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So I'm trying to find fingers using convexityDefects(); however, I am getting a lot of false positives. I thought I could fix this by going to the given convexity defect endpoint and within the contour near that area I could integrate to find the area and if it is small enough that could be determined an actual finger and not a false positive. How would I go about doing so, any help would be great Thanks!

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If you solved this problem yourself, it would be very helpful if you could post your solution or a description of it. –  cjm2671 Sep 3 '14 at 15:48

2 Answers 2

Well:

defects = cv2.convexityDefects(cnt,hull)

gives you a list of defects that are of the form:

[start_point,end_point,far_point,distance]

Using that you should be able to calculate the area of the triangles. However you will still likely see a number of false positives.

I've been asking a similar question here: scipy signal find_peaks_cwt not finding the peaks accurately?

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In fact what you want is to decrease the number of false positive. Can you join at least two examples with contours drawn on it of falses positives that you want to reject with the method you have mentioned before?

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