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328 lines
12 KiB
C++
328 lines
12 KiB
C++
/*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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using namespace std;
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using namespace cv;
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void defaultDistribs( vector<Mat>& means, vector<Mat>& covs )
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{
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float mp0[] = {0.0f, 0.0f}, cp0[] = {0.67f, 0.0f, 0.0f, 0.67f};
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float mp1[] = {5.0f, 0.0f}, cp1[] = {1.0f, 0.0f, 0.0f, 1.0f};
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float mp2[] = {1.0f, 5.0f}, cp2[] = {1.0f, 0.0f, 0.0f, 1.0f};
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Mat m0( 1, 2, CV_32FC1, mp0 ), c0( 2, 2, CV_32FC1, cp0 );
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Mat m1( 1, 2, CV_32FC1, mp1 ), c1( 2, 2, CV_32FC1, cp1 );
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Mat m2( 1, 2, CV_32FC1, mp2 ), c2( 2, 2, CV_32FC1, cp2 );
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means.resize(3), covs.resize(3);
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m0.copyTo(means[0]), c0.copyTo(covs[0]);
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m1.copyTo(means[1]), c1.copyTo(covs[1]);
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m2.copyTo(means[2]), c2.copyTo(covs[2]);
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}
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// generate points sets by normal distributions
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void generateData( Mat& data, Mat& labels, const vector<int>& sizes, const vector<Mat>& means, const vector<Mat>& covs, int labelType )
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{
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vector<int>::const_iterator sit = sizes.begin();
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int total = 0;
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for( ; sit != sizes.end(); ++sit )
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total += *sit;
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assert( means.size() == sizes.size() && covs.size() == sizes.size() );
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assert( !data.empty() && data.rows == total );
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assert( data.type() == CV_32FC1 );
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labels.create( data.rows, 1, labelType );
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randn( data, Scalar::all(0.0), Scalar::all(1.0) );
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vector<Mat>::const_iterator mit = means.begin(), cit = covs.begin();
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int bi, ei = 0;
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sit = sizes.begin();
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for( int p = 0, l = 0; sit != sizes.end(); ++sit, ++mit, ++cit, l++ )
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{
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bi = ei;
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ei = bi + *sit;
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assert( mit->rows == 1 && mit->cols == data.cols );
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assert( cit->rows == data.cols && cit->cols == data.cols );
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for( int i = bi; i < ei; i++, p++ )
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{
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Mat r(1, data.cols, CV_32FC1, data.ptr<float>(i));
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r = r * (*cit) + *mit;
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if( labelType == CV_32FC1 )
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labels.at<float>(p, 0) = (float)l;
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else
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labels.at<int>(p, 0) = l;
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}
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}
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}
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int maxIdx( const vector<int>& count )
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{
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int idx = -1;
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int maxVal = -1;
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vector<int>::const_iterator it = count.begin();
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for( int i = 0; it != count.end(); ++it, i++ )
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{
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if( *it > maxVal)
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{
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maxVal = *it;
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idx = i;
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}
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}
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assert( idx >= 0);
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return idx;
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}
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bool getLabelsMap( const Mat& labels, const vector<int>& sizes, vector<int>& labelsMap )
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{
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int total = 0, setCount = (int)sizes.size();
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vector<int>::const_iterator sit = sizes.begin();
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for( ; sit != sizes.end(); ++sit )
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total += *sit;
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assert( !labels.empty() );
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assert( labels.rows == total && labels.cols == 1 );
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assert( labels.type() == CV_32SC1 || labels.type() == CV_32FC1 );
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bool isFlt = labels.type() == CV_32FC1;
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labelsMap.resize(setCount);
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vector<int>::iterator lmit = labelsMap.begin();
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vector<bool> buzy(setCount, false);
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int bi, ei = 0;
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for( sit = sizes.begin(); sit != sizes.end(); ++sit, ++lmit )
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{
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vector<int> count( setCount, 0 );
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bi = ei;
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ei = bi + *sit;
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if( isFlt )
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{
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for( int i = bi; i < ei; i++ )
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count[(int)labels.at<float>(i, 0)]++;
