Input and output size for deep learning regression
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Hi everyone,
I have the following input and target matrix
Input: 110 samples of 273x262
Target: 110 samples of 273x262
I have to work on deep learning regression problem with a simple layers as shown below
Layer: [imageInputLayer()
convolution2dLayer(5,16,'Padding','same')
batchNormalizationLayer
reluLayer
fullyConnectedLayer()
regressionLayer]
What is the matrix size I have to use for the inputlayer and fullyconnectedlayer?
I am thinking of 4D matrix of size [273, 262, 1, 110] for inputlayer and a 2D matrix of size [273*263, 110] for output layer.
Is this correct? Will this exceed the matrix array size preference? Any other suggestions. Thank you
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