Help regarding the transposed convolution layer
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Hi,
Please provide help regarding how the transposedConv2dLayer works.
I am struggling to understand the following helper function
function out = createUpsampleTransponseConvLayer(factor,numFilters)
filterSize = 2*factor - mod(factor,2);
cropping = (factor-mod(factor,2))/2;
numChannels = 1;
out = transposedConv2dLayer(filterSize,numFilters, ...
'NumChannels',numChannels,'Stride',factor,'Cropping',cropping);
end
from the example: https://uk.mathworks.com/help/deeplearning/examples/image-to-image-regression-using-deep-learning.html
How does the filtersize and stride affect the output of this layer?
What's the difference between this layer and a simple upsampling layer?
whether the weights are somehow transposed or learned from scratch?
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