Time series training using 2D CNN
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Hi ,
I am trying to use 2D CNN to train and then predict time series (specifically analog signal splitted into 5 samples each sequence ---> the whole input matrix is Nx5) ...
Though i defined 4d matrices XTrain and YTrain for trainNetwork() function as follows :

... COMMENTS ...

I defently defined 4d matrix with images 1xchannel_length but still getting the error below :
"
>> MatlabNnPilot
155 net = trainNetwork(XTrain,YTrain,layers,options);
Error using trainNetwork (line 165)
Invalid training data. X must be a 4-D array of images.
Error in MatlabNnPilot (line 155)
net = trainNetwork(XTrain,YTrain,layers,options);
"
Please advise how to resovle it if possible ?
Igor
1 comentario
igor Lisogursky
el 27 de Sept. de 2020
Respuestas (1)
Srivardhan Gadila
el 28 de Sept. de 2020
I tried the following code which is written based on the above mentioned code & I'm not getting any errors. You can refer to the net = trainNetwork(X,Y,layers,options) syntax and also it's corresponding Input Arguments description.
Try checking the following code once:
input_size = 5;
output_size = 1;
numHiddenUnits = 32;
epochs = 50;
nTrainSamples = 40725;
layers = [ ...
imageInputLayer([1 input_size 1],'Name','input')
convolution2dLayer([1 input_size],1,'Name','conv')
batchNormalizationLayer('Name','bn')
reluLayer('Name','relu')
fullyConnectedLayer(output_size, 'Name','fc')
regressionLayer('Name','regression')];
% lgraph = layerGraph(layers);
% analyzeNetwork(layers)
%%
trainData = randn([1 5 1 nTrainSamples]);
% trainLabels = randn(nTrainSamples,numClasses);
trainLabels = randn([1 1 1 nTrainSamples]);
size(trainData)
size(trainLabels)
%%
options = trainingOptions('adam', ...
'InitialLearnRate',0.005, ...
'ValidationData',{trainData,trainLabels},...
'LearnRateSchedule','piecewise',...
'MaxEpochs',epochs, ...
'MiniBatchSize',32, ...
'Verbose',1, ...
'Plots','training-progress');
net = trainNetwork(trainData,trainLabels,layers,options);
5 comentarios
igor Lisogursky
el 28 de Sept. de 2020
Srivardhan Gadila
el 29 de Sept. de 2020
@igor Lisogursky, alternatively you can use the imageInputLayer with 1x5x2 or 2x5x1 etc as input size i.e., seperate the real & complex data and combine them along channel dimension (1x5x2) or add a row (2x5x1) such that the first row of the input would be real data and the second row would be the complex data. The similar idea is implemented in the following example: Modulation Classification with Deep Learning.
igor Lisogursky
el 6 de Oct. de 2020
Srivardhan Gadila
el 6 de Oct. de 2020
@igor Lisogursky, you can verify the same by creating your network and using analyzeNetwork function to view the shape of the activations after each layer.
igor Lisogursky
el 9 de Oct. de 2020
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