_size, i, m, n; min_size = MIN( sizes[INPUT][0].width, sizes[INPUT][0].height ); flags = bits & (CV_SVD_MODIFY_A+CV_SVD_U_T+CV_SVD_V_T); have_u = (bits & 8) != 0; have_v = (bits & 16) != 0; symmetric = (bits & 32) != 0; compact = (bits & 64) != 0; vector_w = (bits & 128) != 0; if( symmetric ) sizes[INPUT][0] = Size(min_size, min_size); m = sizes[INPUT][0].height; n = sizes[INPUT][0].width; if( compact ) sizes[TEMP][0] = Size(min_size, min_size); else sizes[TEMP][0] = sizes[INPUT][0]; sizes[TEMP][3] = Size(0,0); if( vector_w ) { sizes[TEMP][3] = sizes[TEMP][0]; if( bits & 256 ) sizes[TEMP][0] = Size(1, min_size); else sizes[TEMP][0] = Size(min_size, 1); } if( have_u ) { sizes[TEMP][1] = compact ? Size(min_size, m) : Size(m, m); if( flags & CV_SVD_U_T ) CV_SWAP( sizes[TEMP][1].width, sizes[TEMP][1].height, i ); } else sizes[TEMP][1] = Size(0,0); if( have_v ) { sizes[TEMP][2] = compact ? Size(n, min_size) : Size(n, n); if( !(flags & CV_SVD_V_T) ) CV_SWAP( sizes[TEMP][2].width, sizes[TEMP][2].height, i ); } else sizes[TEMP][2] = Size(0,0); types[TEMP][0] = types[TEMP][1] = types[TEMP][2] = types[TEMP][3] = types[INPUT][0]; types[OUTPUT][0] = types[OUTPUT][1] = types[OUTPUT][2] = types[INPUT][0]; types[OUTPUT][3] = CV_8UC1; sizes[OUTPUT][0] = !have_u || !have_v ? Size(0,0) : sizes[INPUT][0]; sizes[OUTPUT][1] = !have_u ? Size(0,0) : compact ? Size(min_size,min_size) : Size(m,m); sizes[OUTPUT][2] = !have_v ? Size(0,0) : compact ? Size(min_size,min_size) : Size(n,n); sizes[OUTPUT][3] = Size(min_size,1); for( i = 0; i < 4; i++ ) { sizes[REF_OUTPUT][i] = sizes[OUTPUT][i]; types[REF_OUTPUT][i] = types[OUTPUT][i]; } } int Core_SVDTest::prepare_test_case( int test_case_idx ) { int code = Core_MatrixTest::prepare_test_case( test_case_idx ); if( code > 0 ) { Mat& input = test_mat[INPUT][0]; cvTsFloodWithZeros( input, ts->get_rng() ); if( symmetric && (have_u || have_v) ) { Mat& temp = test_mat[TEMP][have_u ? 1 : 2]; cvtest::gemm( input, input, 1., Mat(), 0., temp, CV_GEMM_B_T ); cvtest::copy( temp, input ); } if( (flags & CV_SVD_MODIFY_A) && test_array[OUTPUT][0] ) cvtest::copy( input, test_mat[OUTPUT][0] ); } return code; } void Core_SVDTest::get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ) { low = cvScalarAll(-2.); high = cvScalarAll(2.); } double Core_SVDTest::get_success_error_level( int test_case_idx, int i, int j ) { int input_depth = CV_MAT_DEPTH(cvGetElemType( test_array[INPUT][0] )); double input_precision = input_depth < CV_32F ? 0 : input_depth == CV_32F ? 1e-5 : 5e-11; double output_precision = Base::get_success_error_level( test_case_idx, i, j ); return MAX(input_precision, output_precision); } void Core_SVDTest::run_func() { CvArr* src = test_array[!