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585 lines
22 KiB
585 lines
22 KiB
/*M/////////////////////////////////////////////////////////////////////////////////////// |
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// |
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// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING. |
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// |
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// By downloading, copying, installing or using the software you agree to this license. |
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// If you do not agree to this license, do not download, install, |
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// copy or use the software. |
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// |
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// |
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// Intel License Agreement |
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// For Open Source Computer Vision Library |
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// |
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// Copyright (C) 2000, Intel Corporation, all rights reserved. |
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// Third party copyrights are property of their respective owners. |
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// |
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// Redistribution and use in source and binary forms, with or without modification, |
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// are permitted provided that the following conditions are met: |
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// |
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// * Redistribution's of source code must retain the above copyright notice, |
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// this list of conditions and the following disclaimer. |
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// |
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// * Redistribution's in binary form must reproduce the above copyright notice, |
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// this list of conditions and the following disclaimer in the documentation |
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// and/or other materials provided with the distribution. |
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// |
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// * The name of Intel Corporation may not be used to endorse or promote products |
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// derived from this software without specific prior written permission. |
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// |
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// This software is provided by the copyright holders and contributors "as is" and |
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// any express or implied warranties, including, but not limited to, the implied |
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// warranties of merchantability and fitness for a particular purpose are disclaimed. |
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// In no event shall the Intel Corporation or contributors be liable for any direct, |
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// indirect, incidental, special, exemplary, or consequential damages |
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// (including, but not limited to, procurement of substitute goods or services; |
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// loss of use, data, or profits; or business interruption) however caused |
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// and on any theory of liability, whether in contract, strict liability, |
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// or tort (including negligence or otherwise) arising in any way out of |
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// the use of this software, even if advised of the possibility of such damage. |
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// |
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//M*/ |
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#include "test_precomp.hpp" |
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#include "test_chessboardgenerator.hpp" |
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#include <functional> |
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namespace opencv_test { namespace { |
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#define _L2_ERR |
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//#define DEBUG_CHESSBOARD |
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#ifdef DEBUG_CHESSBOARD |
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void show_points( const Mat& gray, const Mat& expected, const vector<Point2f>& actual, bool was_found ) |
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{ |
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Mat rgb( gray.size(), CV_8U); |
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merge(vector<Mat>(3, gray), rgb); |
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for(size_t i = 0; i < actual.size(); i++ ) |
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circle( rgb, actual[i], 5, Scalar(0, 0, 200), 1, LINE_AA); |
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if( !expected.empty() ) |
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{ |
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const Point2f* u_data = expected.ptr<Point2f>(); |
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size_t count = expected.cols * expected.rows; |
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for(size_t i = 0; i < count; i++ ) |
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circle(rgb, u_data[i], 4, Scalar(0, 240, 0), 1, LINE_AA); |
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} |
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putText(rgb, was_found ? "FOUND !!!" : "NOT FOUND", Point(5, 20), FONT_HERSHEY_PLAIN, 1, Scalar(0, 240, 0)); |
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imshow( "test", rgb ); while ((uchar)waitKey(0) != 'q') {}; |
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} |
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#else |
