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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
As an alternative to SO, try – 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(''));

%# 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);

%# 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
subplot(121), imshow(mn)
subplot(122), imshow(mx)
figure(2), imshow(q)
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.


@belisarius solution

%# read image
I = im2double(imread(''));

%# 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);

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

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

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


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: – Amro Sep 14 '11 at 13:23

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

   LaplacianGaussianFilter[i, 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~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
@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: . 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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