(flags & CV_SVD_MODIFY_A) ? INPUT : OUTPUT][0]; if( !src ) src = test_array[INPUT][0]; cvSVD( src, test_array[TEMP][0], test_array[TEMP][1], test_array[TEMP][2], flags ); } void Core_SVDTest::prepare_to_validation( int /*test_case_idx*/ ) { Mat& input = test_mat[INPUT][0]; int depth = input.depth(); int i, m = input.rows, n = input.cols, min_size = MIN(m, n); Mat *src, *dst, *w; double prev = 0, threshold = depth == CV_32F ? FLT_EPSILON : DBL_EPSILON; if( have_u ) { src = &test_mat[TEMP][1]; dst = &test_mat[OUTPUT][1]; cvtest::gemm( *src, *src, 1., Mat(), 0., *dst, src->rows == dst->rows ? CV_GEMM_B_T : CV_GEMM_A_T ); cv::setIdentity( test_mat[REF_OUTPUT][1], Scalar::all(1.) ); } if( have_v ) { src = &test_mat[TEMP][2]; dst = &test_mat[OUTPUT][2]; cvtest::gemm( *src, *src, 1., Mat(), 0., *dst, src->rows == dst->rows ? CV_GEMM_B_T : CV_GEMM_A_T ); cv::setIdentity( test_mat[REF_OUTPUT][2], Scalar::all(1.) ); } w = &test_mat[TEMP][0]; for( i = 0; i < min_size; i++ ) { double normval = 0, aii; if( w->rows > 1 && w->cols > 1 ) { normval = cvtest::norm( w->row(i), NORM_L1 ); aii = depth == CV_32F ? w->at(i,i) : w->at(i,i); } else { normval = aii = depth == CV_32F ? w->at(i) : w->at(i); } normval = fabs(normval - aii); test_mat[OUTPUT][3].at(i) = aii >= 0 && normval < threshold && (i == 0 || aii <= prev); prev = aii; } test_mat[REF_OUTPUT][3] = Scalar::all(1); if( have_u && have_v ) { if( vector_w ) { test_mat[TEMP][3] = Scalar::all(0); for( i = 0; i < min_size; i++ ) { double val = depth == CV_32F ? w->at(i) : w->at(i); cvSetReal2D( test_array[TEMP][3], i, i, val ); } w = &test_mat[TEMP][3]; } if( m >= n ) { cvtest::gemm( test_mat[TEMP][1], *w, 1., Mat(), 0., test_mat[REF_OUTPUT][0], flags & CV_SVD_U_T ? CV_GEMM_A_T : 0 ); cvtest::gemm( test_mat[REF_OUTPUT][0], test_mat[TEMP][2], 1., Mat(), 0., test_mat[OUTPUT][0], flags & CV_SVD_V_T ? 0 : CV_GEMM_B_T ); } else { cvtest::gemm( *w, test_mat[TEMP][2], 1., Mat(), 0., test_mat[REF_OUTPUT][0], flags & CV_SVD_V_T ? 0 : CV_GEMM_B_T ); cvtest::gemm( test_mat[TEMP][1], test_mat[REF_OUTPUT][0], 1., Mat(), 0., test_mat[OUTPUT][0], flags & CV_SVD_U_T ? CV_GEMM_A_T : 0 ); } cvtest::copy( test_mat[INPUT][0], test_mat[REF_OUTPUT][0] ); } } ///////////////// SVBkSb ///////////////////// class Core_SVBkSbTest : public Core_MatrixTest { public: typedef Core_MatrixTest Base; Core_SVBkSbTest(); protected: void get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ); double get_success_error_level( int test_case_idx, int i, int j ); void get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ); int prepare_test_case( int test_case_idx ); void run_func(); void prepare_to_validation( int test_case_idx ); int flags; bool have_b, symmetric, compact, vector_w; }; Core_SVBkSbTest::Core_SVBkSbTest() : Core_MatrixTest( 2, 1, false, false, 1 ), flags(0), have_b(false), symmetric(false), compact(false), vector_w(false) { test_case_count = 100; test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); test_array[TEMP].push_back(NULL); } void