- The simplest approach is to apply the fuzzy edge detection and the superpixel clustering separately to the image, and then use the superpixel labels to create a mask to perform whatever processing you wish on fuzzy edges that lie within each of your regions of interest.
- The second approach is to use the superpixel labels to create masks for each of the regions of interest, and then pass the entire image to a separate function to perform fuzzy edge inspection after applying the mask to it. I am not sure what benefits this approach will give you, but the fact that it performs fuzzy edge inspection once for each of your regions of interest means this is by far the longer-running of the two appraoaches.
How to process each labeled ROI separately after super pixel clustering?
    8 views (last 30 days)
  
       Show older comments
    
    Hossain Md Shakhawat
 on 20 Oct 2017
  
    
    
    
    
    Commented: Image Analyst
      
      
 on 30 Oct 2017
            I have applied super pixels clustering on an image. Now I want to process(apply fuzzy edge detection) each labeled ROI separately. The fuzzy edge detection should be applied on original pixels values.
0 Comments
Accepted Answer
  Scott Weidenkopf
    
 on 30 Oct 2017
        Two possible approaches come to mind here:
The second approach could look something like this:
    numRegions = 20;
    [L,N] = superpixels(Irgb,numRegions);
    edgesForRegions = zeros([numRegions size(Irgb,1) size(Irgb,2)]);
    for i = 1:numRegions
        mask = L;
        mask(mask ~= i) = 0;
        mask(mask == i) = 1;
        maskedRgbImage = bsxfun(@times, Irgb, cast(mask, 'like', Irgb));
        edgesForRegions(i,:,:) = getEdges(maskedRgbImage);
    end
    function Ieval = getEdges(Irgb)
        % code from https://www.mathworks.com/help/fuzzy/examples/fuzzy-logic-image-processing.html?
    end
1 Comment
  Image Analyst
      
      
 on 30 Oct 2017
				Or simply use one mask line instead of 3:
mask = L == i;
More Answers (0)
See Also
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!

