Adversarial Visual Robustness by Causal Intervention
Adversarial training is the de facto most promising defense against adversarial examples. Yet, its passive nature inevitably prevents it from being immune to unknown attackers. To achieve a proactive defense, we need a more fundamental understanding of adversarial examples, beyond the popular bounde...
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Zusammenfassung: | Adversarial training is the de facto most promising defense against
adversarial examples. Yet, its passive nature inevitably prevents it from being
immune to unknown attackers. To achieve a proactive defense, we need a more
fundamental understanding of adversarial examples, beyond the popular bounded
threat model. In this paper, we provide a causal viewpoint of adversarial
vulnerability: the cause is the spurious correlation ubiquitously existing in
learning, i.e., the confounding effect, where attackers are precisely
exploiting these effects. Therefore, a fundamental solution for adversarial
robustness is by causal intervention. As these visual confounders are
imperceptible in general, we propose to use the instrumental variable that
achieves causal intervention without the need for confounder observation. We
term our robust training method as Causal intervention by instrumental Variable
(CiiV). It's a causal regularization that 1) augments the image with multiple
retinotopic centers and 2) encourages the model to learn causal features,
rather than local confounding patterns, by favoring features linearly
responding to spatial interpolations. Extensive experiments on a wide spectrum
of attackers and settings applied in CIFAR-10, CIFAR-100, and mini-ImageNet
demonstrate that CiiV is robust to adaptive attacks, including the recent
AutoAttack. Besides, as a general causal regularization, it can be easily
plugged into other methods to further boost the robustness. |
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DOI: | 10.48550/arxiv.2106.09534 |