Training a Convolutional Autoencoder
10 views (last 30 days)
Show older comments
I'm trying to train this simple convolutional autoencoder but I'm getting error on the training part. The error says the size of predictions and tragets are not the same. But When I check the network structure using the analyseNetwork function it seems that my input has the same size as my output. I can't find where is the error. Can someone help me?
Follows the code
datastore_MP = datastore("Tiles_MP1_100ov50\", "IncludeSubfolders",true, "LabelSource","foldernames");
images_MP = cell(numel(datastore_MP.Files), 1);
for i = 1:numel(datastore_MP.Files)
img_MP = readimage(datastore_MP, i);
[rows, cols] = size(img_MP);
images_MP{i} = img_MP;
end
encoderBlock = @(block) [
convolution2dLayer(3,2^(3+block), "Padding",'same')
reluLayer
maxPooling2dLayer(2,"Stride",2)
convolution2dLayer(3,2^(5+block), "Padding",'same')
reluLayer
maxPooling2dLayer(2,"Stride",2)];
net_E = blockedNetwork(encoderBlock,1,"NamePrefix","encoder_");
decoderBlock = @(block) [
transposedConv2dLayer(3,2^(5-block),"Stride",2)
reluLayer
transposedConv2dLayer(3,2^(1-block), "Stride",2)
reluLayer];
net_D = blockedNetwork(decoderBlock,1,"NamePrefix","decoder_");
inputSize = [100 100 1];
CAE = encoderDecoderNetwork(inputSize,net_E,net_D);
analyzeNetwork(CAE)
options = trainingOptions( "adam",...
"Plots","training-progress",...
"MaxEpochs", 100,...
"L2Regularization",0.001);
trainedCAE = trainnet(datastore_MP, CAE, "mse", options);
0 Comments
Answers (2)
newhere
on 23 May 2024
Hey, try changing 'trainnet' to 'trainNetwork'.
trainedCAE = trainNetwork(datastore_MP, CAE, "mse", options);
ali kaffashbashi
on 17 Oct 2024
I guess it tries to set your label sources (the folder names) as targets during the training. Hence, the input and output sizes become different. I reckon using the following code instead of your training line will solve your problem:
trainedCAE = trainnet(combine(datastore_MP,datastore_MP), CAE, "mse", options);
0 Comments
See Also
Categories
Find more on Simulink Functions in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!