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I am new to image analysis. Do you know how to binarize this image in such a way to get the fibers only?

Fibers in the liquid

I have tried different tresholds techniques etc. But I was not successful. I do not mind what tool I should use but I prefer .NET or Matlab.

PS: I did not know where to put my answer, so I put it at StackOverflow.

share|improve this question
1  
As an alternative to SO, try dsp.stackexchange.com – Jonas Sep 12 '11 at 13:32
    
Thanks, I have asked there as well and the question can be found here – Oldrich Svec Sep 12 '11 at 16:40
up vote 4 down vote accepted

Based on the comments, it seems you are having difficulty translating the proposed Mathematica solutions into MATLAB. Here is my attempt:

@Nakilon solution

%# read image
I = im2double(imread('http://i.stack.imgur.com/6KCd1.jpg'));

%# ImageAdjust[]
II = I;
for k=1:size(II,3)
    mn = min(min( II(:,:,k) )); mx = max(max( II(:,:,k) ));
    II(:,:,k) = ( II(:,:,k) - mn ) ./ (mx-mn);
end

%# Sharpen[]
II = imfilter(II, fspecial('unsharp'));

%# MinDetect[], MaxDetect[]
II = rgb2gray(II);
mn = imextendedmin(II,0.3,8);
mx = imextendedmax(II,0.7,8);

%# pad image because Mathematica handles border cases differently than MATLAB
pad = 30;
q = padarray(mn, [pad pad], 'symmetric', 'both');

q = medfilt2(q, [5 5]*2+1, 'symmetric');                 %# MedianFilter[]
q = ordfilt2(q, 1, ones(2*5+1), 'symmetric');            %# MinFilter[]
q = ordfilt2(q, (25*2+1)^2, ones(25*2+1), 'symmetric');  %# MaxFilter[]
q = ordfilt2(q, 1, ones(20*2+1), 'symmetric');           %# MinFilter[]

%# un-pad image
q = q(pad+1:end-pad, pad+1:end-pad, :);

%# ImageSubtract[], ImageMultiply[], ImageAdd[]
a = imsubtract(mn,q)==1;    %# a = mn; a(q) = false;
b = immultiply(mx,q);       %# b = mx & q;
c = imadd(a,b);             %# c = a | b;

%# show images
figure(1)
subplot(121), imshow(mn)
subplot(122), imshow(mx)
figure(2), imshow(q)
figure(3)
subplot(121), imshow(a)
subplot(122), imshow(b)
figure(4), imshow(c)

Note that there are differences at the edges. In the Mathematica documentation, it vaguely says:

At the edges of an image, MedianFilter/MinFilter/MaxFilter uses smaller neighborhoods.

But there is no direct match for this behavior, instead MATLAB gives you the option to customize the padding at the boundaries of the images.

screenshot1


@belisarius solution

%# read image
I = im2double(imread('http://i.stack.imgur.com/6KCd1.jpg'));

%# LaplacianGaussianFilter[]
II = imfilter( I , fspecial('log', [2 2]*2+1, (2*2+1)/2) );

%# ImageAdjust[]
for k=1:size(II,3)
    mn = min(min( II(:,:,k) )); mx = max(max( II(:,:,k) ));
    II(:,:,k) = ( II(:,:,k) - mn ) ./ (mx-mn);
end

%# Binarize[]
BW = im2bw(II, 0.6);

%# DeleteSmallComponents[]
BW = bwareaopen(BW, 2, 8);

%# show images
figure
subplot(121), imshow(BW)
subplot(122), imshow( imoverlay(I,BW,[0 1 0]) )

screenshot2

share|improve this answer
    
Thanks a lot! I was completely lost in the Mathematica. – Oldrich Svec Sep 14 '11 at 4:51
    
glad I could help. I forgot to mention that I am using the IMOVERLAY function by Steve Eddins: blogs.mathworks.com/steve/2006/03/28/image-overlays – Amro Sep 14 '11 at 13:23

The following may help a bit (Code in Mathematica):

DeleteSmallComponents[
 Binarize[
   LaplacianGaussianFilter[i, 2],
 .6],
 2]

enter image description here

Image composition to show the matching:

ImageCompose[i, {i1, .4}] // ImageAdjust

enter image description here

share|improve this answer
    
Thanks for that! I will try to apply your suggestions tomorrow. The point is that I need as little noise as possible as the noise ruins my computations. I need to get the overall orientation of the fibers and the noise deforms the results quite significantly. – Oldrich Svec Sep 12 '11 at 15:59
    
@Oldrich Hmmm ... perhaps you should specify the term "orientation" better – Dr. belisarius Sep 12 '11 at 16:20
    
Well it is about orientation tensors -> more complicated. That is why I did not want to go that deep into it. But lets say that less is better for me. So I prefer to have 70 % of all the fibers and almost no noise than 90 % of all the fibers with a lot of noise. – Oldrich Svec Sep 12 '11 at 16:39
    
@belisarius: I think you forgot to apply ImageAdjust after the LoG filter and before Binarize[] – Amro Sep 13 '11 at 14:54

Try MinDetect and MaxDetect.

s = Sharpen @ ImageAdjust @ originalimage
{min, max} = {s~MinDetect~.3, s~MaxDetect~.7}
min~MedianFilter~5~MinFilter~5~MaxFilter~25~MinFilter~20
{min~ImageSubtract~%, max~ImageMultiply~%}
ImageAdd @@ %

enter image description here

share|improve this answer
    
Thanks, that looks good! I have tried to rewrite it to Matlab (I do not have Mathematica) but I was not successful so far. I will keep trying but if you also knew Matlab I would really appreciate if you could also provide Matlab version. – Oldrich Svec Sep 13 '11 at 6:50
    
@Nakilon: I tried your code in Mathematica, but I'm not getting the same result. What is s exactly, is it the original image? – Amro Sep 13 '11 at 14:30
1  
@Amro, my fault! Lost one line. Fixed. – Nakilon Sep 13 '11 at 14:36
    
+1 thanks now its working. @OldrichSvec: I posted a somewhat equivalent version in MATLAB. – Amro Sep 13 '11 at 21:44

Read about Edge Detection. Thats what you need in this case. a threshold will not help you. Fibers (which are mostly straight) will be relatively easy to detect. But as there is a chapter on the Wikipedia site: "Why edge detection is a non-trivial task"...

share|improve this answer
    
Could you please be more elaborate on that? I could spend years studying the topic, but I do not have that much time. Anything which works is just fine for me right now :) – Oldrich Svec Sep 12 '11 at 12:52
    
you can check if this codeProject works for you: codeproject.com/KB/cs/Canny_Edge_Detection.aspx . Canny edge detection is ok. But as always, if you know what you are doing you will get better results... – fix_likes_coding Sep 12 '11 at 13:12

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