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I'm getting this problem:


I'm using Python and OpenCV. I'm trying to separate the contours of the touching coins using erode. I thresholded the image and then tried to apply the erode but nothing happened. I've read the documentation and still don't understand very well how the getStruturingElement and erode works.

  1. I've thresholded the image.

  2. used erode on the thresholded image.

and still nothing. What am I using wrong here?

Here's part of the code:

import cv2, numpy as np

#1.Reads Image
objectImage = cv2.imread('P1000713s.jpg')

#2.Converts to Gray level
cvtcolorImage = cv2.cvtColor(objectImage,cv2.cv.CV_RGB2GRAY)

imgSplit = cv2.split(objectImage)
flag,b = cv2.threshold(imgSplit[2],0,255,cv2.THRESH_OTSU) 

#4.Erodes the Thresholded Image
element = cv2.getStructuringElement(cv2.MORPH_CROSS,(3,3))

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What makes you think there is nothing changed? Did you verify it with image difference or something? –  Tae-Sung Shin Nov 17 '12 at 20:03
yes I did. Ive tried to post the output image but it doesnt let me because of my low reputation. Perhaps I am using wrong the cv2.erode? can someone give me an example of how to use erode in python opencv? Thanks –  Cap.Alvez Nov 17 '12 at 20:35
You might be able to use DBSCAN from the sklearn.clustering module to separate two or more coins that overlap at the edges. DBSCAN is a density based clustering algorithm, and if you adjust the radius parameter well enough, you might be able to separate the coins. –  cjohnson318 Nov 17 '12 at 21:08
You could try a bigger element, say 20x20. You can compensate back (dilate) later. –  Barnabas Szabolcs Nov 18 '12 at 0:34

2 Answers 2

up vote 1 down vote accepted

Looking at your image, it's possible that a 3x3 cross mask will always stay within the thresholded area. Rather than using MORPH_CROSS, use MORPH_ELLIPSE.

If the coins are still "touching" after one call, you could always run multiple calls to erode, but be warned that this will have a destructive effect on your image.

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I did it, I already erode the image and the contour is separated for both coins. And youre right.. the image is really damaged ahah, how can I correct the effect? maybe using dilate? –  Cap.Alvez Nov 18 '12 at 0:40
You could dilate, but that's essentially a reverse operation and you would get your original image back. I'm on my phone, so I can't provide a link, but there are special morphological operators for "opening" and "closing" shapes that are essentially just a sequence of dilation and erode calls. Hope this helps! –  Chris Nov 18 '12 at 1:03

I know this is an old question, but I had similar problems, and found this problem via Google.

As far as I know cv2.erode() doesn't change the source image, instead it returns a new image with the change applied.

changing your line containing the erode call to:

b = cv2.erode(b,element)

should let you see the changes when you call the cv2.imshow(...,b)

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