ImageDatastore from text file

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Lin
Lin el 9 de Nov. de 2020
Editada: Subhadeep Koley el 10 de Nov. de 2020
Hi
I need to classify some image data using the trained resnet network.
For the testing data, I need to call them using text file which consist from a sequence directory such as follows:
testingdata.txt:
/DataSet/label1/1.jpg
/DataSet/label1/2.jpg
/DataSet/label1/3.jpg
/DataSet/label1/4.jpg
/DataSet/label2/1.jpg
/DataSet/label2/2.jpg
/DataSet/label2/3.jpg
/DataSet/label2/4.jpg
How to read those image dataset directory from text file, to be used as testing data for deep learning classification.?

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Subhadeep Koley
Subhadeep Koley el 9 de Nov. de 2020
Try this code snippet. The below code will read images, whose locations are specified in the testingdata.txt file and will also label them according to their foldernames.
% Read the filenames and put them in cell array
fId = fopen('testingdata.txt');
tline = fgetl(fId);
tlines = cell(0, 1);
while ischar(tline)
tlines{end+1, 1} = (tline);
tline = fgetl(fId);
end
% Create an imageDatastore object
imds = imageDatastore(tlines, 'LabelSource', 'foldernames');
  2 comentarios
Lin
Lin el 10 de Nov. de 2020
thank you very much for your answer.
How about if the directory in the text file list is not uniform such as follows:
testingdata.txt:
/DataSet/label1/imageA/1.jpg
/DataSet/label1/imageB/imageA1/1.jpg
/DataSet/label1/imageC/A/3.jpg
/DataSet/label1/imageD/a/1.jpg
/DataSet/label2/imageA1/1a/2.jpg
/DataSet/label2/imageB/a/2a.jpg
/DataSet/label2/imageC/C1/1c.jpg
/DataSet/label2/imageA/1a/4.jpg
Subhadeep Koley
Subhadeep Koley el 10 de Nov. de 2020
Editada: Subhadeep Koley el 10 de Nov. de 2020
@LS This can be achieved with a bit more processing. There are a lot of ways to achieve this. The below code might help you.
% Read the filenames and put them in cell array
fId = fopen('testingdata.txt');
tline = fgetl(fId);
tlines = cell(0, 1);
while ischar(tline)
tlines{end+1, 1} = tline;
tline = fgetl(fId);
end
% Create an imageDatastore object
imds = imageDatastore(tlines);
% Modify image labels of the imageDatastore object
expression = 'label[\d]';
funHandle = @(str)regexpi(str, expression, 'match');
customLabels = cellfun(funHandle, squeeze(imds.Files));
imds.Labels = categorical(customLabels);

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