why a Gray image is shown as a Colored image on CNN deep learning ?

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CNN network of deep learning reads my gray image as a colored image. Whenever, tried to change the diminsions to gray [ 227 227 1], the system gives me error
layers = [
imageInputLayer([227 227 3],"Name","data")
convolution2dLayer([11 11],94,"Name","conv1","BiasLearnRateFactor",2,"Stride",[4 4])
reluLayer("Name","relu1")
crossChannelNormalizationLayer(5,"Name","norm1","K",1)
maxPooling2dLayer([3 3],"Name","pool1","Stride",[2 2])
groupedConvolution2dLayer([5 5],94,2,"Name","conv2","BiasLearnRateFactor",2,"Padding",[2 2 2 2])

回答(1 个)

Image Analyst
Image Analyst 2020-12-14
That's right. For most predefined network architectures, they were built to handle color images. Just make your gray scale images into color images and don't worry about it. The network will eventually learn during training that it doesn't need to use the other two color channels.
  8 个评论
Image Analyst
Image Analyst 2020-12-15
WHAT did not work? The cat() function? Or your training/classification/prediction process?
I can't really download all your training images. Sorry. I suggest you call tech support and ask them to walk you through it step by step.

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