Core_SVBkSbTest::get_test_array_types_and_sizes( int test_case_idx, vector >& sizes, vector >& types ) { RNG& rng = ts->get_rng(); int bits = cvtest::randInt(rng); Base::get_test_array_types_and_sizes( test_case_idx, sizes, types ); int min_size, i, m, n; CvSize b_size; min_size = MIN( sizes[INPUT][0].width, sizes[INPUT][0].height ); flags = bits & (CV_SVD_MODIFY_A+CV_SVD_U_T+CV_SVD_V_T); have_b = (bits & 16) != 0; symmetric = (bits & 32) != 0; compact = (bits & 64) != 0; vector_w = (bits & 128) != 0; if( symmetric ) sizes[INPUT][0] = Size(min_size, min_size); m = sizes[INPUT][0].height; n = sizes[INPUT][0].width; sizes[INPUT][1] = Size(0,0); b_size = Size(m,m); if( have_b ) { sizes[INPUT][1].height = sizes[INPUT][0].height; sizes[INPUT][1].width = cvtest::randInt(rng) % 100 + 1; b_size = sizes[INPUT][1]; } if( compact ) sizes[TEMP][0] = Size(min_size, min_size); else sizes[TEMP][0] = sizes[INPUT][0]; if( vector_w ) { if( bits & 256 ) sizes[TEMP][0] = Size(1, min_size); else sizes[TEMP][0] = Size(min_size, 1); } sizes[TEMP][1] = compact ? Size(min_size, m) : Size(m, m); if( flags & CV_SVD_U_T ) CV_SWAP( sizes[TEMP][1].width, sizes[TEMP][1].height, i ); sizes[TEMP][2] = compact ? Size(n, min_size) : Size(n, n); if( !(flags & CV_SVD_V_T) ) CV_SWAP( sizes[TEMP][2].width, sizes[TEMP][2].height, i ); types[TEMP][0] = types[TEMP][1] = types[TEMP][2] = types[INPUT][0]; types[OUTPUT][0] = types[REF_OUTPUT][0] = types[INPUT][0]; sizes[OUTPUT][0] = sizes[REF_OUTPUT][0] = Size( b_size.width, n ); } int Core_SVBkSbTest::prepare_test_case( int test_case_idx ) { int code = Base::prepare_test_case( test_case_idx ); if( code > 0 ) { Mat& input = test_mat[INPUT][0]; cvTsFloodWithZeros( input, ts->get_rng() ); if( symmetric ) { Mat& temp = test_mat[TEMP][1]; cvtest::gemm( input, input, 1., Mat(), 0., temp, CV_GEMM_B_T ); cvtest::copy( temp, input ); } CvMat _input = input; cvSVD( &_input, test_array[TEMP][0], test_array[TEMP][1], test_array[TEMP][2], flags ); } return code; } void Core_SVBkSbTest::get_minmax_bounds( int /*i*/, int /*j*/, int /*type*/, Scalar& low, Scalar& high ) { low = cvScalarAll(-2.); high = cvScalarAll(2.); } double Core_SVBkSbTest::get_success_error_level( int /*test_case_idx*/, int /*i*/, int /*j*/ ) { return CV_MAT_DEPTH(cvGetElemType(test_array[INPUT][0])) == CV_32F ? 1e-3 : 1e-7; } void Core_SVBkSbTest::run_func() { cvSVBkSb( test_array[TEMP][0], test_array[TEMP][1], test_array[TEMP][2], test_array[INPUT][1], test_array[OUTPUT][0], flags ); } void Core_SVBkSbTest::prepare_to_validation( int ) { Mat& input = test_mat[INPUT][0]; int i, m = input.rows, n = input.cols, min_size = MIN(m, n); bool is_float = input.type() == CV_32F; Size w_size = compact ? Size(min_size,min_size) : Size(m,n); Mat& w = test_mat[TEMP][0]; Mat wdb( w_size.height, w_size.width, CV_64FC1 ); CvMat _w = w, _wdb = wdb; // use exactly the same threshold as in icvSVD... , // so the changes in the library and here should be synchronized. double threshold = cv::sum(w)[0]*(DBL_EPSILON*2);//(is_float ? FLT_EPSILON*10 : DBL_EPSILON*2); wdb = Scalar::all(0); for( i = 0; i < min_size; i++ ) { double wii = vector_w ? cvGetReal1D(&_w,i) : cvGetReal2D(&_w,i,i); cvSetReal2D( &_wdb, i, i, wii > threshold ? 