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BOW how to handle empty sift descriptors

asked 2017-02-24 07:01:16 -0600

Fačko gravatar image

I am using BOW to object categorization. My function looks like:

 def prepare_data_for_bow_sift(self, testing_paths, b_o_w):
        for p in self:
            image = cv2.imread(p, 0)
            kp, dsc = sift.detectAndCompute(image, None)
            if len(kp) < 1:
                # what to do now? how to handle if not keypoint found
            else:
                b_o_w.add(dsc)

Sometimes happens, that Surf or Sift do not find any keypoints. My question is, how to handle with this situation? What should I add to to bow traininig set? Is there any possibility to add any simple default empty descriptors? Or just delete the specific image from process of training?

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answered 2017-02-25 05:28:23 -0600

berak gravatar image

updated 2017-02-25 05:30:43 -0600

if you skip images in training, you'll have to skip them for the detection later, too.

inserting an empty feature vector here, like:

        if len(kp) < 1:
            no_kp = np.zeros((1, sift.descriptorSize()), np.float32)
            b_o_w.add(no_kp)

most likely, you'll have an additional, "NOT-FOUND" cluster in your BOW.

try and tell us the outcome !

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Asked: 2017-02-24 07:01:16 -0600

Seen: 1,915 times

Last updated: Feb 25 '17