Better the Devil you Know: An Analysis of Evasion Attacks using Out-of-Distribution Adversarial Examples

5 May 2019Vikash SehwagArjun Nitin BhagojiLiwei SongChawin SitawarinDaniel CullinaMung ChiangPrateek Mittal

A large body of recent work has investigated the phenomenon of evasion attacks using adversarial examples for deep learning systems, where the addition of norm-bounded perturbations to the test inputs leads to incorrect output classification. Previous work has investigated this phenomenon in closed-world systems where training and test inputs follow a pre-specified distribution... (read more)

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