Computer Science > Machine Learning
[Submitted on 7 Jul 2020 (v1), last revised 18 Jul 2020 (this version, v2)]
Title:Regional Image Perturbation Reduces $L_p$ Norms of Adversarial Examples While Maintaining Model-to-model Transferability
View PDFAbstract:Regional adversarial attacks often rely on complicated methods for generating adversarial perturbations, making it hard to compare their efficacy against well-known attacks. In this study, we show that effective regional perturbations can be generated without resorting to complex methods. We develop a very simple regional adversarial perturbation attack method using cross-entropy sign, one of the most commonly used losses in adversarial machine learning. Our experiments on ImageNet with multiple models reveal that, on average, $76\%$ of the generated adversarial examples maintain model-to-model transferability when the perturbation is applied to local image regions. Depending on the selected region, these localized adversarial examples require significantly less $L_p$ norm distortion (for $p \in \{0, 2, \infty\}$) compared to their non-local counterparts. These localized attacks therefore have the potential to undermine defenses that claim robustness under the aforementioned norms.
Submission history
From: Utku Ozbulak [view email][v1] Tue, 7 Jul 2020 04:33:16 UTC (3,487 KB)
[v2] Sat, 18 Jul 2020 08:23:59 UTC (3,634 KB)
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