Building Function Approximators on top of Haar Scattering Networks

9 Apr 2018 Fernando Fernandes Neto

In this article we propose building general-purpose function approximators on top of Haar Scattering Networks. We advocate that this architecture enables a better comprehension of feature extraction, in addition to its implementation simplicity and low computational costs... (read more)

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