Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Hello i'm having problem with segmentation of the following picture below. It's coloured character which needs to be recognized. I'm using sharpening, wiener deblurring and wiener smoothing. After that i'm segmenting the picture with fuzzy-c means clustering (3-class). But in the case of letter E the best i get is without sharpenin,deblurring and smoothing, just with thresholded fcm segmentation. I should however get a better result than this, where i could combine those two parts as a whole (not just upper white part with the other half black).

How could i solve this problem to be more robust and to work with other images also, for example the 5 in the picture? The outcome of 5 is with sharpening, debluring and smoothing, on top of fcm clustering. How could i make it more connected maybe?

I would really appreciate any help i could get, please, oh and I'm doing this in matlab...so it would be nice to get any help from there, thank you!

This is letter E, i would like to get one element as a whole

Second pic is number 5, should be more smooth and connected, without any spaces between lines

EDIT:

My following code is this: function [bw,level]=fcmthresh(IM,sw) if (nargin<1) error('You must provide an image.'); elseif (nargin==1) sw=0; elseif (sw~=0 && sw~=1) error('sw must be 0 or 1.'); end

data=reshape(IM,[],1);
[center,member]=fcm(data,3);
[center,cidx]=sort(center);
member=member';
member=member(:,cidx);
[maxmember,label]=max(member,[],2);
if sw==0
    level=(max(data(label==1))+min(data(label==2)))/2;
else
    level=(max(data(label==2))+min(data(label==3)))/2;
end
bw=im2bw(IM,level);

function img=wienerDeblur(im)
ImgNoisyBlurry = im2double(im);
PSF = fspecial('laplacian'); %LEN, THETA add parameters for 'motion'

noise_var = 0.0001; %0.0001
estimated_nsr = noise_var / var(ImgNoisyBlurry(:));
wnr3 = deconvwnr(ImgNoisyBlurry, PSF, estimated_nsr);
img = wnr3;

end

H = fspecial('unsharp');
im = imfilter(im,H,'replicate');
im = wienerDeblur(im);
im = wienerSmoothing(im);

Thats all of the code, plus i'm using just fcmthres for letter E, cause it works the best. I read about morphological image processing (dilation, erosion) so that might do the trick perhaps.

Are there any better technics for image contrasting and noise removal?

share|improve this question
    
What's your working code right now? –  Eitan T Jul 30 '12 at 7:01

2 Answers 2

after you have it in black and white you can use Singular Value Decomposition (http://en.wikipedia.org/wiki/Singular_value_decomposition) and you can probably compare the singular values.

For noise removal set the smaller singular values to 0.

share|improve this answer

You can try canny edge detection on h-channel (try all channels and compare) (rgb2hsv) followed by morphological operations to close curves and fill (imfill) the curves of numbers and letters. I dont have access to matlab now, but have had success with this on a similar problem.

http://www.mathworks.se/help/techdoc/ref/rgb2hsv.html http://www.mathworks.se/help/toolbox/images/ref/edge.html http://www.mathworks.se/help/toolbox/images/ref/imfill.html

share|improve this answer

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.