Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I use the MeanShiftAlgorithm of OpenCV into our thesis (diploma). The Example in QT4.6 works well. Only into our own GUI application, where we receive a 320x3x240 RGB Stream, gives it the following error message:

OpenCV Error: Assertion failed (j < nimages) in histPrepareImages, file /home/luca/OpenCvSDK/opencv-src/modules/imgproc/src/histogram.cpp, line 148
terminate called after throwing an instance of 'cv::Exception'
  what():  /home/luca/OpenCvSDK/opencv-src/modules/imgproc/src/histogram.cpp:148: error: (-215) j < nimages in function histPrepareImages

The GUI is programmed under Ubuntu with Eclipse/QT4.6. here is the code:

// Mean Shift Algorithm On
minSat=65;
ch[1]={0};
if (m_meanShiftAlgoOn)
{
    if (m_firstFrame)
    {
        m_firstFrame = false;
        // Define ROI
        imageROI= m_currentFrame(       cv::Rect(m_meanShift_xPos,m_meanShift_yPos,
                                                 m_meanShift_width,m_meanShift_height));
        cv::rectangle(m_currentFrame,   cv::Rect(m_meanShift_xPos,m_meanShift_yPos,m_meanShift_width,
                                                 m_meanShift_height),cv::Scalar(0,0,255));
        // Get the Hue histogram
        ColorHistogram hc;
        cv::MatND colorhist= hc.getHueHistogram(imageROI,minSat);

        finder.setHistogram(colorhist);
        finder.setThreshold(0.2f);

        // Convert to HSV space
        cv::cvtColor(m_currentFrame, hsv, CV_BGR2HSV);

        // Split the image
        cv::split(hsv,v);

        // Eliminate pixels with low saturation
        cv::threshold(v[1],v[1],minSat,255,cv::THRESH_BINARY);
        // for debug only: shows the frame with threshold
        //m_currentFrame = v[1];

        // Get back-projection of hue histogram
        result1= finder.find(hsv,0.0f,180.0f,ch,1);
        // for debug only: shows the frame with back-projection of hue histogram
        //m_currentFrame = result1;

        cv::bitwise_and(result1,v[1],result1);
        // for debug only: shows the frame with bitwise_and of src1 and src2
        //m_currentFrame = result1;
    }
    else
    {
            // Second frame

        // Convert to HSV space
        cv::cvtColor(m_currentFrame, hsv, CV_BGR2HSV);

        // Split the frame
        cv::split(hsv,v);

        // Eliminate pixels with low saturation
        cv::threshold(v[1],v[1],minSat,255,cv::THRESH_BINARY);
        // for debug only: shows the frame with eliminated pixels with low saturation
        //m_currentFrame = v[1];

        // Get back-projection of hue histogram
        result2= finder.find(hsv,0.0f,180.0f,ch,1);     // here code crash
        // for debug only: shows the frame with back-projection of hue histogram
        //m_currentFrame = result2;

        // Eliminate low stauration pixels
        cv::bitwise_and(result2,v[1],result2);

        // Get back-projection of hue histogram
        finder.setThreshold(-1.0f);
        result2= finder.find(hsv,0.0f,180.0f,ch,1);
        cv::bitwise_and(result2,v[1],result2);

        cv::Rect rect(m_meanShift_xPos,m_meanShift_yPos,m_meanShift_width,m_meanShift_height);
        cv::rectangle(m_currentFrame, rect, cv::Scalar(0,0,255));

        cv::TermCriteria criteria(cv::TermCriteria::MAX_ITER,10,0.01);

        cv::rectangle(m_currentFrame, rect, cv::Scalar(0,255,0));

    }
}
else
    m_firstFrame = true;

The parameters for the ROI are:

m_meanShift_xPos= 80
m_meanShift_yPos= 120
m_meanShift_width= 80
m_meanShift_height= 90

Here still the function in the file histogramm.cpp/LINE 1163 (indicated as in error message)

static void histPrepareImages( const Mat* images, int nimages, const int* channels,
                               const Mat& mask, int dims, const int* histSize,
                               const float** ranges, bool uniform,
                               vector<uchar*>& ptrs, vector<int>& deltas,
                               Size& imsize, vector<double>& uniranges )
{
    int i, j, c;
    CV_Assert( channels != 0 || nimages == dims );

    imsize = images[0].size();
    int depth = images[0].depth(), esz1 = (int)images[0].elemSize1();
    bool isContinuous = true;

    ptrs.resize(dims + 1);
    deltas.resize((dims + 1)*2);

    for( i = 0; i < dims; i++ )
    {
        if(!channels)
        {
            j = i;
            c = 0;
            CV_Assert( images[j].channels() == 1 );
        }
        else
        {
            c = channels[i];
            CV_Assert( c >= 0 );
            for( j = 0; j < nimages; c -= images[j].channels(), j++ )
                if( c < images[j].channels() )
                    break;
            CV_Assert( j < nimages );               // line 148
        }

        CV_Assert( images[j].size() == imsize && images[j].depth() == depth );
        if( !images[j].isContinuous() )
            isContinuous = false;
        ptrs[i] = images[j].data + c*esz1;
        deltas[i*2] = images[j].channels();
        deltas[i*2+1] = (int)(images[j].step/esz1 - imsize.width*deltas[i*2]);
    }

    if( mask.data )
    {
        CV_Assert( mask.size() == imsize && mask.channels() == 1 );
        isContinuous = isContinuous && mask.isContinuous();
        ptrs[dims] = mask.data;
        deltas[dims*2] = 1;
        deltas[dims*2 + 1] = (int)(mask.step/mask.elemSize1());
    }

    if( isContinuous )
    {
        imsize.width *= imsize.height;
        imsize.height = 1;
    }

    if( !ranges )
    {
        CV_Assert( depth == CV_8U );

        uniranges.resize( dims*2 );
        for( i = 0; i < dims; i++ )
        {
            uniranges[i*2] = histSize[i]/256.;
            uniranges[i*2+1] = 0;
        }
    }
    else if( uniform )
    {
        uniranges.resize( dims*2 );
        for( i = 0; i < dims; i++ )
        {
            CV_Assert( ranges[i] && ranges[i][0] < ranges[i][1] );
            double low = ranges[i][0], high = ranges[i][1];
            double t = histSize[i]/(high - low);
            uniranges[i*2] = t;
            uniranges[i*2+1] = -t*low;
        }
    }
    else
    {
        for( i = 0; i < dims; i++ )
        {
            size_t j, n = histSize[i];
            for( j = 0; j < n; j++ )
                CV_Assert( ranges[i][j] < ranges[i][j+1] );
        }
    }
}

Thanks in advance for any answer...

share|improve this question
2  
It's good to show your code when you ask a question but it is also good to show your research efforts. Ok the assertion failed on line 148: now using a debugger or simply printf, check the values of i, j, c, etc. when the assertion fails. –  Simon May 8 '12 at 23:53
    
This question might be helpful. I don't know for sure because you don't post code for your find() method. –  Aurelius May 30 '13 at 16:12

1 Answer 1

I came across the same problem today when I run an example involving python-opencv, after I examined the code, I found the location of the image was wrong, i hope the answer could help you.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.