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HoG Training Using SVM

asked 2016-03-26 22:57:51 -0600

Taseer gravatar image

updated 2016-03-29 04:34:01 -0600

I have successfully trained my positive and negative samples of my dataset. However, when I try to use the hog.setSVMDetector(), I get the following error :

_svmdetector data type = 17 is not supported

Here is the code:

hog = cv2.HOGDescriptor()
svm = cv2.SVM()
svm.load('trained.xml')
img = cv2.imread('t_.png', cv2.IMREAD_COLOR)
h = hog.compute(img)
p = svm.predict(h)
print p
hog.setSVMDetector(np.array(svm))
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answered 2016-03-26 23:35:43 -0600

Taseer gravatar image

I got the answer from the following link:

http://answers.opencv.org/question/56...

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answered 2016-03-26 23:20:58 -0600

berak gravatar image

updated 2016-03-26 23:23:05 -0600

no, you can't set an svm instance as setSVMDetector. instead, you need to retrieve the support vector and (-)rho from your trained SVM, then put it all into a float array.

please have a look at the (opencv3) c++ example (and i doubt, that this is doable from python with opencv2.4 at all)

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Asked: 2016-03-26 22:57:51 -0600

Seen: 1,353 times

Last updated: Mar 29 '16