I want to cluster a lot of images with the K-Means Algorithm. I want to set up the clusters, so that each cluster represent the dominant color or the hue of the image. I've read something about this in the paper Colour Image Clustering using K-Means

Does someone have an idea to do this in OpenCV?

Maybe I can compare the histograms of each image. But if I have a lot of pictures it takes a very long time

up vote 10 down vote accepted

You can vectorize your image so each row is a set of RGB, and than use cv::kmeans to cluster, something like:

    std::vector<cv::Mat> imgRGB;
    int k=5;
    int n = img.rows *img.cols;
    cv::Mat img3xN(n,3,CV_8U);
    for(int i=0;i!=3;++i)  
    cv::Mat bestLables;
    cv::kmeans(img3xN,k,bestLables,cv::TermCriteria(),10,cv::KMEANS_RANDOM_CENTERS );
    bestLables= bestLables.reshape(0,img.rows);
  • thank you for this snippet. can i cluster color histograms, too? – 501 - not implemented Jul 10 '12 at 11:35
  • 1
    I'm sure you can, but using the suggested code you need to replicate each bin N times, when N is the bin value. – Mercury Jul 10 '12 at 12:08

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