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I need a way to enhance the text in degraded historical document images.

enter image description here

I tried using otsu's method and a few thresholding techniques but there wasnt much improvement in the quality. Could someone please tell the best way to go about the problem.Thanks

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could u show some sample images? –  vini Mar 22 '12 at 16:39
    
If the lighting is not uniform in the images, you could try a thresholding method based on the local neighborhood, instead of the entire image. –  Maurits Mar 22 '12 at 21:59
    
this is what it looks like: i44.tinypic.com/nqd6au.jpg –  NeedHelp Mar 23 '12 at 10:53
    
as you can seen the brightness is uneven and seperating text from background is not working with local thresholding –  NeedHelp Mar 23 '12 at 10:55
    
"NeedHelp"? A real name and a real reputation help to create a better community. –  TH. Mar 23 '12 at 16:47

2 Answers 2

up vote 2 down vote accepted

I would use a combination of color manipulation and local thresholding. As a first step, look at the value (HSV) plane, extract it, because black on col is easily extracted with that. I did a bit of a lookup (a sort of logarithmic greyscale multiplication), to make the contrast between background and text even higher. I used a local thresholding method called Niblack to extract the text, and finally, some morphology to remove tiny artefacts. enter image description here

Masked the whole thing and smoothed a bit (low pass).


edit: I have been asked to add references to Niblack. It is usually referenced in a 1986 textbook written by him, but for better accessibility, I will point you to a paper that also describes the algorithm and gives some food for thought on how to proceed with this:

These improved algorithms are problem-specific, the original Niblack is still my goto-start when I want localized thresholds.

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thanks a lot! this is really helpful.Could you please post the code so i could refer to it? –  NeedHelp Mar 25 '12 at 2:50
    
I'm sorry, I do not really have code, I just did a quick algorithm sketch with IMAQ/Vision Assistant. I can give you the vscr-File for that, but it would probably not help you with any other language. But there is no need for that, the things I've mentioned should be implemented in most libraries. –  Birgit P. Mar 26 '12 at 1:53
    
But I'll just do screenshots of the steps: imgur.com/a/8PGX2 1: Value plane 2: Lookup (sorta logarithmic = adjust brightness, contrast, gamma to improve) 3: Niblack 4: Remove small particles (morphology) 5: Inverse (well, just to make it look better) 6: Smooth (Low pass). You should be able to do the masking yourself. Look at those pics in high resolution to see what I did. –  Birgit P. Mar 26 '12 at 2:07
    
I really appreciate your help. I should be able to implement all the above steps you mentioned except for the niblack thresholding part.I havent heard of this algorithm before. If you could send me the matlab implementation code for that it would be really helpful.Thanks again for all your help! –  NeedHelp Mar 26 '12 at 4:41
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@SebastianSchmitz Did so. –  Birgit P. Jul 1 '14 at 19:26

From what I can see, text is black and background is brown. Try to use not only brightness, but also colour for segmentation.

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