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#define show_points(...) |
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#endif |
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enum Pattern { CHESSBOARD, CIRCLES_GRID, ASYMMETRIC_CIRCLES_GRID }; |
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class CV_ChessboardDetectorTest : public cvtest::BaseTest |
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{ |
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public: |
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CV_ChessboardDetectorTest( Pattern pattern, int algorithmFlags = 0 ); |
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protected: |
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void run(int); |
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void run_batch(const string& filename); |
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bool checkByGenerator(); |
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Pattern pattern; |
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int algorithmFlags; |
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}; |
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CV_ChessboardDetectorTest::CV_ChessboardDetectorTest( Pattern _pattern, int _algorithmFlags ) |
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{ |
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pattern = _pattern; |
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algorithmFlags = _algorithmFlags; |
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} |
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double calcError(const vector<Point2f>& v, const Mat& u) |
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{ |
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int count_exp = u.cols * u.rows; |
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const Point2f* u_data = u.ptr<Point2f>(); |
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double err = std::numeric_limits<double>::max(); |
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for( int k = 0; k < 2; ++k ) |
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{ |
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double err1 = 0; |
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for( int j = 0; j < count_exp; ++j ) |
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{ |
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int j1 = k == 0 ? j : count_exp - j - 1; |
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double dx = fabs( v[j].x - u_data[j1].x ); |
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double dy = fabs( v[j].y - u_data[j1].y ); |
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#if defined(_L2_ERR) |
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err1 += dx*dx + dy*dy; |
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#else |
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dx = MAX( dx, dy ); |
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if( dx > err1 ) |
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err1 = dx; |
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#endif //_L2_ERR |
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//printf("dx = %f\n", dx); |
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} |
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//printf("\n"); |
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err = min(err, err1); |
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} |
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#if defined(_L2_ERR) |
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err = sqrt(err/count_exp); |
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#endif //_L2_ERR |
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return err; |
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} |
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const double rough_success_error_level = 2.5; |
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const double precise_success_error_level = 2; |
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/* ///////////////////// chess_corner_test ///////////////////////// */ |
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void CV_ChessboardDetectorTest::run( int /*start_from */) |
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{ |
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ts->set_failed_test_info( cvtest::TS::OK ); |
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/*if (!checkByGenerator()) |
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return;*/ |
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switch( pattern ) |
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{ |
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case CHESSBOARD: |
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checkByGenerator(); |
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if (ts->get_err_code() != cvtest::TS::OK) |
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{ |
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break; |
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} |
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run_batch("negative_list.dat"); |
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if (ts->get_err_code() != cvtest::TS::OK) |
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{ |
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break; |
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} |
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run_batch("chessboard_list.dat"); |
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if (ts->get_err_code() != cvtest::TS::OK) |
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{ |
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break; |
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} |
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run_batch("chessboard_list_subpixel.dat"); |
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break; |
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case CIRCLES_GRID: |
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run_batch("circles_list.dat"); |
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break; |
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case ASYMMETRIC_CIRCLES_GRID: |
