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positive_imge_ayiklama.m
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positive_imge_ayiklama.m
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clear all;
Base = '..\covid19_ECG\ECG Images of COVID-19 Patients (250)\type_1';
List = dir(fullfile(Base, '**', '*.jpg'));
Files = fullfile({List.folder}, {List.name});
load('coordinates.mat');
covid_statistical=[];
%iFile = 1
%figure, set(gcf,'visible','off');
for iFile = 1:numel(Files)
I = imread(Files{iFile});
%imshow(I)
%kýrpma
% [J,rect] = imcrop(I); %koordinatlarý bulmak icin
%[103.5 104.5 723 432] tüm ecg
I2 = imcrop(I,[103.5 104.5 723 432]);
% imshow(I2)
%%%%[J,rect] = imcrop(I2); %koordinatlarý bulmak icin
%I3 = imcrop(I2,[40.5 4.5 152 90]); % bir kanal
% imshow(I_image)
I_image= imcrop(I2,[42.5 0.5 112 112]);
aVR_image= imcrop(I2,[237.5 0.5 112 112]);
V1_image=imcrop(I2,[418.5 0.5 112 112]);
V4_image= imcrop(I2,[579.5 0.5 112 112]);
II_image= imcrop(I2,[42.5 112.5 112 112]);
aVL_image= imcrop(I2,[237.5 112.5 112 112]);
V2_image=imcrop(I2,[418.5 112.5 112 112]);
V5_image= imcrop(I2,[579.5 112.5 112 112]);
III_image= imcrop(I2,[42.5 224.5 112 112]);
aVF_image= imcrop(I2,[237.5 224.5 112 112]);
V3_image=imcrop(I2,[418.5 224.5 112 112]);
V6_image= imcrop(I2,[579.5 224.5 112 112]);
% -li sinyal oluþturma
I_image_neg=I_image(end:-1:1,:,:); %figure, imshow(I_image_neg)
aVR_image_neg=aVR_image(end:-1:1,:,:);
II_image_neg=II_image(end:-1:1,:,:);
aVL_image_neg=aVL_image(end:-1:1,:,:);
III_image_neg=III_image(end:-1:1,:,:);
aVF_image_neg=aVF_image(end:-1:1,:,:);
all_cropped_image=cat(4, I_image, aVL_image, III_image_neg, aVF_image_neg, ...
II_image_neg, aVR_image, I_image_neg, aVL_image_neg, III_image, aVF_image,...
II_image, aVR_image_neg, V1_image, V2_image, V3_image, V4_image, V5_image, V6_image );
%size(all_cropped_image)
% figure, imshow(all_cropped_image(:,:,:,5));
% coordinate_labels=["I", "aVL" , "III(-)" ,"aVF(-)" ,"II(-)" ,"aVR", "I(-)" , "aVL(-)", ...
%"III", "aVF", "II", "aVR(-)", "V1", "V2", "V3", "V4", "V5", "V6"];
%adjust
for i=1:18
K = imadjust(all_cropped_image(:,:,:,i),[0.1 0.7],[]);
% figure
% imshow(K)
% arkaplan kaldýrma
binaryImage = K(:, :, 2) < 250; % Or whatever threshold works.
binaryImage = bwareafilt(binaryImage, 1); % Extract only the largest blob.
% figure, imshow(1-binaryImage)
all_cropped_image_binary(:,:,i)=(binaryImage);
%figure, imshow (all_cropped_image_binary(:,:,5))
switch (i)
case 1
channel='\I\';
case 11
channel='\II\';
case 9
channel='\III\';
case 6
channel='\aVR\';
case 2
channel='\avL\';
case 10
channel='\avF\';
case 13
channel='\V1\';
case 14
channel='\V2\';
case 15
channel='\V3\';
case 16
channel='\V4\';
case 17
channel='\V5\';
case 18
channel='\V6\';
case 7
channel='\I(-)\';
case 5
channel='\II(-)\';
case 3
channel='\III(-)\';
case 12
channel='\aVR(-)\';
case 8
channel='\avL(-)\';
case 4
channel='\avF(-)\';
end
% coordinate_labels=["I", "aVL" , "III(-)" ,"aVF(-)" ,"II(-)" ,"aVR", "I(-)" , "aVL(-)", ...
%"III", "aVF", "II", "aVR(-)", "V1", "V2", "V3", "V4", "V5", "V6"];
%%save ECG images
kayit_yeri=strcat( '..\covid19_ECG\preprocessed_dataset\covid_19'...
,channel);
kayit_yeri=strcat(kayit_yeri,num2str(iFile));
kayit_yeri=strcat(kayit_yeri,'.png');
% imshow (1-all_cropped_image_binary(:,:,i))
% export_fig( kayit_yeri ,'-transparent', '-r300')
%-m2.5
end % 12 channel
% %comatrix
% comat=[];
% for k=1:18
% comat= [comat graycomatrix(logical(all_cropped_image_binary(:,:,k)))];
%
% end
%asýl feature cikarma burasi, eskiden matrix alýyorduk þimdi burada herþeyi
%düzgünce hesaplýyoruz
comat_energy=[];
comat_correlation=[];
comat_contrast=[];
comat_homogeneity=[];
for k=1:18
glcms=graycomatrix(logical(all_cropped_image_binary(:,:,k)));
stats = graycoprops(glcms);% Calculate properties of gray-level co-occurrence matrix
comat_energy= [comat_energy stats.Energy];
comat_correlation= [comat_correlation stats.Correlation];
comat_contrast= [comat_contrast stats.Contrast];
comat_homogeneity= [comat_homogeneity stats.Homogeneity];
end %feature exraction
%statistical difference
covid_statistical= [covid_statistical; comat_energy' comat_correlation' comat_contrast' comat_homogeneity'];
% statistical_label= ["Energy","Correlation","Contrast","Homogeneity"] ;
%loksayona göre haritalama
% x_coordinates = [2.5; 1.5; 3; 2; 1; 2; 3; 5; 6; 7; 6; 5; 6.5; 5.5];
% y_coordinates = [7; 5.7; 5.8; 5; 4; 2; 1; 1; 2; 4; 5; 5.8; 6; 7];
xi=linspace(min(x_coordinates),max(x_coordinates),100);
yi=linspace(min(y_coordinates),max(y_coordinates),100);
[XI YI]=meshgrid(xi,yi);
ZI = griddata(x_coordinates,y_coordinates,comat_energy(1,1:end)',XI,YI,'natural');
% figure, set(gcf,'visible','off');
% contourf(XI,YI,ZI,40);
%colormap(jet);
%axis off
%save features map
kayit_yeri=strcat( '..\covid19_ECG\feature_maps\covid_19\'...
,num2str(iFile));
kayit_yeri=strcat(kayit_yeri,'.png');
% export_fig( kayit_yeri ,'-transparent', '-r300')
%-m2.5
end% dosya