1./wii : 0. ); } Mat u = test_mat[TEMP][1]; Mat v = test_mat[TEMP][2]; Mat b = test_mat[INPUT][1]; if( is_float ) { test_mat[TEMP][1].convertTo(u, CV_64F); test_mat[TEMP][2].convertTo(v, CV_64F); if( !b.empty() ) test_mat[INPUT][1].convertTo(b, CV_64F); } Mat t0, t1; if( !b.empty() ) cvtest::gemm( u, b, 1., Mat(), 0., t0, !(flags & CV_SVD_U_T) ? CV_GEMM_A_T : 0 ); else if( flags & CV_SVD_U_T ) cvtest::copy( u, t0 ); else cvtest::transpose( u, t0 ); cvtest::gemm( wdb, t0, 1, Mat(), 0, t1, 0 ); cvtest::gemm( v, t1, 1, Mat(), 0, t0, flags & CV_SVD_V_T ? CV_GEMM_A_T : 0 ); Mat& dst0 = test_mat[REF_OUTPUT][0]; t0.convertTo(dst0, dst0.type() ); } typedef std::complex complex_type; struct pred_complex { bool operator() (const complex_type& lhs, const complex_type& rhs) const { return fabs(lhs.real() - rhs.real()) > fabs(rhs.real())*FLT_EPSILON ? lhs.real() < rhs.real() : lhs.imag() < rhs.imag(); } }; struct pred_double { bool operator() (const double& lhs, const double& rhs) const { return lhs < rhs; } }; class Core_SolvePolyTest : public cvtest::BaseTest { public: Core_SolvePolyTest(); ~Core_SolvePolyTest(); protected: virtual void run( int start_from ); }; Core_SolvePolyTest::Core_SolvePolyTest() {} Core_SolvePolyTest::~Core_SolvePolyTest() {} void Core_SolvePolyTest::run( int ) { RNG& rng = ts->get_rng(); int fig = 100; double range = 50; double err_eps = 1e-4; for (int idx = 0, max_idx = 1000, progress = 0; idx < max_idx; ++idx) { progress = update_progress(progress, idx-1, max_idx, 0); int n = cvtest::randInt(rng) % 13 + 1; std::vector r(n), ar(n), c(n + 1, 0); std::vector a(n + 1), u(n * 2), ar1(n), ar2(n); int rr_odds = 3; // odds that we get a real root for (int j = 0; j < n;) { if (cvtest::randInt(rng) % rr_odds == 0 || j == n - 1) r[j++] = cvtest::randReal(rng) * range; else { r[j] = complex_type(cvtest::randReal(rng) * range, cvtest::randReal(rng) * range + 1); r[j + 1] = std::conj(r[j]); j += 2; } } for (int j = 0, k = 1 << n, jj, kk; j < k; ++j) { int p = 0; complex_type v(1); for (jj = 0, kk = 1; jj < n && !