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run_batch("acircles_list.dat"); |
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break; |
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} |
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} |
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void CV_ChessboardDetectorTest::run_batch( const string& filename ) |
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{ |
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ts->printf(cvtest::TS::LOG, "\nRunning batch %s\n", filename.c_str()); |
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//#define WRITE_POINTS 1 |
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#ifndef WRITE_POINTS |
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double max_rough_error = 0, max_precise_error = 0; |
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#endif |
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string folder; |
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switch( pattern ) |
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{ |
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case CHESSBOARD: |
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folder = string(ts->get_data_path()) + "cv/cameracalibration/"; |
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break; |
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case CIRCLES_GRID: |
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folder = string(ts->get_data_path()) + "cv/cameracalibration/circles/"; |
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break; |
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case ASYMMETRIC_CIRCLES_GRID: |
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folder = string(ts->get_data_path()) + "cv/cameracalibration/asymmetric_circles/"; |
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break; |
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} |
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FileStorage fs( folder + filename, FileStorage::READ ); |
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FileNode board_list = fs["boards"]; |
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if( !fs.isOpened() || board_list.empty() || !board_list.isSeq() || board_list.size() % 2 != 0 ) |
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{ |
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ts->printf( cvtest::TS::LOG, "%s can not be read or is not valid\n", (folder + filename).c_str() ); |
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ts->printf( cvtest::TS::LOG, "fs.isOpened=%d, board_list.empty=%d, board_list.isSeq=%d,board_list.size()%2=%d\n", |
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fs.isOpened(), (int)board_list.empty(), board_list.isSeq(), board_list.size()%2); |
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ts->set_failed_test_info( cvtest::TS::FAIL_MISSING_TEST_DATA ); |
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return; |
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} |
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int progress = 0; |
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int max_idx = (int)board_list.size()/2; |
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double sum_error = 0.0; |
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int count = 0; |
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for(int idx = 0; idx < max_idx; ++idx ) |
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{ |
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ts->update_context( this, idx, true ); |
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/* read the image */ |
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String img_file = board_list[idx * 2]; |
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Mat gray = imread( folder + img_file, 0); |
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if( gray.empty() ) |
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{ |
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ts->printf( cvtest::TS::LOG, "one of chessboard images can't be read: %s\n", img_file.c_str() ); |
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ts->set_failed_test_info( cvtest::TS::FAIL_MISSING_TEST_DATA ); |
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return; |
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} |
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String _filename = folder + (String)board_list[idx * 2 + 1]; |
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bool doesContatinChessboard; |
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Mat expected; |
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{ |
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FileStorage fs1(_filename, FileStorage::READ); |
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fs1["corners"] >> expected; |
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fs1["isFound"] >> doesContatinChessboard; |
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fs1.release(); |
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} |
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size_t count_exp = static_cast<size_t>(expected.cols * expected.rows); |
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Size pattern_size = expected.size(); |
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vector<Point2f> v; |
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bool result = false; |
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switch( pattern ) |
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{ |
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case CHESSBOARD: |
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result = findChessboardCorners(gray, pattern_size, v, CALIB_CB_ADAPTIVE_THRESH | CALIB_CB_NORMALIZE_IMAGE); |
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break; |
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case CIRCLES_GRID: |
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result = findCirclesGrid(gray, pattern_size, v); |
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break; |
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case ASYMMETRIC_CIRCLES_GRID: |
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result = findCirclesGrid(gray, pattern_size, v, CALIB_CB_ASYMMETRIC_GRID | algorithmFlags); |
