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Open Source Computer Vision Library
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304 lines
11 KiB
304 lines
11 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 <iostream> |
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#include <fstream> |
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using namespace cv; |
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using namespace std; |
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CV_SLMLTest::CV_SLMLTest( const char* _modelName ) : CV_MLBaseTest( _modelName ) |
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{ |
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validationFN = "slvalidation.xml"; |
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} |
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int CV_SLMLTest::run_test_case( int testCaseIdx ) |
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{ |
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int code = cvtest::TS::OK; |
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code = prepare_test_case( testCaseIdx ); |
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if( code == cvtest::TS::OK ) |
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{ |
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data->setTrainTestSplit(data->getNTrainSamples(), true); |
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code = train( testCaseIdx ); |
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if( code == cvtest::TS::OK ) |
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{ |
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get_test_error( testCaseIdx, &test_resps1 ); |
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fname1 = tempfile(".json.gz"); |
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save( (fname1 + "?base64").c_str() ); |
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load( fname1.c_str() ); |
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get_test_error( testCaseIdx, &test_resps2 ); |
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fname2 = tempfile(".json.gz"); |
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save( (fname2 + "?base64").c_str() ); |
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} |
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else |
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ts->printf( cvtest::TS::LOG, "model can not be trained" ); |
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} |
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return code; |
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} |
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int CV_SLMLTest::validate_test_results( int testCaseIdx ) |
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{ |
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int code = cvtest::TS::OK; |
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// 1. compare files |
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FILE *fs1 = fopen(fname1.c_str(), "rb"), *fs2 = fopen(fname2.c_str(), "rb"); |
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size_t sz1 = 0, sz2 = 0; |
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if( !fs1 || !fs2 ) |
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code = cvtest::TS::FAIL_MISSING_TEST_DATA; |
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if( code >= 0 ) |
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{ |
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fseek(fs1, 0, SEEK_END); fseek(fs2, 0, SEEK_END); |
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sz1 = ftell(fs1); |
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sz2 = ftell(fs2); |
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fseek(fs1, 0, SEEK_SET); fseek(fs2, 0, SEEK_SET); |
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} |
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if( sz1 != sz2 ) |
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code = cvtest::TS::FAIL_INVALID_OUTPUT; |
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if( code >= 0 ) |
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{ |
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const int BUFSZ = 1024; |
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uchar buf1[BUFSZ], buf2[BUFSZ]; |
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for( size_t pos = 0; pos < sz1; ) |
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{ |
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size_t r1 = fread(buf1, 1, BUFSZ, fs1); |
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size_t r2 = fread(buf2, 1, BUFSZ, fs2); |
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if( r1 != r2 || memcmp(buf1, buf2, r1) != 0 ) |
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{ |
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ts->printf( cvtest::TS::LOG, |
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"in test case %d first (%s) and second (%s) saved files differ in %d-th kb\n", |
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testCaseIdx, fname1.c_str(), fname2.c_str(), |
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(int)pos ); |
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code = cvtest::TS::FAIL_INVALID_OUTPUT; |
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break; |
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} |
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pos += r1; |
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} |
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} |
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if(fs1) |
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fclose(fs1); |
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if(fs2) |
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fclose(fs2); |
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// delete temporary files |
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if( code >= 0 ) |
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{ |
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remove( fname1.c_str() ); |
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remove( fname2.c_str() ); |
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} |
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if( code >= 0 ) |
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{ |
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// 2. compare responses |
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CV_Assert( test_resps1.size() == test_resps2.size() ); |
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vector<float>::const_iterator it1 = test_resps1.begin(), it2 = test_resps2.begin(); |
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for( ; it1 != test_resps1.end(); ++it1, ++it2 ) |
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{ |
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if( fabs(*it1 - *it2) > FLT_EPSILON ) |
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{ |
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ts->printf( cvtest::TS::LOG, "in test case %d responses predicted before saving and after loading is different", testCaseIdx ); |
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code = cvtest::TS::FAIL_INVALID_OUTPUT; |
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break; |
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} |
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} |
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} |
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return code; |
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} |
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TEST(ML_NaiveBayes, save_load) { CV_SLMLTest test( CV_NBAYES ); test.safe_run(); } |
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TEST(ML_KNearest, save_load) { CV_SLMLTest test( CV_KNEAREST ); test.safe_run(); } |
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TEST(ML_SVM, save_load) { CV_SLMLTest test( CV_SVM ); test.safe_run(); } |
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TEST(ML_ANN, save_load) { CV_SLMLTest test( CV_ANN ); test.safe_run(); } |
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TEST(ML_DTree, save_load) { CV_SLMLTest test( CV_DTREE ); test.safe_run(); } |
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TEST(ML_Boost, save_load) { CV_SLMLTest test( CV_BOOST ); test.safe_run(); } |
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TEST(ML_RTrees, save_load) { CV_SLMLTest test( CV_RTREES ); test.safe_run(); } |
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TEST(DISABLED_ML_ERTrees, save_load) { CV_SLMLTest test( CV_ERTREES ); test.safe_run(); } |
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TEST(MV_SVMSGD, save_load){ CV_SLMLTest test( CV_SVMSGD ); test.safe_run(); } |
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class CV_LegacyTest : public cvtest::BaseTest |
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{ |
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public: |
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CV_LegacyTest(const std::string &_modelName, const std::string &_suffixes = std::string()) |
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: cvtest::BaseTest(), modelName(_modelName), suffixes(_suffixes) |
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{ |
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} |
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virtual ~CV_LegacyTest() {} |
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protected: |
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void run(int) |
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{ |
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unsigned int idx = 0; |
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for (;;) |
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{ |
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if (idx >= suffixes.size()) |
