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I have a Canny edge detected image of a ball (see link below) which contains a lot of noisy edges. What are the best image processing techniques that I can use to remove these noisy edges without removing the edges belonging to the ball?

Original image


Canny edge image


Many thanks everyone in advance for your help and advice, much appreciated!

Ps I am trying to clean up the edge image prior to using the Circle Hough Transform to detect the ball.

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It would be useful to see the original image. Canny has three parameters as inputs, one of which is the size of the Gaussian blur filter used for pre-processing and the other two are thresholds that control the level of detail returned. I suspect you can improve the result with more suitable choices but would need the original image to be sure. –  Roger Rowland Aug 13 '13 at 4:58
I'm auto-calculating Canny parameters as follows: double high_thres = cv::threshold( orig_img, thres_img, 0, 255, CV_THRESH_BINARY+CV_THRESH_OTSU ); lower thres = 0.1 * high_thres cv::Canny(orig_img, cannyOP, lower_thres, high_thres); If I go any lower than the 0.1 multiple for the 'lower_thres' I get too much noise, if I go higher, I lose the edges that belong to the ball. This is taken from: stackoverflow.com/questions/4292249/… –  Mr X Aug 13 '13 at 8:06
Ok, then can you provide a link to the original image (I'll add it to your question)? –  Roger Rowland Aug 13 '13 at 8:26
I will do no problem, but it will be later in the evening when I'm home :) Thanks. –  Mr X Aug 13 '13 at 8:29
Hi Roger, a little off topic, are there any other ways of detecting/tracking a ball (which may be occluded), that you know of, other than the Circle Hough Transform? –  Mr X Aug 13 '13 at 8:40

2 Answers 2

The best option is to filter the image before applying the edge detector. In order to keep the sharp edges you need to use a more sophisticated filter than the Gaussian blur.

Two easy options are the Bilateral filter or the Guided filter. These two filters are very easy to implement and they provide good results in most cases: gaussian noise removal preserving edges. If you need something more powerful, you can try the filter BM3D, which is one of the state-of-the-art filters, and you can find an open source implementation here.

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The best way to remove those is probably not to have them in the first place if you can. If the lines are noisy artifacts in the image apply a smoothing filter such as a Gaussian to level the image out. -> Gaussian filter info

Removing them once they are there is tricky and would probably involve some higher level shape recognition stuff

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Canny has a built-in Gaussian blur - there's no need for a separate step. –  Roger Rowland Aug 13 '13 at 4:58
but if the smoothing isn't strong enough you are still going to pick up artifacts, a pre-filtering stage (with a not necessarily gaussian filter) could help –  Samuel Barnett Aug 13 '13 at 19:04
Yes that's right, I was just pointing out that your suggestion of a Gaussian blur is already a part of the Canny algorithm. –  Roger Rowland Aug 14 '13 at 4:28

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