pixel bin relation imhist

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Sylvain Hauser
Sylvain Hauser el 22 de Ag. de 2017
Respondida: Image Analyst el 22 de Ag. de 2017
Hello,
I'm using imhist, and I would like to assign a default value to each pixel whose intensity appears less than a fixed number of times in the image. In other words, I would like a function whose input is an image and the output is its histogram and the concerned pixels (their location) for each bin of the histogram. I could write a script doing that, but I'm looking for a direct method, as optimized as possible.
Thanks for your help
Sylvain
  1 comentario
Adam
Adam el 22 de Ag. de 2017
Well, I'm pretty sure there isn't a single inbuilt function that will do it all for you so you'll have to write some code. It depends what you consider a 'direct' method vs whatever you think the alternative is.

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Respuestas (3)

Jan
Jan el 22 de Ag. de 2017
The question is not clear. What are " concerned pixels (their location)" exactly?
I assume you want to start with:
[counts, binLocations] = imhist(I); % Or imhist(I, n) with a suitng n?
And now you want set all binLocations with counts<limit to a certain value? How would the script you have mentioned look like?
  3 comentarios
Adam
Adam el 22 de Ag. de 2017
Well, you haven't shown your script so who knows if there is a better way or not until you do?!
Sylvain Hauser
Sylvain Hauser el 22 de Ag. de 2017
Sorry, here is my script, f being the grayscale image and F a factor to determine the threshold:
function [f] = imhist2(f,F)
bl=linspace(0,1,256);
bl1=zeros(size(bl));
bl1(2:end)=(bl(1:end-1)+bl(2:end))/2;
bl2=ones(size(bl));
bl2(1:end-1)=(bl(1:end-1)+bl(2:end))/2;
th=F*max(imhist(f));
cn=zeros(size(bl));
for i=1:length(bl)
ind=find(f>bl1(i)&f<bl2(i));
cn(i)=length(ind);
if cn(i)<th
f(ind)=mean2(f);
end
end
end

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Jan
Jan el 22 de Ag. de 2017
Editada: Jan el 22 de Ag. de 2017
Try this:
Edge = linspace(0,1,256);
[N, Edge, Bin] = histcounts(f, Edge);
V = (N < (F * max(N)));
Mask = V(Bin);
f(Mask) = mean(f(:));
histcounts determines the frequency of values. I've used the simpler linspace(0,1,256) here, because the intention of your bl1 and bl2 is not clear to me. You can adjust the wanted edges as you want. Then a mask is created, which is TRUE for all values, which appear less than F times the most frequent value.

Image Analyst
Image Analyst el 22 de Ag. de 2017
Then simply threshold it and assign the new value you want.
pixelsToReplace = cfImage < someThresholdValue;
cfImage (pixelsToReplace) = desiredValue;

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