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}
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else
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{
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for( int i = bi; i < ei; i++ )
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count[labels.at<int>(i, 0)]++;
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}
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*lmit = maxIdx( count );
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if( buzy[*lmit] )
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return false;
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buzy[*lmit] = true;
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}
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return true;
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}
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float calcErr( const Mat& labels, const Mat& origLabels, const vector<int>& sizes, bool labelsEquivalent = true )
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{
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int err = 0;
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assert( !labels.empty() && !origLabels.empty() );
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assert( labels.cols == 1 && origLabels.cols == 1 );
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assert( labels.rows == origLabels.rows );
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assert( labels.type() == origLabels.type() );
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assert( labels.type() == CV_32SC1 || labels.type() == CV_32FC1 );
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vector<int> labelsMap;
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bool isFlt = labels.type() == CV_32FC1;
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if( !labelsEquivalent )
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{
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getLabelsMap( labels, sizes, labelsMap );
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for( int i = 0; i < labels.rows; i++ )
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if( isFlt )
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err += labels.at<float>(i, 0) != labelsMap[(int)origLabels.at<float>(i, 0)];
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else
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err += labels.at<int>(i, 0) != labelsMap[origLabels.at<int>(i, 0)];
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}
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else
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{
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for( int i = 0; i < labels.rows; i++ )
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if( isFlt )
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err += labels.at<float>(i, 0) != origLabels.at<float>(i, 0);
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else
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err += labels.at<int>(i, 0) != origLabels.at<int>(i, 0);
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}
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return (float)err / (float)labels.rows;
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}
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//--------------------------------------------------------------------------------------------
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class CV_KMeansTest : public cvtest::BaseTest {
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public:
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CV_KMeansTest() {}
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protected:
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virtual void run( int start_from );
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};
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void CV_KMeansTest::run( int /*start_from*/ )
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{
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const int iters = 100;
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int sizesArr[] = { 5000, 7000, 8000 };
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int pointsCount = sizesArr[0]+ sizesArr[1] + sizesArr[2];
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Mat data( pointsCount, 2, CV_32FC1 ), labels;
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vector<int> sizes( sizesArr, sizesArr + sizeof(sizesArr) / sizeof(sizesArr[0]) );
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vector<Mat> means, covs;
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defaultDistribs( means, covs );
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generateData( data, labels, sizes, means, covs, CV_32SC1 );
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int code = cvtest::TS::OK;
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Mat bestLabels;
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// 1. flag==KMEANS_PP_CENTERS
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kmeans( data, 3, bestLabels, TermCriteria( TermCriteria::COUNT, iters, 0.0), 0, KMEANS_PP_CENTERS, noArray() );
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if( calcErr( bestLabels, labels, sizes, false ) > 0.01f )
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{
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ts->printf( cvtest::TS::LOG, "bad accuracy if flag==KMEANS_PP_CENTERS" );
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code = cvtest::TS::FAIL_BAD_ACCURACY;
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}
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// 2. flag==KMEANS_RANDOM_CENTERS
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kmeans( data, 3, bestLabels, TermCriteria( TermCriteria::COUNT, iters, 0.0), 0, KMEANS_RANDOM_CENTERS, noArray() );
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if( calcErr( bestLabels, labels, sizes, false ) > 0.01f )
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{
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ts->printf( cvtest::TS::LOG, "bad accuracy if flag==KMEANS_PP_CENTERS" );
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code = cvtest::TS::FAIL_BAD_ACCURACY;
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}
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// 3. flag==KMEANS_USE_INITIAL_LABELS
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labels.copyTo( bestLabels );
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RNG rng;
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for( int i = 0; i < 0.5f * pointsCount; i++ )
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bestLabels.at<int>( rng.next() % pointsCount, 0 ) = rng.next() % 3;
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kmeans( data, 3, bestLabels, TermCriteria( TermCriteria::COUNT, iters, 0.0), 0, KMEANS_USE_INITIAL_LABELS, noArray() );
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if( calcErr( bestLabels, labels, sizes, false ) > 0.01f )
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{
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ts->printf( cvtest::TS::LOG, "bad accuracy if flag==KMEANS_PP_CENTERS" );
