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enter image description hereenter image description hereI'm looking for some ideas to detect lines in the attached image. Lines are assumed to be vertical, but their are very poor quality and there are only 2-3 pixels between each blurry line.

I tried these methods already: Erosion& Dilation in vertical ->good result for enhancement CLAHE -> Good for enhancement Hough -> Failed since converting the images to Black & while will have too many broken lines or bridges. Also I tried vertical line Mask too. Basically methods based on Black&White image conversion won't be applicable for this.

Detecting very thin lines in blurry image

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matlabcorner.wordpress.com/2012/10/09/… - (Disclaimer - this is my own blog). –  Andrey Dec 7 '12 at 18:21

3 Answers 3

up vote 12 down vote accepted

I would collapse the image along the lines to get 1d profile. And do the detection there (e.g. by looking at the peaks above the median.

Here is the collapsed image collapsed image

The object detection there is obvious

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Seems to be an interesting approach. How did you collapse the columns to get such a good 1d profile ? –  mmgp Dec 7 '12 at 17:36
    
+1. One can just use ys = sum(I,1), were I is the grayscale image. Also, to find the maxima, you could use findpeaks(), maybe in combination with smooth() to remove noise. –  catchmeifyoutry Dec 7 '12 at 17:42
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Works great on this sample, but will fail if the rotation happens to cause the top and bottom to be offset relative to each other by exactly one line. You could reduce the problem by taking only a small stripe from the middle of the image. –  Mark Ransom Dec 7 '12 at 17:52
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@mmgp I'm collapsing the columns by just summing, and the author explicitly said "Lines are assumed to be vertical", which is exactly the problem I was solving. If they are indeed vertical, the procedure will work for sure. If they are only slightly non-vertical, then the way to deal with it is to split the y axis into few chunks, make 1d profiles for each chunk, detect the peaks there. But anyway I'm not pretending that the solution is 100% optimal. It does the job of solving the specified problem. I'm pretty sure it can be done differently/better. –  sega_sai Dec 7 '12 at 18:14
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collapsing was a very good idea so far, Thanks. And i think for the case where there is some rotation, we have to find the rotation with another method! Do you guys think of any filtering method to enhance the quality a bit more? There's no illumination problem for this case, rotation can be discussed in another post too. –  Hamed Dec 7 '12 at 18:18

Very promising works regarding faint edges detection in noisy images: Basic version for straight lines: http://www.wisdom.weizmann.ac.il/~meirav/EdgesGalunBasriBrandt.pdf More advanced version: http://www.wisdom.weizmann.ac.il/~meirav/Curves_Alpert_Galun_Nadler_Basri.pdf

I'm not sure if the authors made their code publicly available. It might be worth-while contacting the authors directly.

These works proposes a well studied and principled method for faint-edge detection.

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Great papers, thanks! A simple google search turns up this source code: java.net/projects/ixent/sources/svn/show/trunk/src/org/jvnet/… It may or may not be the source code to the papers/algorithms in question. This is the homepage for the papers: wisdom.weizmann.ac.il/~ronen/index_files/edges.html –  dberm22 Mar 25 at 11:55

Here's an alternative approach, that will find you the lines, assuming that the peak is apparent within ~5 pixels. It will be tolerant to small rotations of the image.

img = imread('http://i.stack.imgur.com/w7qMT.jpg');
img = rgb2gray(img);

%# smoothen the image a little with an anisotroic Gaussian
fimg = imfilter(double(img),fspecial('gaussian',[3 1]));

%# find the lines as local maxima
msk = ones(5);
msk(:,2:4) = 0;
lines = fimg > imdilate(fimg,msk);

enter image description here

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You can then use e.g. bwareaopen to remove some of the spurious signals, and you can run skeletonization to make the lines 1 pixel wide. –  Jonas Dec 7 '12 at 19:04
    
This is a good approach for filtering. Thanks. But how would you detect such thin lines? For example in the situation where the lines in the bottom of the black area is e.g. 20% of the rest of the lines, wouldn't those be eliminated if we seek for the peaks only? –  Hamed Dec 7 '12 at 19:32
    
@Hamed one way I can see to proceed from here is simply by majority voting. Pick the first line, if there is a white point at position x then, for the moment, you say there is a vertical line passing on x. Repeat for every line. If at a given position x you get most of lines "saying" there is a white dot on x, then you draw a vertical passing on x. If you don't thin the lines (I believe Jonas misspelled this, you don't want to obtain a skeleton here) then you will possibly get multiple adjacent lines which can be easily collapsed into a single one. –  mmgp Dec 7 '12 at 20:04
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@Hamed: The output here is the segmentation result. What information do you need to extract from the lines? –  Jonas Dec 7 '12 at 20:37
    
I actually need to retrieve lines about perfectly to reconstruct the image. Answering your question, number of lines is important too, though counting them isn't an issue if they are nicely highlighted. Thanks. –  Hamed Dec 7 '12 at 21:31

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