NORMALIZED CROSS CORRELATION AS A SIMILARITY MEASURE TO FIND SCORE MATRIX

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Hello everyone. I've 2 face images (2 probes) and 100 templates (face images or gallery). I want to compare each probe with all the 100 galleries. For eg, Probe 1 will be compared with 100 galleries, then probe2 will be compared to 100 galleries. I'm using normalized cross correlation for this purpose. The size of each image is 50*50. Although, I'm not sure about the further steps (What to be done after getting correlation matrix). I found the maximum number in the corrleation matrix, but I dont know how to get the score matrix for calculating genuine and impostor scores. I wrote this code, although I don't think this is right. Please can someone explain this?
%Storing the first two probe images
a1=imread('C:\Users\ritvikpalvankar7\Desktop\Fundamentals of Biometric identification\HW3\probeset\subject1_img2.pgm');
a2=imread('C:\Users\ritvikpalvankar7\Desktop\Fundamentals of Biometric identification\HW3\probeset\subject1_img3.pgm');
%Storing the gallery image one by one
genuine_score = [];
imposter_score = [];
Score1 = zeros(100,100);
Score2 = zeros(100,100);
for i=1:100
a3=imread("C:\Users\ritvikpalvankar7\Desktop\Fundamentals of Biometric identification\HW3\galleryset\subject"+i+"_img1.pgm");
col=1;
c1 = normxcorr2(a3,a1);
c2 = normxcorr2(a3,a2);
v1 = max(max(c1));
v2 = max(max(c2));
Score1(i,col) = v1;
col=col+1;
Score1(i,col) = v2;
col=col+1;
if i==j
genuine_score = [genuine_score v1];
genuine_score = [genuine_score v2];
else
imposter_score = [imposter_score v1];
imposter_score = [imposter_score v2];
end
if v1 > v2
Score2(i,col-2) = v1;
else
Score2(i,col-2) = v2;
end
Score2 = Score2(:,any(Score2));
end

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