# How to detect groups of circles with openCV?

I have a picture like that below. I would like to find groups of circles (their positions) in the image. In the following example there should be three groups. The background is white or will be whitish color.

(In the source image there will not be such rectangulars. I have just painted to show how groups should be like)

Is it possible to find it?

Circles without rectangulars:

-
can you add image without those rectangles? –  Abid Rahman K Jul 9 '12 at 18:41
I have added such picture. –  John Jul 9 '12 at 18:49

1 - Simply invert the image,

2 - then dilate the image so that all circles are joined together,

3 - Find the contours,

4 - find bounding box.

eg :

-
Will dilating the image link the circles if there would be for instance: CCC CC C (C - Circle), long spaces between them? –  John Jul 9 '12 at 18:42
It depends on the number of iterations,kernel used etc. –  Abid Rahman K Jul 9 '12 at 18:44
For eg, in your case, for 2 iterations, there was a split in grouping, while 5 gave correct answer. –  Abid Rahman K Jul 9 '12 at 18:46
I have posted another pictures with long spaces ... –  John Jul 9 '12 at 18:46
Oh no. you won't get that much. –  Abid Rahman K Jul 9 '12 at 18:47

You have to identify the circles using `HoughCircles` and then use clusterisation (K-Means algorithm). OpenCV has K-Means implementation: see example1, example2 and docs.

-
Thanks I will give it a try –  John Jul 9 '12 at 18:50

HoughCircles has as one of its parameters the distance between possible circles before they are considered separate circles. Simply keep tweaking this parameter. As long as your groups of circles are farther apart than the actual circles in each group, HoughCircles will count each circle as part of the same 'circle'.

If your groups of circles overlap, though, then this won't work. You'd have to separate each group somehow. Maybe if all the circles in a group are in a line (like in your pictures) then the basic Hough line detection would give you the lines - then you could check for parallel lines that are close together, and those would indicate each group?

-