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break; |
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} |
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if( result ^ doesContatinChessboard || v.size() != count_exp ) |
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{ |
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ts->printf( cvtest::TS::LOG, "chessboard is detected incorrectly in %s\n", img_file.c_str() ); |
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ts->set_failed_test_info( cvtest::TS::FAIL_INVALID_OUTPUT ); |
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return; |
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} |
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if( result ) |
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{ |
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#ifndef WRITE_POINTS |
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double err = calcError(v, expected); |
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max_rough_error = MAX( max_rough_error, err ); |
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#endif |
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if( pattern == CHESSBOARD ) |
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cornerSubPix( gray, v, Size(5, 5), Size(-1,-1), TermCriteria(TermCriteria::EPS|TermCriteria::MAX_ITER, 30, 0.1)); |
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//find4QuadCornerSubpix(gray, v, Size(5, 5)); |
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show_points( gray, expected, v, result ); |
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#ifndef WRITE_POINTS |
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// printf("called find4QuadCornerSubpix\n"); |
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err = calcError(v, expected); |
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sum_error += err; |
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count++; |
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if( err > precise_success_error_level ) |
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{ |
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ts->printf( cvtest::TS::LOG, "Image %s: bad accuracy of adjusted corners %f\n", img_file.c_str(), err ); |
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ts->set_failed_test_info( cvtest::TS::FAIL_BAD_ACCURACY ); |
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return; |
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} |
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ts->printf(cvtest::TS::LOG, "Error on %s is %f\n", img_file.c_str(), err); |
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max_precise_error = MAX( max_precise_error, err ); |
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#endif |
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} |
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else |
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{ |
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show_points( gray, Mat(), v, result ); |
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} |
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#ifdef WRITE_POINTS |
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Mat mat_v(pattern_size, CV_32FC2, (void*)&v[0]); |
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FileStorage fs(_filename, FileStorage::WRITE); |
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fs << "isFound" << result; |
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fs << "corners" << mat_v; |
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fs.release(); |
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#endif |
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progress = update_progress( progress, idx, max_idx, 0 ); |
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} |
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if (count != 0) |
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sum_error /= count; |
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ts->printf(cvtest::TS::LOG, "Average error is %f (%d patterns have been found)\n", sum_error, count); |
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} |
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double calcErrorMinError(const Size& cornSz, const vector<Point2f>& corners_found, const vector<Point2f>& corners_generated) |
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{ |
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Mat m1(cornSz, CV_32FC2, (Point2f*)&corners_generated[0]); |
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Mat m2; flip(m1, m2, 0); |
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Mat m3; flip(m1, m3, 1); m3 = m3.t(); flip(m3, m3, 1); |
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Mat m4 = m1.t(); flip(m4, m4, 1); |
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double min1 = min(calcError(corners_found, m1), calcError(corners_found, m2)); |
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double min2 = min(calcError(corners_found, m3), calcError(corners_found, m4)); |
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return min(min1, min2); |
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} |
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bool validateData(const ChessBoardGenerator& cbg, const Size& imgSz, |
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const vector<Point2f>& corners_generated) |
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{ |
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Size cornersSize = cbg.cornersSize(); |
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Mat_<Point2f> mat(cornersSize.height, cornersSize.width, (Point2f*)&corners_generated[0]); |
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double minNeibDist = std::numeric_limits<double>::max(); |
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double tmp = 0; |
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for(int i = 1; i < mat.rows - 2; ++i) |
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for(int j = 1; j < mat.cols - 2; ++j) |
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{ |
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const Point2f& cur = mat(i, j); |
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tmp = cv::norm(cur - mat(i + 1, j + 1)); // TODO cvtest |
