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've tried using Histogram Comparison for images comparison. However, it doesn't seems to provide me with good result. For your information:

-Application: visual inspection for any defects on a specific object.

-Test image (static): captured through fixed camera which may result with different contrast & brightness.

-Condition: Check for defects but not lightening issue.

As I know, histogram comparison is rather contrast & brightness sensitive. Also, I've gone through feature detection such as SURF and a very shallow way only. SURF is rather robust but it do not return me with qualitative data, such as percentage of similarity between two images. I need a threshold in order to know whether the "mismatch" is contrast & brightness issue or is the real defects.

Any suggestion or example? Is that possible for me to continue sticking with histogram comparison? Maybe perform histogram equalization will help?

share|improve this question
1  
did you try SSIM (structural similarity index)? – Micka May 20 '14 at 7:58
    
    
I thought this is for VIDEO? – xDevilx May 20 '14 at 8:22
    
you can use it to compare two videos (by comparing each image pair) ;) "The structural similarity (SSIM) index is a method for measuring the similarity between two images" en.wikipedia.org/wiki/SSIM – Micka May 20 '14 at 8:45

It depends on the type of defects that you want to detect. Here, it seems that your defects are can't be described by geometric features, but rather by some light level (brightness ? color ?) change.

As you guessed, the first step is to get rid of the natural intensity change. You can do it by histogram matching of the image under test onto the reference image rather than by histogram equalization. An even more robust algorithm for this task is called Midway equalization.

After you've done that, you may need to register (i.e., overlay) your image under test to your reference image. There are many algorithms for that, and in the end it will depend on your images.

Finally, you'll want to detect the changes. Histogram mismatch can be some metric used for that, but it seems to me to be some really coarse-level tool. If you need finer precision, image difference followed by appropriate filtering could be useful, but it depends a lot on your images and application context.

share|improve this answer
    
What I want to avoid is brightness & contrast issue but what I want to detect is the real defects, such as foreign material, stain, dirt and etc – xDevilx May 20 '14 at 8:35
    
You should give an example (even had drawn if you can't show real images). This would make your goal much clearer. – sansuiso May 20 '14 at 9:08

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.