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break; |
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int found = (int)suffixes.find(';', idx); |
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string piece = suffixes.substr(idx, found - idx); |
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if (piece.empty()) |
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break; |
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oneTest(piece); |
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idx += (unsigned int)piece.size() + 1; |
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} |
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} |
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void oneTest(const string & suffix) |
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{ |
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using namespace cv::ml; |
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int code = cvtest::TS::OK; |
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string filename = ts->get_data_path() + "legacy/" + modelName + suffix; |
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bool isTree = modelName == CV_BOOST || modelName == CV_DTREE || modelName == CV_RTREES; |
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Ptr<StatModel> model; |
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if (modelName == CV_BOOST) |
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model = Algorithm::load<Boost>(filename); |
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else if (modelName == CV_ANN) |
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model = Algorithm::load<ANN_MLP>(filename); |
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else if (modelName == CV_DTREE) |
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model = Algorithm::load<DTrees>(filename); |
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else if (modelName == CV_NBAYES) |
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model = Algorithm::load<NormalBayesClassifier>(filename); |
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else if (modelName == CV_SVM) |
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model = Algorithm::load<SVM>(filename); |
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else if (modelName == CV_RTREES) |
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model = Algorithm::load<RTrees>(filename); |
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else if (modelName == CV_SVMSGD) |
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model = Algorithm::load<SVMSGD>(filename); |
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if (!model) |
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{ |
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code = cvtest::TS::FAIL_INVALID_TEST_DATA; |
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} |
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else |
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{ |
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Mat input = Mat(isTree ? 10 : 1, model->getVarCount(), CV_32F); |
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ts->get_rng().fill(input, RNG::UNIFORM, 0, 40); |
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if (isTree) |
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randomFillCategories(filename, input); |
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Mat output; |
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model->predict(input, output, StatModel::RAW_OUTPUT | (isTree ? DTrees::PREDICT_SUM : 0)); |
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// just check if no internal assertions or errors thrown |
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} |
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ts->set_failed_test_info(code); |
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} |
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void randomFillCategories(const string & filename, Mat & input) |
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{ |
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Mat catMap; |
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Mat catCount; |
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std::vector<uchar> varTypes; |
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FileStorage fs(filename, FileStorage::READ); |
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FileNode root = fs.getFirstTopLevelNode(); |
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root["cat_map"] >> catMap; |
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root["cat_count"] >> catCount; |
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root["var_type"] >> varTypes; |
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int offset = 0; |
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int countOffset = 0; |
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uint var = 0, varCount = (uint)varTypes.size(); |
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for (; var < varCount; ++var) |
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{ |
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if (varTypes[var] == ml::VAR_CATEGORICAL) |
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{ |
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int size = catCount.at<int>(0, countOffset); |
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for (int row = 0; row < input.rows; ++row) |
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{ |
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int randomChosenIndex = offset + ((uint)ts->get_rng()) % size; |
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int value = catMap.at<int>(0, randomChosenIndex); |
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input.at<float>(row, var) = (float)value; |
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} |
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offset += size; |
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++countOffset; |
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} |
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} |
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} |
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string modelName; |
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string suffixes; |
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}; |
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TEST(ML_ANN, legacy_load) { CV_LegacyTest test(CV_ANN, "_waveform.xml"); test.safe_run(); } |
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TEST(ML_Boost, legacy_load) { CV_LegacyTest test(CV_BOOST, "_adult.xml;_1.xml;_2.xml;_3.xml"); test.safe_run(); } |
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TEST(ML_DTree, legacy_load) { CV_LegacyTest test(CV_DTREE, "_abalone.xml;_mushroom.xml"); test.safe_run(); } |
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TEST(ML_NBayes, legacy_load) { CV_LegacyTest test(CV_NBAYES, "_waveform.xml"); test.safe_run(); } |
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TEST(ML_SVM, legacy_load) { CV_LegacyTest test(CV_SVM, "_poletelecomm.xml;_waveform.xml"); test.safe_run(); } |
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TEST(ML_RTrees, legacy_load) { CV_LegacyTest test(CV_RTREES, "_waveform.xml"); test.safe_run(); } |
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TEST(ML_SVMSGD, legacy_load) { CV_LegacyTest test(CV_SVMSGD, "_waveform.xml"); test.safe_run(); } |
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/*TEST(ML_SVM, throw_exception_when_save_untrained_model) |
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{ |
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Ptr<cv::ml::SVM> svm; |
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string filename = tempfile("svm.xml"); |
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ASSERT_THROW(svm.save(filename.c_str()), Exception); |
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remove(filename.c_str()); |
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}*/ |
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TEST(DISABLED_ML_SVM, linear_save_load) |
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{ |
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Ptr<cv::ml::SVM> svm1, svm2, svm3; |
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svm1 = Algorithm::load<SVM>("SVM45_X_38-1.xml"); |
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svm2 = Algorithm::load<SVM>("SVM45_X_38-2.xml"); |
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string tname = tempfile("a.json"); |
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svm2->save(tname + "?base64"); |
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svm3 = Algorithm::load<SVM>(tname); |
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ASSERT_EQ(svm1->getVarCount(), svm2->getVarCount()); |
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ASSERT_EQ(svm1->getVarCount(), svm3->getVarCount()); |
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int m = 10000, n = svm1->getVarCount(); |
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Mat samples(m, n, CV_32F), r1, r2, r3; |
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randu(samples, 0., 1.); |
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svm1->predict(samples, r1); |
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svm2->predict(samples, r2); |
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svm3->predict(samples, r3); |
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double eps = 1e-4; |
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EXPECT_LE(norm(r1, r2, NORM_INF), eps); |
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EXPECT_LE(norm(r1, r3, NORM_INF), eps); |
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remove(tname.c_str()); |
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} |
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/* End of file. */
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