this is an implementation for "how to use maximum likelihood in segmentation in image processing "

function ML()
image=zeros(256,256);
image(256/4:3*(256/4),256/4:3*(256/4))=200;
%object1=image(256/4:3*(256/4),256/4:3*(256/4));
image(10:60,10:60)=150;
%object2=image(10:60,10:60);
image=image/255;
imshow(image);
[r c]=size(image);
s_avg = sum(sum(image))/(r*c);
SNR=10;
n_sigma=s_avg/(10^(SNR/20));
n=n_sigma*randn(size(image));
image=image+n;
figure,hist(image);
figure,imshow(image);
%-----------PDF of the intensity of a background pixel---------
backgound=image(1:50,70:150);
backgound_pdf=normpdf(backgound,0,1);
%figure,plot(backgound,backgound_pdf);
%----------PDF of the intensity of an object pixel----------
object=image(256/4:3*(256/4),256/4:3*(256/4));
object_pdf=normpdf(object,200,1);
%figure,plot(object,object_pdf);
array=[0 0];
k=1;
for i=1:size(image,1)
for j=1:size(image,2)
%if p(y|black) < p(y|object) then x=object else x=BG
if 1/(sqrt(2*pi)*n_sigma)*exp(-1*((image(i,j)-0)^2/(2*n_sigma^2)) ) <= 1/(sqrt(2*pi)*1)*exp(-1*((image(i,j)-0)^2/(2*1) ))
array(k,:)=[i j];
k=k+1;
end
end
end
map=[];
plotting(array,image,map);
end
function plotting(FParray,fseg,map)
colormap(map)
imshow(fseg);
axis off
hold on
FPSize= size(FParray,1);
for i=1:FPSize
rectangle('Position',[FParray(i,1), FParray(i,2), 1, 1],'Curvature',
[1,1],'FaceColor','r','EdgeColor','r');
end
f=getframe(gca);
[X, map] = frame2im(f);
%imwrite(X,'FeaturePoints.png','png')
end

2 件のコメント

Image Analyst
Image Analyst 2012 年 8 月 1 日
If you think this would be generally useful to lots of other people, then the File Exchange would be the more appropriate place to post this.
Please review the guide to tags and retag this; see http://www.mathworks.co.uk/matlabcentral/answers/43073-a-guide-to-tags

サインインしてコメントする。

回答 (0 件)

カテゴリ

ヘルプ センター および File ExchangeConvert Image Type についてさらに検索

タグ

質問済み:

2012 年 8 月 1 日

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by