normalization image, normalization distance pixels
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Hello,
i have image

when I use my code:
img = imread('obraz.bmp');
img = rgb2gray(img);
imshow(img);
%%normalization
   img = ( img - min(img(:)) ) ./ ( max(img(:)) - min(img(:)) );
   img = ~img;
  [m n]=size(img)
  P = [];
  for i=1:m    
      for j=1:n        
          if img(i,j)==1
              P = [P ; i j];        
          end
      end
  end
size(P);
MON=P;     
[IDX,ctrs] = kmeans(MON,3);
clusteredImage = zeros(size(img));
clusteredImage(sub2ind(size(img) , P(:,1) , P(:,2)))=IDX;
imshow(label2rgb(clusteredImage))
my output is

as I am to normalize the image? when I want to output as

Thank for you help
0 Commenti
Risposte (2)
  Image Analyst
      
      
 il 1 Apr 2014
        Get rid of all that. It's a totally wrong approach. You don't need normalization or building up a list of white pixels. Simply threshold the image and label it and apply colors.
rgbImage = imread('obraz.bmp');
grayImage = rgbImage(:,:,2); % Extract green channel.
binaryImage = grayImage > 128;
labeledImage = bwlabel(binaryImage);
coloredLabels = label2rgb (labeledImage, 'hsv', 'k', 'shuffle'); % pseudo random color labels
imshow(labeledImage, []);
Of course if you like really compact code, the 2nd, 3rd, and 4th lines can be combined into one line.
9 Commenti
  Image Analyst
      
      
 il 1 Apr 2014
				Is the shape the white objects or the black objects? Either way, it's trivial with labeling and difficult and faulty with kmeans. If you look at the x,y locations of the points then the centroid of the circle is really close to the centroids of the polygons and the polygon pixels go very near the centroid of the circle and might be classified as circle instead of polygons. Good example of why kmeans is not good for connected components labeling.
  Arshad Ali
 il 10 Mag 2017
        Can any one please help me how to normalized pixel area being consumed by each colour. (Normalized area consumed by red colour=No of pixels of Red/( Total no of pixels in the image)
1 Commento
  Image Analyst
      
      
 il 10 Mag 2017
				See color segmentation demos. Once you have a binary image that defines what pixels you consider to be "red", you simply divide the sum of true/1/white pixels in it by the number of pixels in the image.
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