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if (tmp < minNeibDist) |
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minNeibDist = tmp; |
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tmp = cv::norm(cur - mat(i - 1, j + 1)); // TODO cvtest |
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if (tmp < minNeibDist) |
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minNeibDist = tmp; |
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tmp = cv::norm(cur - mat(i + 1, j - 1)); // TODO cvtest |
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if (tmp < minNeibDist) |
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minNeibDist = tmp; |
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tmp = cv::norm(cur - mat(i - 1, j - 1)); // TODO cvtest |
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if (tmp < minNeibDist) |
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minNeibDist = tmp; |
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} |
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const double threshold = 0.25; |
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double cbsize = (max(cornersSize.width, cornersSize.height) + 1) * minNeibDist; |
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int imgsize = min(imgSz.height, imgSz.width); |
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return imgsize * threshold < cbsize; |
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} |
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bool CV_ChessboardDetectorTest::checkByGenerator() |
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{ |
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bool res = true; |
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//theRNG() = 0x58e6e895b9913160; |
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//cv::DefaultRngAuto dra; |
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//theRNG() = *ts->get_rng(); |
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Mat bg(Size(800, 600), CV_8UC3, Scalar::all(255)); |
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randu(bg, Scalar::all(0), Scalar::all(255)); |
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GaussianBlur(bg, bg, Size(7,7), 3.0); |
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Mat_<float> camMat(3, 3); |
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camMat << 300.f, 0.f, bg.cols/2.f, 0, 300.f, bg.rows/2.f, 0.f, 0.f, 1.f; |
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Mat_<float> distCoeffs(1, 5); |
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distCoeffs << 1.2f, 0.2f, 0.f, 0.f, 0.f; |
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const Size sizes[] = { Size(6, 6), Size(8, 6), Size(11, 12), Size(5, 4) }; |
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const size_t sizes_num = sizeof(sizes)/sizeof(sizes[0]); |
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const int test_num = 16; |
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int progress = 0; |
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for(int i = 0; i < test_num; ++i) |
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{ |
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progress = update_progress( progress, i, test_num, 0 ); |
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ChessBoardGenerator cbg(sizes[i % sizes_num]); |
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vector<Point2f> corners_generated; |
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Mat cb = cbg(bg, camMat, distCoeffs, corners_generated); |
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if(!validateData(cbg, cb.size(), corners_generated)) |
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{ |
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ts->printf( cvtest::TS::LOG, "Chess board skipped - too small" ); |
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continue; |
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} |
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/*cb = cb * 0.8 + Scalar::all(30); |
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GaussianBlur(cb, cb, Size(3, 3), 0.8); */ |
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//cv::addWeighted(cb, 0.8, bg, 0.2, 20, cb); |
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//cv::namedWindow("CB"); cv::imshow("CB", cb); cv::waitKey(); |
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vector<Point2f> corners_found; |
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int flags = i % 8; // need to check branches for all flags |
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bool found = findChessboardCorners(cb, cbg.cornersSize(), corners_found, flags); |
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if (!found) |
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{ |
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ts->printf( cvtest::TS::LOG, "Chess board corners not found\n" ); |
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ts->set_failed_test_info( cvtest::TS::FAIL_BAD_ACCURACY ); |
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res = false; |
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return res; |
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} |
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double err = calcErrorMinError(cbg.cornersSize(), corners_found, corners_generated); |
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if( err > rough_success_error_level ) |
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{ |
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ts->printf( cvtest::TS::LOG, "bad accuracy of corner guesses" ); |
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ts->set_failed_test_info( cvtest::TS::FAIL_BAD_ACCURACY ); |
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res = false; |
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return res; |
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} |
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} |
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/* ***** negative ***** */ |
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{ |
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vector<Point2f> corners_found; |
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bool found = findChessboardCorners(bg, Size(8, 7), corners_found); |
