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I'm working on a piece of code in MATLAB using the Image Processing Toolbox, where I've used Skel=bwmorph(BM,'skel') to get a skeleton of a river. I want to use BP=bwmorph(Skel,'branchpoints') to get the points where confluences and tributaries exist. I'm getting a lot of false positives in BP whenever the skeleton looks like

oQo
Q
o

It marks the Q pixels as branch points as well, along with the actual, expected branch points. There are a lot of false positives like that.

I have noticed that a true branch point occours as an isolated pixel in BP, while fals branch points always form in pairs.

Can anyone please tell me how the branchpoints algorithm finds the points? If I know that, I can be satisfied that there is an actual reason why the false positives are in pairs, and true positives are alone, rather than a lucky coincidence.

I have a feeling it looks at the 8-connectivity around the pixel, but I think that's not all it does.

To clarify, I've marked a cropped image of the output. The positives it gives are shown in red. As can be seen, just one of these pixels is actually a branch point. I want to know how the algorithm works so that I can give a logical reason for why false positives come in pairs (if they infact do).

The image

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I don't get your drawing 'oQo Q o'. Can you maybe upload an image that shows what is happening? –  Tobold May 22 '12 at 12:17
    
I've added a link to the image: link –  shashwat May 22 '12 at 12:32
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2 Answers

up vote 2 down vote accepted

Your pixels are not minimally (8-)connected, try to use

Thin = bwmorph(Skel,'thin');
BP = bwmorph(Thin,'branchpoints');

to remove the unnecessary pixels. (You could also use thin instead of skel).

I think the basic algorithm of branchpoints looks at the 3,3 neighbourhood pixels if at least 3 pixels (excluding center) are '1'.

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Thanks a lot! Using thin to minimally connect them gets rid of the false positives, and I can see exactly why. Additionally, I believe it doesn't just check the 3x3 neighbourhood, since otherwise, any T junction would give 4 pixels and not just 1. (At least that's how my replica of the algorithm panned out when I wrote it) However, you're right.. that does seem to be the main criterion. Thanks again for the 'thin' operation... –  shashwat May 22 '12 at 14:43
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BW = (rgb2gray(imread('w5udH.jpg')) > 50);
[i,j] = ind2sub(size(BW), find(bwmorph(bwmorph(BW,'thin',Inf),'branchpoint') == 1));
imshow(BW); hold on; plot(j,i,'rx');

(there are some strange artifacts in the image caused by uploading it here)

enter image description here

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