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필터 지우기

display output k-means clustering, display output clustering as a image

조회 수: 2 (최근 30일)
Hello,
I have a image, name image :test 3
I,map]=imread('test3','bmp');
I = ~I;
imshow(I,map);
[m n]=size(I)
P = [];
for i=1:m
for j=1:n
if I(i,j)==1
P = [P ; i j];
end
end
end
size(P)
MON=P;
[IDX,ctrs] = kmeans(MON,3)
as I plot the clusters in the image, resulting
I want to draw idx and ctrs in the image.
I don't know, How do I get back image with 3 new cluster(each cluster, different color in the image)
can anyone help ?
Thanks.
  댓글 수: 3
Image Analyst
Image Analyst 2014년 3월 14일
Sorry, I don't have the stats toolbox, which is what has kmeans.
Tomas
Tomas 2014년 3월 14일
I just want to know, how to convert ouput save in cell, back to image. Thanks.

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채택된 답변

Dishant Arora
Dishant Arora 2014년 3월 13일
편집: Dishant Arora 2014년 3월 13일
[ I map] = imread('test3.bmp');
I = ~I;
imshow(I,map);
[m n]=size(I)
P = [];
for i=1:m
for j=1:n
if I(i,j)==1
P = [P ; i j];
end
end
end
size(P)
MON=P;
[IDX,ctrs] = kmeans(MON,3);
clusterImage = zeros(size(I));
clusteredImage(sub2ind(size(I) , P(:,1) , P(:,2)))=IDX;
imshow(label2rgb(clusteredImage))
  댓글 수: 9
Tomas
Tomas 2014년 3월 15일
Thank you very much for your help

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추가 답변 (2개)

rizwan
rizwan 2015년 3월 16일
Hi Experts, I am using the following code to find clusters in my image using K - Mean [ I map] = imread('D:\MS\Research\Classification Model\Research Implementation\EnhancedImage\ROIImage.jpeg'); I = ~I; imshow(I,map); [m n]=size(I) P = []; for i=1:m for j=1:n if I(i,j)==1 P = [P ; i j]; end end end size(P) MON=P; [IDX,ctrs] = kmeans(MON,3,'display', 'iter','MaxIter',500); clusterImage = zeros(size(I)); clusteredImage(sub2ind(size(I) , P(:,1) , P(:,2)))=IDX; imshow(label2rgb(clusteredImage))
The out put of the above code is
>> ImageEnhancement
m =
180
n =
317
ans =
20306 2
iter phase num sum
1 1 20306 9.40619e+07
2 1 2727 7.34318e+07
3 1 876 7.1216e+07
4 1 574 7.03212e+07
5 1 410 6.98473e+07
6 1 298 6.96024e+07
7 1 173 6.95038e+07
8 1 122 6.94633e+07
9 1 65 6.945e+07
10 1 45 6.9445e+07
11 1 30 6.9443e+07
12 1 15 6.94424e+07
13 1 8 6.94422e+07
14 1 3 6.94422e+07
15 1 1 6.94422e+07
16 2 0 6.94422e+07
Best total sum of distances = 6.94422e+07
Warning: Image is too big to fit on screen; displaying at 2%
Can any one explain this out put and how can i see proper out put of K- Mean???
I shall remain thank full You To
Regards

Yanyu Liang
Yanyu Liang 2016년 11월 30일
It shows how the kmeans is going at each iteration. "kmeans" implementation in matlab has two phases (you can think of it as two different approach to update assignment), so "phase" just tells if it is using first phase or second. "num" tells the number of points that change their assignment at that iteration (as you can see when it hits zero, the algorithm stops). "sum" is the objective value "kmeans" is trying to minimize.

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