- https://www.mathworks.com/help/deeplearning/ref/nnet.cnn.layer.sequenceinputlayer.html
- https://www.mathworks.com/help/matlab/ref/double.reshape.html
- https://www.mathworks.com/help/deeplearning/ref/trainnetwork.html#mw_36a68d96-8505-4b8d-b338-44e1efa9cc5e
error :Error using trainNetwork Number of elements must not change. Use [] as one of the size inputs to automatically calculate the appropriate size for that dimension.
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I'm tryng to develop a 1D convolutional autoencoder:
layers=[ sequenceInputLayer(128)
convolution1dLayer(4,64,padding='same')
convolution1dLayer(4,32,padding='same')
transposedConv1dLayer(4,32,cropping="same")
transposedConv1dLayer(4,64,cropping="same")
convolution1dLayer(128,1,padding='same')
regressionLayer
];
options = trainingOptions('adam', ...
'InitialLearnRat',1e-4,...
'MaxEpochs',1280, ...
'MiniBatchSize',128, ...
Plots="training-progress");
net = trainNetwork(DATA_OUT,DATA_IN,layers,options);
YP=predict(net,DATA_OUT(:,10));
the size of the DATA_OUT and DATA_IN is 128 x 1280, running the program the following error occures:
Error using trainNetwork
Number of elements must not change. Use [] as one of the size inputs to automatically calculate the appropriate
size for that dimension.
Error in CAE_MATLAB (line 78)
net = trainNetwork(DATA_OUT,DATA_IN,layers,options);
Caused by:
Error using reshape
Number of elements must not change. Use [] as one of the size inputs to automatically calculate the
appropriate size for that dimension.
Does anyone can help?
Many Thanks
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Respuestas (1)
Soumya
el 13 de Jun. de 2025
Editada: Soumya
el 13 de Jun. de 2025
I encountered a similar issue when training the 1D convolutional autoencoder in MATLAB. It is due to a mismatch between the shape of the input data and what the ‘sequenceInputLayer’ expects. Specifically, ‘sequenceInputLayer(128)’ expects the input data to be a 3D array of the format [h, c, s] where h is the height (features), c is the number of channels, and s is the sequence length. Since the data ‘DATA_OUT’ and ‘DATA_IN’ are sized 128 x 1280, we need to reshape them to include the channel dimension before training. This can be done by using the ‘reshape’ function. The following code snippet shows how the issue can be resolved:
DATA_OUT_reshaped = reshape(DATA_OUT, [128, 1, 1280]);
DATA_IN_reshaped = reshape(DATA_IN, [128, 1, 1280]);
The following documentation link provides detailed information on the relevant topics:
I hope this helps!
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