I wrote a program to read two classes of images (class 1 in directory 1 and class 2 in directory 2) and I do not know how to label images in class 1 and images in class 2, should it be [1 1 1 … no_of_imgs_in_clss1]? and [2 2 2 … no_of_imgs_in_clss2]?. Please help me, this is the code.

This is my code:

```
function M_imp_newff(no_of_Categories)%sz1, sz2, sz3, no_of_Categories)
% call with :
% no_of_Categories = 2; M_imp_newff(no_of_Categories)
% % Train data of size (sz1,sz3);
% % Test data of size (sz2,sz3);
% % TrainLabels of size ([1 #Categories], [sz1 1]); [#Categories=3]
% % TestLabels of size ([1 #Categories], [sz2 1]); [#Categories=3]
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
e_sz = 20; % size of feature vector
%%%%%%%%%% Train images %%%%%%%%%%
myFolder1 = 'E:\Whole_work\M_New_Paper\imgs\one';
myFolder2 = 'E:\Whole_work\M_New_Paper\imgs\three';
filePattern1 = fullfile(myFolder1, '*.jpg');
filePattern2 = fullfile(myFolder2, '*.jpg');
jpgFiles1 = dir(filePattern1); m1 = numel(jpgFiles1); jpgFiles2 = dir(filePattern2);
m2 =numel(jpgFiles2);
for i=1:m1
baseFileName1 = jpgFiles1(i).name;
fullFileName1 = fullfile(myFolder1, baseFileName1);
X=imread(fullFileName1);
X=imresize(X,[256, 256],'nearest');
[Height,Width,Depth] = size(X);
if Depth == 1
X = double(X);
else
X = double(X(:,:,1));
end
[COEFF,~,e] = princomp(X);
Train{i} = e(1:e_sz);
end
clear myFolder1 filePattern1 jpgFiles1 m1 baseFileName1 fullFileName1 X COEFF e
Train = cell2mat(Train); Train = Train';
%%%%%%%%%% Test images %%%%%%%%%%
for i=1:m2
baseFileName2 = jpgFiles2(i).name;
fullFileName2 = fullfile(myFolder2, baseFileName2);
X=imread(fullFileName2);
X=imresize(X,[256, 256],'nearest');
[Height,Width,Depth] = size(X);
if Depth == 1
X = double(X);
else
X = double(X(:,:,1));
end
[COEFF,~,e] = princomp(X);
Test{i} = e(1:e_sz);
end
Test = cell2mat(Test); Test = Test';
clear myFolder2 filePattern2 jpgFiles2 m2 baseFileName2 fullFileName2 X COEFF e
%%%%%%% End of read_Process Images %%%%%%%%
trainSize = size(Train,1);
testSize = size(Test,1);
%%%% Here is the problem but I can not fix it !!!!
%%%%Please me here %%%% %%%%Please me here %%%% %%%%Please me here %%%%
% TrainLabels = randi([1 no_of_Categories], [trainSize 1]); % => this works
TrainLabels = ones([1 no_of_Categories],trainSize); TrainLabels = TrainLabels' % why this do not work
%
% TestLabels = randi([1 no_of_Categories], [testSize 1]); % => this works
TestLabels = 2*ones([1 no_of_Categories],testSize);TestLabels = TestLabels' % why this do not work
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%% prepare the input/output vectors (1-of-N output encoding)
input = Train'; %size(Train) %'matrix of size numFeatures-by-numImages
output = zeros(no_of_Categories,trainSize); % matrix of size numCategories-by-numImages
for i=1:trainSize
output(TrainLabels(i), i) = 1;
end
% output
%% create net: one hidden layer with 10 nodes (output layer size is infered: 3)
net = newff(input, output, 10, {'logsig' 'logsig'}, 'trainlm');%'trainscg');
% net.trainParam.perf = 'sse';
net.trainParam.epochs = 50;
net.trainParam.goal = 1e-5;
% view(net)
% [size(input); size(output)]
% pause
%% training
net = init(net); % initialize
[net,tr] = train(net, input, output); % train
%% performance (on Training data)
y = sim(net, input); % predict
%[err cm ind per] = confusion(output, y);
[maxVals predicted] = max(y); % predicted
% [size(predicted); size(TrainLabels)]
% pause
cm = confusionmat(predicted, TrainLabels);
acc = sum(diag(cm))/sum(cm(:));
fprintf('Accuracy = %.2f%%\n', 100*acc);
fprintf('Confusion Matrix:\n');
disp(cm)
% size(Test) = [sz2 sz3]
%% Testing (on Test data)
y = sim(net, Test');
```

thanks in advance.