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Poster
in
Workshop: Shared Visual Representations in Human and Machine Intelligence

Bio-inspired Min-Nets Improve the Performance and Robustness of Deep Networks

Philipp Gruening · Erhardt Barth


Abstract:

Min-Nets are inspired by end-stopped cortical cells with units that output the minimum of two learned filters. We insert such min-units into state-of-the art deep networks, such as the popular ResNet and DenseNet, and show that the resulting Min-Nets perform better on the Cifar-10 benchmark. Moreover, we show that Min-Nets are more robust against JPEG compression artifacts. We argue that the minimum operation is the simplest way of implementing an AND operation on pairs of filters, and that such AND operations introduce a bias that is appropriate given the statistics of natural images.

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