DISCO: Adversarial Defense with Local Implicit Functions

December 11, 2022 Β· Declared Dead Β· πŸ› Neural Information Processing Systems

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Authors Chih-Hui Ho, Nuno Vasconcelos arXiv ID 2212.05630 Category cs.CV: Computer Vision Citations 54 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
The problem of adversarial defenses for image classification, where the goal is to robustify a classifier against adversarial examples, is considered. Inspired by the hypothesis that these examples lie beyond the natural image manifold, a novel aDversarIal defenSe with local impliCit functiOns (DISCO) is proposed to remove adversarial perturbations by localized manifold projections. DISCO consumes an adversarial image and a query pixel location and outputs a clean RGB value at the location. It is implemented with an encoder and a local implicit module, where the former produces per-pixel deep features and the latter uses the features in the neighborhood of query pixel for predicting the clean RGB value. Extensive experiments demonstrate that both DISCO and its cascade version outperform prior defenses, regardless of whether the defense is known to the attacker. DISCO is also shown to be data and parameter efficient and to mount defenses that transfers across datasets, classifiers and attacks.
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