Scaling Adversarial Training to Large Perturbation Bounds

October 18, 2022 ยท Declared Dead ยท ๐Ÿ› European Conference on Computer Vision

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Authors Sravanti Addepalli, Samyak Jain, Gaurang Sriramanan, R. Venkatesh Babu arXiv ID 2210.09852 Category cs.LG: Machine Learning Cross-listed cs.CR, cs.CV, stat.ML Citations 24 Venue European Conference on Computer Vision Last Checked 3 months ago
Abstract
The vulnerability of Deep Neural Networks to Adversarial Attacks has fuelled research towards building robust models. While most Adversarial Training algorithms aim at defending attacks constrained within low magnitude Lp norm bounds, real-world adversaries are not limited by such constraints. In this work, we aim to achieve adversarial robustness within larger bounds, against perturbations that may be perceptible, but do not change human (or Oracle) prediction. The presence of images that flip Oracle predictions and those that do not makes this a challenging setting for adversarial robustness. We discuss the ideal goals of an adversarial defense algorithm beyond perceptual limits, and further highlight the shortcomings of naively extending existing training algorithms to higher perturbation bounds. In order to overcome these shortcomings, we propose a novel defense, Oracle-Aligned Adversarial Training (OA-AT), to align the predictions of the network with that of an Oracle during adversarial training. The proposed approach achieves state-of-the-art performance at large epsilon bounds (such as an L-inf bound of 16/255 on CIFAR-10) while outperforming existing defenses (AWP, TRADES, PGD-AT) at standard bounds (8/255) as well.
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