Semantic segmentation network - different behaviour on different systems
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Hello,
i'm trying to train a semantic segmentation network to recognize certain areas in an image. So i labeled some images as train data and save them in 'gTruth.mat' and trained the network succesfully.
This works very fine when training the network on my laptop with Matlab 2022a without any error.
When I try the same code on my workstation where I have Matlab 2022b and 2018b installed, I get the following error message:
"Error using trainNetwork Invalid training data. The output size ([500 500 2]) of the last layer does not match the response size ([538 679 2])."
Why do I get different output sizes with the same code on two different systems? Or is this a special 2022a issue?
load('gTruth.mat');
classNames = {gTruth.LabelDefinitions.Name{1}, gTruth.LabelDefinitions.Name{2}};
[imdsTrain,pxdsTrain] = pixelLabelTrainingData(gTruth);
pximdsTrain = pixelLabelImageDatastore(imdsTrain,pxdsTrain);
tbl = countEachLabel(pxdsTrain);
numberPixels = sum(tbl.PixelCount);
frequency = tbl.PixelCount / numberPixels;
classWeights = 1 ./ frequency;
inputSize = [500 500 1];
filterSize = 3;
numFilters = 32;
numClasses = numel(classNames);
layers = [
imageInputLayer(inputSize)
convolution2dLayer(filterSize,numFilters,'DilationFactor',1,'Padding','same')
batchNormalizationLayer
reluLayer
convolution2dLayer(filterSize,numFilters,'DilationFactor',2,'Padding','same')
batchNormalizationLayer
reluLayer
convolution2dLayer(filterSize,numFilters,'DilationFactor',4,'Padding','same')
batchNormalizationLayer
reluLayer
convolution2dLayer(1,numClasses)
softmaxLayer
pixelClassificationLayer('Classes',classNames,'ClassWeights',classWeights)];
options = trainingOptions('sgdm', ...
'MaxEpochs', 15, ...
'MiniBatchSize',64, ...
'InitialLearnRate', 1e-3,...
'ExecutionEnvironment','cpu');
net = trainNetwork(pximdsTrain,layers,options);
Thanks in advance for your help
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snipsnap333
am 12 Mai 2023
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