Deep CNN sparse coding analysis: Towards average case
Deep convolutional sparse coding (D-CSC) is a framework reminiscent of deep convolutional neural nets (DCNN), but by omitting the learning of the dictionaries one can more transparently analyse the role of the activation function and its ability to recover activation paths through the layers. Papyan...
Main Authors: | Murray, M, Tanner, J |
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Format: | Conference item |
Published: |
Institute of Electrical and Electronics
2018
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