コード例 #1
0
/*
  Learn GMMs parameters.
*/
void learnGMMs( const Mat& img, const Mat& mask, const Mat& compIdxs, GMM& bgdGMM, GMM& fgdGMM )
{
    bgdGMM.initLearning();
    fgdGMM.initLearning();
    Point p;
    for( int ci = 0; ci < GMM::componentsCount; ci++ )
    {
        for( p.y = 0; p.y < img.rows; p.y++ )
        {
            for( p.x = 0; p.x < img.cols; p.x++ )
            {
                if( compIdxs.at<int>(p) == ci )
                {
                    if( mask.at<uchar>(p) == GC_BGD || mask.at<uchar>(p) == GC_PR_BGD )
                        bgdGMM.addSample( ci, img.at<Vec3b>(p) );
                    else
                        fgdGMM.addSample( ci, img.at<Vec3b>(p) );
                }
            }
        }
    }
    bgdGMM.endLearning();
    fgdGMM.endLearning();
}
コード例 #2
0
/*
  Initialize GMM background and foreground models using kmeans algorithm.
*/
void initGMMs( const Mat& img, const Mat& mask, GMM& bgdGMM, GMM& fgdGMM )
{
    const int kMeansItCount = 10;
    const int kMeansType = KMEANS_PP_CENTERS;

    Mat bgdLabels, fgdLabels;
    vector<Vec3f> bgdSamples, fgdSamples;
    Point p;
    for( p.y = 0; p.y < img.rows; p.y++ )
    {
        for( p.x = 0; p.x < img.cols; p.x++ )
        {
            if( mask.at<uchar>(p) == GC_BGD || mask.at<uchar>(p) == GC_PR_BGD )
                bgdSamples.push_back( (Vec3f)img.at<Vec3b>(p) );
            else // GC_FGD | GC_PR_FGD
                fgdSamples.push_back( (Vec3f)img.at<Vec3b>(p) );
        }
    }
    CV_Assert( !bgdSamples.empty() && !fgdSamples.empty() );
    Mat _bgdSamples( (int)bgdSamples.size(), 3, CV_32FC1, &bgdSamples[0][0] );
    kmeans( _bgdSamples, GMM::componentsCount, bgdLabels,
            TermCriteria( CV_TERMCRIT_ITER, kMeansItCount, 0.0), 0, kMeansType, 0 );
    Mat _fgdSamples( (int)fgdSamples.size(), 3, CV_32FC1, &fgdSamples[0][0] );
    kmeans( _fgdSamples, GMM::componentsCount, fgdLabels,
            TermCriteria( CV_TERMCRIT_ITER, kMeansItCount, 0.0), 0, kMeansType, 0 );

    bgdGMM.initLearning();
    for( int i = 0; i < (int)bgdSamples.size(); i++ )
        bgdGMM.addSample( bgdLabels.at<int>(i,0), bgdSamples[i] );
    bgdGMM.endLearning();

    fgdGMM.initLearning();
    for( int i = 0; i < (int)fgdSamples.size(); i++ )
        fgdGMM.addSample( fgdLabels.at<int>(i,0), fgdSamples[i] );
    fgdGMM.endLearning();
}