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I trained a HAAR classifier to detect hands in a LIVE VIDEO FEED from the webcam. I used 621 positives & 3712 negatives.

I used opencv_createsamples to generate the vec file for positives: ./opencv_createsamples -vec /Users/.../positivesvec.vec -info /Users/.../positiveDesc.txt -w 20 -h 30

And then, I used opencv_traincascade to train the classifier: opencv_traincascade -data /Users/.../hand -vec /Users/.../positivesvec.vec -bg /Users/.../negativeDesc.txt -numPos 621 -numNeg 3712 -numStages 15 minHitRate 0.999 maxFalseAlarmRate 0.5 -w 20 -h 30 -mode ALL

The training took around 30 hours or so and I got an xml file. However, when I use that xml file for detection, it is really VERY slow (1 frame in 3-4 seconds maybe).

I know that my object detection code is correct because it works perfectly for faces. This is what I use:

trained_cascade_name = "/Users/.../cascade.xml";
if( !cascade.load( trained_cascade_name ) ){ qDebug()<<"Error loading cascade file!"; return; };
std::vector<Rect> hands;
    Mat frame_gray; // Haar works on grayscale images
    cvtColor(frame, frame_gray, CV_RGB2GRAY);
    equalizeHist(frame_gray, frame_gray);

    cascade.detectMultiScale( frame_gray, hands, 1.1, 3, 0|CV_HAAR_DO_CANNY_PRUNING|CV_HAAR_FIND_BIGGEST_OBJECT, cv::Size(30,30),cv::Size(100,100));
    CvPoint topleft, bottomright;
    for( int i = 0; i < hands.size(); i++ )
        cv::rectangle(frame, topleft, bottomright, Scalar(255,0,255), 1, 8, 0);
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are you search over the same size ranges for faces and hands? –  B... Jun 17 '13 at 13:39
This doesn't really have anything to do with faces. I'm not sure what you mean. The variable name was "faces". I've changed that now, so that it doesn't cause confusion. –  P.C. Jun 17 '13 at 13:43
You say the algorithm is fast with faces but slow with hands. Are you passing the same size range paramters to cascade.detectMultiScale()? –  B... Jun 17 '13 at 14:46
yes... it's the same. –  P.C. Jun 17 '13 at 15:23
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1 Answer 1

For different objects different number of trees /stumps per stage are generated in order to reject 50% of false positives.

Pick any region and classify it. During this procedure check how many trees / stumps is invoked in lower stages.

Maybe your cascade just have more trees /stumps per stage so it spends more time to classify a region.

That is just a wild guess....

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