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if (found) |
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res = false; |
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ChessBoardGenerator cbg(Size(8, 7)); |
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vector<Point2f> cg; |
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Mat cb = cbg(bg, camMat, distCoeffs, cg); |
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found = findChessboardCorners(cb, Size(3, 4), corners_found); |
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if (found) |
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res = false; |
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Point2f c = std::accumulate(cg.begin(), cg.end(), Point2f(), std::plus<Point2f>()) * (1.f/cg.size()); |
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Mat_<double> aff(2, 3); |
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aff << 1.0, 0.0, -(double)c.x, 0.0, 1.0, 0.0; |
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Mat sh; |
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warpAffine(cb, sh, aff, cb.size()); |
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found = findChessboardCorners(sh, cbg.cornersSize(), corners_found); |
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if (found) |
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res = false; |
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vector< vector<Point> > cnts(1); |
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vector<Point>& cnt = cnts[0]; |
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cnt.push_back(cg[ 0]); cnt.push_back(cg[0+2]); |
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cnt.push_back(cg[7+0]); cnt.push_back(cg[7+2]); |
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cv::drawContours(cb, cnts, -1, Scalar::all(128), FILLED); |
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found = findChessboardCorners(cb, cbg.cornersSize(), corners_found); |
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if (found) |
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res = false; |
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cv::drawChessboardCorners(cb, cbg.cornersSize(), Mat(corners_found), found); |
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} |
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return res; |
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} |
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TEST(Calib3d_ChessboardDetector, accuracy) { CV_ChessboardDetectorTest test( CHESSBOARD ); test.safe_run(); } |
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TEST(Calib3d_CirclesPatternDetector, accuracy) { CV_ChessboardDetectorTest test( CIRCLES_GRID ); test.safe_run(); } |
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TEST(Calib3d_AsymmetricCirclesPatternDetector, accuracy) { CV_ChessboardDetectorTest test( ASYMMETRIC_CIRCLES_GRID ); test.safe_run(); } |
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#ifdef HAVE_OPENCV_FLANN |
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TEST(Calib3d_AsymmetricCirclesPatternDetectorWithClustering, accuracy) { CV_ChessboardDetectorTest test( ASYMMETRIC_CIRCLES_GRID, CALIB_CB_CLUSTERING ); test.safe_run(); } |
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#endif |
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TEST(Calib3d_CirclesPatternDetectorWithClustering, accuracy) |
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{ |
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cv::String dataDir = string(TS::ptr()->get_data_path()) + "cv/cameracalibration/circles/"; |
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cv::Mat expected; |
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FileStorage fs(dataDir + "circles_corners15.dat", FileStorage::READ); |
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fs["corners"] >> expected; |
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fs.release(); |
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cv::Mat image = cv::imread(dataDir + "circles15.png"); |
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std::vector<Point2f> centers; |
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cv::findCirclesGrid(image, Size(10, 8), centers, CALIB_CB_SYMMETRIC_GRID | CALIB_CB_CLUSTERING); |
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ASSERT_EQ(expected.total(), centers.size()); |
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double error = calcError(centers, expected); |
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ASSERT_LE(error, precise_success_error_level); |
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} |
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TEST(Calib3d_AsymmetricCirclesPatternDetector, regression_18713) |
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{ |
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float pts_[][2] = { |
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{ 166.5, 107 }, { 146, 236 }, { 147, 92 }, { 184, 162 }, { 150, 185.5 }, |
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{ 215, 105 }, { 270.5, 186 }, { 159, 142 }, { 6, 205.5 }, { 32, 148.5 }, |
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{ 126, 163.5 }, { 181, 208.5 }, { 240.5, 62 }, { 84.5, 76.5 }, { 190, 120.5 }, |
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{ 10, 189 }, { 266, 104 }, { 307.5, 207.5 }, { 97, 184 }, { 116.5, 210 }, |
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{ 114, 139 }, { 84.5, 233 }, { 269.5, 139 }, { 136, 126.5 }, { 120, 107.5 }, |
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{ 129.5, 65.5 }, { 212.5, 140.5 }, { 204.5, 60.5 }, { 207.5, 241 }, { 61.5, 94.5 }, |
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{ 186.5, 61.5 }, { 220, 63 }, { 239, 120.5 }, { 212, 186 }, { 284, 87.5 }, |
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{ 62, 114.5 }, { 283, 61.5 }, { 238.5, 88.5 }, { 243, 159 }, { 245, 208 }, |
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{ 298.5, 158.5 }, { 57, 129 }, { 156.5, 63.5 }, { 192, 90.5 }, { 281, 235.5 }, |
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{ 172, 62.5 }, { 291.5, 119.5 }, { 90, 127 }, { 68.5, 166.5 }, { 108.5, 83.5 }, |
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{ 22, 176 } |
