2022
DOI: 10.48550/arxiv.2206.04310
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GSmooth: Certified Robustness against Semantic Transformations via Generalized Randomized Smoothing

Abstract: Certified defenses such as randomized smoothing have shown promise towards building reliable machine learning systems against p -norm bounded attacks. However, existing methods are insufficient or unable to provably defend against semantic transformations, especially those without closed-form expressions (such as defocus blur and pixelate), which are more common in practice and often unrestricted. To fill up this gap, we propose generalized randomized smoothing (GSmooth), a unified theoretical framework for ce… Show more

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