A Modified Convolutional Network for Auto-encoding based on Pattern Theory Growth Function

04/04/2021
by   Erico Tjoa, et al.
0

This brief paper reports the shortcoming of a variant of convolutional neural network whose components are developed based on the pattern theory framework.

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