Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I'm looking for a fast thinning algorithm that can be readily implemented using OpenCV. The mention of the library is because there are certain things that can be done in a jiffy in say, Mathematica or MATLAB which would require lines of handcode in OpenCV+C.

The algorithm must satisfy the 1 pixel thickness and connectedness criteria.

Has anyone got any experience in implementing one of the tons of available algorithms out there? - Literally spoilt for choice at the sheer number of papers Google threw up. Any pointers in the right direction would do.

share|improve this question
    
"has anyone got any experience" type questions tend not to be well answered: do you have a more specific question? – James Nov 10 '11 at 16:36
    
@Autopulated: that's true however i am asking something a bit vague - there are quite a few fast thinning algorithms, the question is has anyone implemented any using OpenCV and C/C++? – AruniRC Nov 11 '11 at 15:04
    
Hello @AruniRC, do you finally get some satisfactory implementation? – zhy Dec 30 '15 at 6:31
up vote 7 down vote accepted

Please check some thinning implementations in my blog:

  1. Zhang-Suen algorithm. (copy on archive.org)
  2. Guo-Hall algorithm. (copy on archive.org)

Both using OpenCV 2.x API.

share|improve this answer
    
finally. i ended up using Zhang-Suen, but nice answer. – AruniRC Jan 14 '13 at 13:44
1  
You should know that your implementation in the post is buggy. It will address outside of the image along the far edges. – Emily L. Jun 15 '15 at 17:15
1  
Links are broken :( – Nick T Apr 21 at 22:17
1  
@flowfree why your blog is down. it was a good reference page. – sturkmen Apr 22 at 21:32

for the sake of completeness, I'm posting here a set of thinning algorithms implemented using OpenCV and C/C++ that I found out on the net while answering this question. These have adequately answered this question for my needs. Putting them here in case others have similar requirements.

  1. OpenCV code for thinning (Guo and Hall algo, works with CvMat inputs)
  2. The JR Parker implementation using OpenCV
  3. Possibly more efficient code here (uses OpenCV optimized access methods a lot, however most of the page is in Japanese!)
share|improve this answer
    
Acctually, the 3rd one runs really slower than the two of @flowfree 's answer – zhy Dec 30 '15 at 6:27

I used Zhang-Suen as well Guo-Hall; both produced satisfactory results but not the best ones. Then I tried "A Modified Parallel Thinning Algorithm" by Y. Y. ZHANG and P.S.P Wang. It was far better than the previous two algorithms. Anyone looking for a good thinning algorithm should try it since it is faster and more effective than the other two.

share|improve this answer
    
did you find any implementation or article explaining this modification? Can you elaborate around how much faster it is? – user657429 Jan 16 '14 at 22:42
    
If you download the research papers and read through them, you will notice that the Zhang-Wang method does only one iteration and additionally, it has some different conditions to be checked. I processed binary images of size 1600 * 1200. It took approx. 5 sec for Zhang-Suen and approx. 3 sec for Zhang-Wang method. – Vikramjit Singh Feb 11 '14 at 14:26

Not sure if this will help you, but I've used this library and found it very useful, (which includes thinning/skeletonisation). You can download the source here:

http://www.aforgenet.com/framework/

and a good article of its use here:

http://www.codeproject.com/KB/GDI-plus/Image_Processing_Lab.aspx

share|improve this answer
    
thanks but currently I'm not considering C# to being used. – AruniRC Nov 11 '11 at 15:01

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.