Sliding window minimum and maximum filter
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I'm trying to apply a sliding window minimum and maximum filter to an image of a certain window size. Actually, I'm trying to find the optimum window size for it. But I really haven't gotten the hang of it. I presume that I should be using blockproc to implement the sliding window, but not really sure how to find the maximum and minimum filter. As to the implementation itself, should I use loops to slide the window across the entire area of the image ?
5 Comments
Image Analyst
on 1 Dec 2012
From the description "A two-element vector, [V H], specifying the amount of border pixels to add to each block. The function adds V rows above and below each block and H columns left and right of each block." it looks like you'd have a windowSize of 1 so that it moves over in jumps of 1 pixel each time, but the 'BorderSize' would be half your window width so that it includes more than just the one pixel it's centered on. So if you wanted a 5 by 5 window, you'd set a windowSize of 1 and a BorderSize of 2. I think - I haven't tried it.
Accepted Answer
Image Analyst
on 29 Sep 2012
If you have the Image Processing Toolbox, you're in luck!. The sliding max filter is called imdilate() and the sliding min filter is imerode(). These are called "morphological operations." No loops needed:
localMinImage = imerode(grayImage, true(3));
localMaxImage = imdilate(grayImage, true(3));
17 Comments
Matt J
on 28 Apr 2014
Padding doesn't require the IP toolbox, e.g.,
p=2; %padding
Apad=zeros(size(A)+2*p,class(A));
Apad(p+1:end-p,p+1:end-p)=A;
Image Analyst
on 28 Apr 2014
What do you mean by shift? As long as the window size is odd, e.g. 3 or 5, there will be no shift. If the window size is even, e.g. 2 or 4, then there will be a half pixel shift.
More Answers (4)
Matt J
on 29 Sep 2012
Edited: per isakson
on 25 Oct 2014
I would just use a for-loop to do 2 separable passes. BLOCKPROC can't take advantage of the separable nature of the max/min filter:
A=rand(100);
window=3;
[m,n]=size(A);
B=A;
for ii=1:m+1-window
B(ii,:)=max(A(ii:ii+window-1,:),[],1);
end
for ii=1:n+1-window
B(:,ii)=max(B(:,ii:ii+window-1),[],2);
end
1 Comment
Royi Avital
on 23 Apr 2014
This is nice and fast. Yet it shift the matrix to the right.
How would replicate the results of `imerode` or `imdilate` with Image Processing Toolbox (no `padaaray`) most efficiently?
Thaks.
Royi Avital
on 23 Apr 2014
I would use:
localMaxImage = colfilt(inputImage, [winLength winLength], 'sliding', @max);
localMinImage = colfilt(inputImage, [winLength winLength], 'sliding', @min);
Though it is still requires patience. I wonder what would be the fastest way to do so without Image Processing Toolbox.
0 Comments
tilak tenneti
on 24 Oct 2014
Edited: per isakson
on 25 Oct 2014
i want to apply a sliding window minimum filter on input image I and obtain Imin and also apply sliding window maximum filter on Imin to obtain Imax : the following is code
N=1;
Imin=ordfilt2(I, 1, true(N));
N=10;
Imax = ordfilt2(Imin, N*N, true(N));
here i assume N as window size... but i am confused as how should i take N for minimum filter and again N for maximum filter?
0 Comments
Dan
on 19 Jun 2017
function [minVals,maxVals] = minmaxfilt1(vector,nhoodSz)
vector = vector(:);
if nhoodSz < 3 || ~floor(mod(nhoodSz,2))
error('nhoodSz must be odd scalar');
end
minVals = min(conv2(vector,eye(nhoodSz)),[],2);
maxVals = max(conv2(vector,eye(nhoodSz)),[],2);
minVals = minVals(((nhoodSz-1)/2)+1: end- ((nhoodSz-1)/2));
maxVals = maxVals(((nhoodSz-1)/2)+1: end - ((nhoodSz-1)/2));
end
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