Error in training SegNet on CPU

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Jordan Houri
Jordan Houri on 23 Aug 2018
Edited: MShia on 26 Nov 2019
I am trying to train SegNet on a CPU with an Intel Core i7-4770 processor @ 3.40 GHz using the example code provided ( https://www.mathworks.com/help/vision/examples/semantic-segmentation-using-deep-learning.html ), but I am getting the following error:
Error using trainNetwork (line 154)
Too many input arguments.
Error in exampleSegnet (line 98)
[net, info] = trainNetwork(pximds,lgraph,options);
Caused by:
Error using gather
Too many input arguments.
I know the gather function collects arrays into memory, so could this error be caused by the computer running out of memory? I have about 25 free GB of memory. Additionally, the error persisted even when I reduced the proportion of training images to 10%.
Thanks

Accepted Answer

Vishal Bhutani
Vishal Bhutani on 31 Aug 2018
Based on my understanding you want to train a Semantic Segmentation using CPU with an Intel Core i7-4770 processor. I also think that it may be an issue with the memory. As you maybe aware, that it is mentioned in the documentation, model was trained using NVIDIA Titan X, which has 12GB of GPU memory. As mentioned in the documentation did you try lowering the MiniBatchSize property in training options to 1? If it still not works you may still need to reduce the training data. It might be also possible that the example require GPU for training.
options = trainingOptions('sgdm', ...
'Momentum',0.9, ...
'InitialLearnRate',1e-3, ...
'L2Regularization',0.0005, ...
'MaxEpochs',100, ...
'MiniBatchSize',4, ...
'CheckpointPath',tempdir, ...
'Shuffle','every-epoch', ...
'VerboseFrequency',2);
  5 Comments
Walter Roberson
Walter Roberson on 23 Nov 2019
evianita dewi asks Jordan Houri:
I have the same error. How did you solve the problem ?
MShia
MShia on 26 Nov 2019
Edited: MShia on 26 Nov 2019
It is a bit strange but by removing the BatchNormalizationLayer, it works for me .

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