I'm working on a project where I'm doing multiclass classification with SVM in OpenCV.

My goal is to get the confidence score of the classification as well as the predicted class. How can I do that? Right now I'm doing something like

float result = mysvm.predict(sample);

Having a fairly high amount of classes I prefer to avoid doing a lot of one-vs-all classifications and then calculate the scores.

Since OpenCV SVM is implemented using LibSVM, I'm quite sure that there is a way to do this, but looking at http://docs.opencv.org/modules/ml/doc/support_vector_machines.html doesn't really help.

Thanks for any input provided.

1 Answer 1


In opencv/include/opencv2/ml/ml.hpp, there is a struct called CvSVMDecisionFunc.. It has been used in line 546 as a Protected Variable,

CvSVMDecisionFunc* decision_func;

What you need to do is to cut that line and paste it as Public and then do a complete rebuild of OpenCV.. This variable, decision_func contains all the data for specific support vectors (ie, the alpha and rho values)..

  • That looks a pretty drastic approach, I'll do it if I can't really find a different way to solve my problem. I've seen that bool returnDFVal=false in the predict() funcion does what I need but only for binary classification. No way to get it for multiclass classification?
    – powder
    Commented Nov 6, 2013 at 15:14
  • 2
    Ok, since I lost enough time trying to figure out a better way to do this, I have done as suggested and rebuilt my OpenCV setting the decision function struct to public. I'm having some difficulties understanding its values though. I have - rho: -0.9667... - sv_count: 1 - alpha: {1.00...} - sv_index: 0 Not quite what I expected..shouldn't I have a number of support vector that is the number of the classes I am using for classification?
    – powder
    Commented Nov 6, 2013 at 16:09
  • Well, I don't know how to use returnDFVal for multiclass problem. Regarding the sv_count, you are right; it should be in accordance with the number of classes (in this case, the labels you provide during the SVM training phase).. In general, I try to use -1.0 for negative samples and single point positive floats for the rest..
    – scap3y
    Commented Nov 6, 2013 at 17:39
  • 2
    @powder You can avoid rebuilding OpenCV. Since decision_func is protected, you can extend CvSVM class and access that variable from the extended class. This way is better.
    – nimcap
    Commented Sep 10, 2015 at 11:31

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