Are Deep Neural Networks "Robust"?

08/25/2020
by   Peter Meer, et al.
0

Separating outliers from inliers is the definition of robustness in computer vision. This essay delineates how deep neural networks are different than typical robust estimators. Deep neural networks not robust by this traditional definition.

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