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code = cvtest::TS::FAIL_BAD_ACCURACY;
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}
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ts->set_failed_test_info( code );
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}
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//--------------------------------------------------------------------------------------------
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class CV_KNearestTest : public cvtest::BaseTest {
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public:
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CV_KNearestTest() {}
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protected:
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virtual void run( int start_from );
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};
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void CV_KNearestTest::run( int /*start_from*/ )
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{
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int sizesArr[] = { 500, 700, 800 };
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int pointsCount = sizesArr[0]+ sizesArr[1] + sizesArr[2];
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// train data
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Mat trainData( pointsCount, 2, CV_32FC1 ), trainLabels;
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vector<int> sizes( sizesArr, sizesArr + sizeof(sizesArr) / sizeof(sizesArr[0]) );
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vector<Mat> means, covs;
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defaultDistribs( means, covs );
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generateData( trainData, trainLabels, sizes, means, covs, CV_32FC1 );
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// test data
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Mat testData( pointsCount, 2, CV_32FC1 ), testLabels, bestLabels;
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generateData( testData, testLabels, sizes, means, covs, CV_32FC1 );
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int code = cvtest::TS::OK;
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KNearest knearest;
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knearest.train( trainData, trainLabels );
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knearest.find_nearest( testData, 4, &bestLabels );
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if( calcErr( bestLabels, testLabels, sizes, true ) > 0.01f )
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{
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ts->printf( cvtest::TS::LOG, "bad accuracy on test data" );
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code = cvtest::TS::FAIL_BAD_ACCURACY;
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}
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ts->set_failed_test_info( code );
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}
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//--------------------------------------------------------------------------------------------
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class CV_EMTest : public cvtest::BaseTest {
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public:
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CV_EMTest() {}
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protected:
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virtual void run( int start_from );
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};
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void CV_EMTest::run( int /*start_from*/ )
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{
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int sizesArr[] = { 5000, 7000, 8000 };
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int pointsCount = sizesArr[0]+ sizesArr[1] + sizesArr[2];
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// train data
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Mat trainData( pointsCount, 2, CV_32FC1 ), trainLabels;
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vector<int> sizes( sizesArr, sizesArr + sizeof(sizesArr) / sizeof(sizesArr[0]) );
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vector<Mat> means, covs;
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defaultDistribs( means, covs );
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generateData( trainData, trainLabels, sizes, means, covs, CV_32SC1 );
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// test data
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Mat testData( pointsCount, 2, CV_32FC1 ), testLabels, bestLabels;
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generateData( testData, testLabels, sizes, means, covs, CV_32SC1 );
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int code = cvtest::TS::OK;
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ExpectationMaximization em;
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CvEMParams params;
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params.nclusters = 3;
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em.train( trainData, Mat(), params, &bestLabels );
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// check train error
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if( calcErr( bestLabels, trainLabels, sizes, true ) > 0.002f )
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{
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ts->printf( cvtest::TS::LOG, "bad accuracy on train data" );
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code = cvtest::TS::FAIL_BAD_ACCURACY;
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}
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// check test error
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bestLabels.create( testData.rows, 1, CV_32SC1 );
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for( int i = 0; i < testData.rows; i++ )
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{
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Mat sample( 1, testData.cols, CV_32FC1, testData.ptr<float>(i));
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bestLabels.at<int>(i,0) = (int)em.predict( sample, 0 );
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}
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if( calcErr( bestLabels, testLabels, sizes, true ) > 0.005f )
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{
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ts->printf( cvtest::TS::LOG, "bad accuracy on test data" );
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code = cvtest::TS::FAIL_BAD_ACCURACY;
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}
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ts->set_failed_test_info( code );
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}
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TEST(ML_KMeans, accuracy) { CV_KMeansTest test; test.safe_run(); }
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TEST(ML_KNearest, accuracy) { CV_KNearestTest test; test.safe_run(); }
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TEST(ML_EMTest, accuracy) { CV_EMTest test; test.safe_run(); }
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