(j & kk); ++jj, ++p, kk <<= 1) ; for (; jj < n; ++jj, kk <<= 1) { if (j & kk) v *= -r[jj]; else ++p; } c[p] += v; } bool pass = false; double div = 0, s = 0; int cubic_case = idx & 1; for (int maxiter = 100; !pass && maxiter < 10000; maxiter *= 2, cubic_case = (cubic_case + 1) % 2) { for (int j = 0; j < n + 1; ++j) a[j] = c[j].real(); CvMat amat, umat; cvInitMatHeader(&amat, n + 1, 1, CV_64FC1, &a[0]); cvInitMatHeader(&umat, n, 1, CV_64FC2, &u[0]); cvSolvePoly(&amat, &umat, maxiter, fig); for (int j = 0; j < n; ++j) ar[j] = complex_type(u[j * 2], u[j * 2 + 1]); std::sort(r.begin(), r.end(), pred_complex()); std::sort(ar.begin(), ar.end(), pred_complex()); pass = true; if( n == 3 ) { ar2.resize(n); cv::Mat _umat2(3, 1, CV_64F, &ar2[0]), umat2 = _umat2; cvFlip(&amat, &amat, 0); int nr2; if( cubic_case == 0 ) nr2 = cv::solveCubic(cv::Mat(&amat),umat2); else nr2 = cv::solveCubic(cv::Mat_(cv::Mat(&amat)), umat2); cvFlip(&amat, &amat, 0); if(nr2 > 0) std::sort(ar2.begin(), ar2.begin()+nr2, pred_double()); ar2.resize(nr2); int nr1 = 0; for(int j = 0; j < n; j++) if( fabs(r[j].imag()) < DBL_EPSILON ) ar1[nr1++] = r[j].real(); pass = pass && nr1 == nr2; if( nr2 > 0 ) { div = s = 0; for(int j = 0; j < nr1; j++) { s += fabs(ar1[j]); div += fabs(ar1[j] - ar2[j]); } div /= s; pass = pass && div < err_eps; } } div = s = 0; for (int j = 0; j < n; ++j) { s += fabs(r[j].real()) + fabs(r[j].imag()); div += sqrt(pow(r[j].real() - ar[j].real(), 2) + pow(r[j].imag() - ar[j].imag(), 2)); } div /= s; pass = pass && div < err_eps; } if (!pass) { ts->set_failed_test_info(cvtest::TS::FAIL_INVALID_OUTPUT); ts->printf( cvtest::TS::LOG, "too big diff = %g\n", div ); for (size_t j=0;jprintf( cvtest::TS::LOG, "ar2[%d]=%g\n", j, ar2[j]); ts->printf(cvtest::TS::LOG, "\n"); for (size_t j=0;jprintf( cvtest::TS::LOG, "r[%d]=(%g, %g)\n", j, r[j].real(), r[j].imag()); ts->printf( cvtest::TS::LOG, "\n" ); for (size_t j=0;jprintf( cvtest::TS::LOG, "ar[%d]=(%g, %g)\n", j, ar[j].real(), ar[j].imag()); break; } } } class Core_CheckRange_Empty : public cvtest::BaseTest { public: Core_CheckRange_Empty(){} ~Core_CheckRange_Empty(){} protected: virtual void run( int start_from ); }; void Core_CheckRange_Empty::run( int ) { cv::Mat m; ASSERT_TRUE( cv::checkRange(m) ); } TEST(Core_CheckRange_Empty, accuracy) { Core_CheckRange_Empty test; test.safe_run(); } class Core_CheckRange_INT_MAX : public cvtest::BaseTest { public: Core_CheckRange_INT_MAX(){} ~Core_CheckRange_INT_MAX(){} protected: virtual void run( int start_from ); }; void Core_CheckRange_INT_MAX::run( int ) { cv::Mat m(3, 3, CV_32SC1, cv::Scalar(INT_MAX)); ASSERT_FALSE( cv::checkRange(m, true, 0, 0, INT_MAX) ); ASSERT_TRUE( cv::checkRange(m) ); } TEST(Core_CheckRange_INT_MAX, accuracy) { Core_CheckRange_INT_MAX test; test.safe_run(); } template class Core_CheckRange : public testing::Test {}; TYPED_TEST_CASE_P(Core_CheckRange); TYPED_TEST_P(Core_CheckRange, Negative) { double min_bound = 4.5; double max_bound = 16.0; TypeParam data[] = {5, 10, 15, 4, 10 ,2, 8, 12, 14}; cv::Mat src = cv::Mat(3,3, cv::DataDepth::value, data); cv::Point* bad_pt = new cv::Point(0, 0); ASSERT_FALSE(checkRange(src, true, bad_pt, min_bound, max_bound)); ASSERT_EQ(bad_pt->x,0); ASSERT_EQ(bad_pt->y,1); delete