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}; |
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Mat candidates(51, 1, CV_32FC2, (void*)pts_); |
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Size patternSize(4, 9); |
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|
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std::vector< Point2f > result; |
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bool res = false; |
|
|
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// issue reports about hangs |
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EXPECT_NO_THROW(res = findCirclesGrid(candidates, patternSize, result, CALIB_CB_ASYMMETRIC_GRID, Ptr<FeatureDetector>()/*blobDetector=NULL*/)); |
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EXPECT_FALSE(res); |
|
|
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if (cvtest::debugLevel > 0) |
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{ |
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std::cout << Mat(candidates) << std::endl; |
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std::cout << Mat(result) << std::endl; |
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Mat img(Size(400, 300), CV_8UC3, Scalar::all(0)); |
|
|
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std::vector< Point2f > centers; |
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candidates.copyTo(centers); |
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|
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for (size_t i = 0; i < centers.size(); i++) |
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{ |
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const Point2f& pt = centers[i]; |
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//printf("{ %g, %g }, \n", pt.x, pt.y); |
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circle(img, pt, 5, Scalar(0, 255, 0)); |
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} |
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for (size_t i = 0; i < result.size(); i++) |
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{ |
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const Point2f& pt = result[i]; |
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circle(img, pt, 10, Scalar(0, 0, 255)); |
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} |
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imwrite("test_18713.png", img); |
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if (cvtest::debugLevel >= 10) |
|
{ |
|
imshow("result", img); |
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waitKey(); |
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} |
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} |
|
} |
|
|
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TEST(Calib3d_AsymmetricCirclesPatternDetector, regression_19498) |
|
{ |
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float pts_[121][2] = { |
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{ 84.7462f, 404.504f }, { 49.1586f, 404.092f }, { 12.3362f, 403.434f }, { 102.542f, 386.214f }, { 67.6042f, 385.475f }, |
|
{ 31.4982f, 384.569f }, { 141.231f, 377.856f }, { 332.834f, 370.745f }, { 85.7663f, 367.261f }, { 50.346f, 366.051f }, |
|
{ 13.7726f, 364.663f }, { 371.746f, 362.011f }, { 68.8543f, 347.883f }, { 32.9334f, 346.263f }, { 331.926f, 343.291f }, |
|
{ 351.535f, 338.112f }, { 51.7951f, 328.247f }, { 15.4613f, 326.095f }, { 311.719f, 319.578f }, { 330.947f, 313.708f }, |
|
{ 256.706f, 307.584f }, { 34.6834f, 308.167f }, { 291.085f, 295.429f }, { 17.4316f, 287.824f }, { 252.928f, 277.92f }, |
|
{ 270.19f, 270.93f }, { 288.473f, 263.484f }, { 216.401f, 260.94f }, { 232.195f, 253.656f }, { 266.757f, 237.708f }, |
|
{ 211.323f, 229.005f }, { 227.592f, 220.498f }, { 154.749f, 188.52f }, { 222.52f, 184.906f }, { 133.85f, 163.968f }, |
|
{ 200.024f, 158.05f }, { 147.485f, 153.643f }, { 161.967f, 142.633f }, { 177.396f, 131.059f }, { 125.909f, 128.116f }, |
|
{ 139.817f, 116.333f }, { 91.8639f, 114.454f }, { 104.343f, 102.542f }, { 117.635f, 89.9116f }, { 70.9465f, 89.4619f }, |
|
{ 82.8524f, 76.7862f }, { 131.738f, 76.4741f }, { 95.5012f, 63.3351f }, { 109.034f, 49.0424f }, { 314.886f, 374.711f }, |
|
{ 351.735f, 366.489f }, { 279.113f, 357.05f }, { 313.371f, 348.131f }, { 260.123f, 335.271f }, { 276.346f, 330.325f }, |
|
{ 293.588f, 325.133f }, { 240.86f, 313.143f }, { 273.436f, 301.667f }, { 206.762f, 296.574f }, { 309.877f, 288.796f }, |
|
{ 187.46f, 274.319f }, { 201.521f, 267.804f }, { 248.973f, 245.918f }, { 181.644f, 244.655f }, { 196.025f, 237.045f }, |
|
{ 148.41f, 229.131f }, { 161.604f, 221.215f }, { 175.455f, 212.873f }, { 244.748f, 211.459f }, { 128.661f, 206.109f }, |
|
{ 190.217f, 204.108f }, { 141.346f, 197.568f }, { 205.876f, 194.781f }, { 168.937f, 178.948f }, { 121.006f, 173.714f }, |
|
{ 183.998f, 168.806f }, { 88.9095f, 159.731f }, { 100.559f, 149.867f }, { 58.553f, 146.47f }, { 112.849f, 139.302f }, |
|
{ 80.0968f, 125.74f }, { 39.24f, 123.671f }, { 154.582f, 103.85f }, { 59.7699f, 101.49f }, { 266.334f, 385.387f }, |
|
{ 234.053f, 368.718f }, { 263.347f, 361.184f }, { 244.763f, 339.958f }, { 198.16f, 328.214f }, { 211.675f, 323.407f }, |
|
{ 225.905f, 318.426f }, { 192.98f, 302.119f }, { 221.267f, 290.693f }, { 161.437f, 286.46f }, { 236.656f, 284.476f }, |
|
{ 168.023f, 251.799f }, { 105.385f, 221.988f }, { 116.724f, 214.25f }, { 97.2959f, 191.81f }, { 108.89f, 183.05f }, |
|
{ 77.9896f, 169.242f }, { 48.6763f, 156.088f }, { 68.9635f, 136.415f }, { 29.8484f, 133.886f }, { 49.1966f, 112.826f }, |
|
{ 113.059f, 29.003f }, { 251.698f, 388.562f }, { 281.689f, 381.929f }, { 297.875f, 378.518f }, { 248.376f, 365.025f }, |
|
{ 295.791f, 352.763f }, { 216.176f, 348.586f }, { 230.143f, 344.443f }, { 179.89f, 307.457f }, { 174.083f, 280.51f }, |
|
{ 142.867f, 265.085f }, { 155.127f, 258.692f }, { 124.187f, 243.661f }, { 136.01f, 236.553f }, { 86.4651f, 200.13f }, |
|
{ 67.5711f, 178.221f } |
|
}; |
|
|
|
Mat candidates(121, 1, CV_32FC2, (void*)pts_); |
|
Size patternSize(13, 8); |
|
|
|
std::vector< Point2f > result; |
|
bool res = false; |
|
|
|
EXPECT_NO_THROW(res = findCirclesGrid(candidates, patternSize, result, CALIB_CB_SYMMETRIC_GRID, Ptr<FeatureDetector>()/*blobDetector=NULL*/)); |
|
EXPECT_FALSE(res); |
|
} |
|
|
|
}} // namespace |
|
/* End of file. */
|
|
|