bad_pt; } TYPED_TEST_P(Core_CheckRange, Positive) { double min_bound = -1; double max_bound = 16.0; TypeParam data[] = {5, 10, 15, 4, 10 ,2, 8, 12, 14}; cv::Mat src = cv::Mat(3,3, cv::DataDepth::value, data); cv::Point* bad_pt = new cv::Point(0, 0); ASSERT_TRUE(checkRange(src, true, bad_pt, min_bound, max_bound)); ASSERT_EQ(bad_pt->x,0); ASSERT_EQ(bad_pt->y,0); delete bad_pt; } TYPED_TEST_P(Core_CheckRange, Bounds) { double min_bound = 24.5; double max_bound = 1.0; TypeParam data[] = {5, 10, 15, 4, 10 ,2, 8, 12, 14}; cv::Mat src = cv::Mat(3,3, cv::DataDepth::value, data); cv::Point* bad_pt = new cv::Point(0, 0); ASSERT_FALSE(checkRange(src, true, bad_pt, min_bound, max_bound)); ASSERT_EQ(bad_pt->x,0); ASSERT_EQ(bad_pt->y,0); delete bad_pt; } TYPED_TEST_P(Core_CheckRange, Zero) { double min_bound = 0.0; double max_bound = 0.1; cv::Mat src = cv::Mat::zeros(3,3, cv::DataDepth::value); ASSERT_TRUE( checkRange(src, true, NULL, min_bound, max_bound) ); } REGISTER_TYPED_TEST_CASE_P(Core_CheckRange, Negative, Positive, Bounds, Zero); typedef ::testing::Types mat_data_types; INSTANTIATE_TYPED_TEST_CASE_P(Negative_Test, Core_CheckRange, mat_data_types); ///////////////////////////////////////////////////////////////////////////////////////////////////// TEST(Core_CovarMatrix, accuracy) { Core_CovarMatrixTest test; test.safe_run(); } TEST(Core_CrossProduct, accuracy) { Core_CrossProductTest test; test.safe_run(); } TEST(Core_Determinant, accuracy) { Core_DetTest test; test.safe_run(); } TEST(Core_DotProduct, accuracy) { Core_DotProductTest test; test.safe_run(); } TEST(Core_GEMM, accuracy) { Core_GEMMTest test; test.safe_run(); } TEST(Core_Invert, accuracy) { Core_InvertTest test; test.safe_run(); } TEST(Core_Mahalanobis, accuracy) { Core_MahalanobisTest test; test.safe_run(); } TEST(Core_MulTransposed, accuracy) { Core_MulTransposedTest test; test.safe_run(); } TEST(Core_Transform, accuracy) { Core_TransformTest test; test.safe_run(); } TEST(Core_PerspectiveTransform, accuracy) { Core_PerspectiveTransformTest test; test.safe_run(); } TEST(Core_Pow, accuracy) { Core_PowTest test; test.safe_run(); } TEST(Core_SolveLinearSystem, accuracy) { Core_SolveTest test; test.safe_run(); } TEST(Core_SVD, accuracy) { Core_SVDTest test; test.safe_run(); } TEST(Core_SVBkSb, accuracy) { Core_SVBkSbTest test; test.safe_run(); } TEST(Core_Trace, accuracy) { Core_TraceTest test; test.safe_run(); } TEST(Core_SolvePoly, accuracy) { Core_SolvePolyTest test; test.safe_run(); } // TODO: eigenvv, invsqrt, cbrt, fastarctan, (round, floor, ceil(?)), class CV_KMeansSingularTest : public cvtest::BaseTest { public: CV_KMeansSingularTest() {} ~CV_KMeansSingularTest() {} protected: void run(int) { int i, iter = 0, N = 0, N0 = 0, K = 0, dims = 0; Mat labels; try { RNG& rng = theRNG(); const int MAX_DIM=5; int MAX_POINTS = 100, maxIter = 100; for( iter = 0; iter < maxIter; iter++ ) { ts->update_context(this, iter, true); dims = rng.uniform(1, MAX_DIM+1); N = rng.uniform(1, MAX_POINTS+1); N0 = rng.uniform(1, MAX(N/10, 2)); K = rng.uniform(1, N+1); Mat data0(N0, dims, CV_32F); rng.fill(data0, RNG::UNIFORM, -1, 1); Mat data(N, dims, CV_32F); for( i = 0; i < N; i++ ) data0.row(rng.uniform(0, N0)).copyTo(data.row(i)); kmeans(data, K, labels, TermCriteria(TermCriteria::MAX_ITER+TermCriteria::EPS, 30, 0), 5, KMEANS_PP_CENTERS); Mat hist(K, 1, CV_32S, Scalar(0)); for( i = 0; i < N; i++ ) { int l = labels.at(i); CV_Assert(0 <= l && l < K); hist.at(l)++; } for( i = 0; i < K; i++ ) CV_Assert( hist.at(i) != 0 ); } } catch(...) { ts->printf(cvtest::TS::LOG, "context: iteration=%d, N=%d, N0=%d, K=%d\n", iter, N, N0, K); std::cout << labels << std::endl; ts->set_failed_test_info(cvtest::TS::FAIL_MISMATCH); } } }; TEST(Core_KMeans, singular) { CV_KMeansSingularTest test; test.safe_run(); } TEST(CovariationMatrixVectorOfMat, accuracy) { unsigned int col_problem_size = 8, row_problem_size = 8, vector_size = 16; cv::Mat src(vector_size, col_problem_size * row_problem_size, CV_32F); int singleMatFlags = CV_COVAR_ROWS; cv::Mat gold; cv::Mat goldMean; cv::randu(src,cv::Scalar(-128), cv::Scalar(128)); cv::calcCovarMatrix(src,gold,goldMean,singleMatFlags,CV_32F); std::vector srcVec; for(size_t i = 0; i < vector_size; i++) { srcVec.push_back(src.row(static_cast(i)).reshape(0,col_problem_size)); } cv::Mat actual; cv::Mat actualMean; cv::calcCovarMatrix(srcVec, actual, actualMean,singleMatFlags,CV_32F); cv::Mat diff; cv::absdiff(gold, actual, diff); cv::Scalar s = cv::sum(diff); ASSERT_EQ(s.dot(s), 0.0); cv::Mat meanDiff; cv::absdiff(goldMean, actualMean.reshape(0,1), meanDiff); cv::Scalar sDiff = cv::sum(meanDiff); ASSERT_EQ(sDiff.dot(sDiff), 0.0); } TEST(CovariationMatrixVectorOfMatWithMean, accuracy) { unsigned int col_problem_size = 8, row_problem_size = 8, vector_size = 16; cv::Mat src(vector_size, col_problem_size * row_problem_size, CV_32F); int singleMatFlags = CV_COVAR_ROWS | CV_COVAR_USE_AVG; cv::Mat gold; cv::randu(src,cv::Scalar(-128), cv::Scalar(128)); cv::Mat goldMean; cv::reduce(src,goldMean,0 ,CV_REDUCE_AVG, CV_32F); cv::calcCovarMatrix(src,gold,goldMean,singleMatFlags,CV_32F); std::vector srcVec; for(size_t i = 0; i < vector_size; i++) { srcVec.push_back(src.row(static_cast(i)).reshape(0,col_problem_size)); } cv::Mat actual; cv::Mat actualMean = goldMean.reshape(0, row_problem_size); cv::calcCovarMatrix(srcVec, actual, actualMean,singleMatFlags,CV_32F); cv::Mat diff; cv::absdiff(gold, actual, diff); cv::Scalar s = cv::sum(diff); ASSERT_EQ(s.dot(s), 0.0); cv::Mat meanDiff; cv::absdiff(goldMean, actualMean.reshape(0,1), meanDiff); cv::Scalar sDiff = cv::sum(meanDiff); ASSERT_EQ(sDiff.dot(sDiff), 0.0); } /* End of file. */