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Adversarial Scratches: Deployable Attacks to CNN Classifiers

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arxiv 2204.09397 v3 pith:P7XMRZWV submitted 2022-04-20 cs.LG cs.CRcs.CV

Adversarial Scratches: Deployable Attacks to CNN Classifiers

classification cs.LG cs.CRcs.CV
keywords adversarialscratchesattackimagesappliedattacksdeployableform
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A growing body of work has shown that deep neural networks are susceptible to adversarial examples. These take the form of small perturbations applied to the model's input which lead to incorrect predictions. Unfortunately, most literature focuses on visually imperceivable perturbations to be applied to digital images that often are, by design, impossible to be deployed to physical targets. We present Adversarial Scratches: a novel L0 black-box attack, which takes the form of scratches in images, and which possesses much greater deployability than other state-of-the-art attacks. Adversarial Scratches leverage B\'ezier Curves to reduce the dimension of the search space and possibly constrain the attack to a specific location. We test Adversarial Scratches in several scenarios, including a publicly available API and images of traffic signs. Results show that, often, our attack achieves higher fooling rate than other deployable state-of-the-art methods, while requiring significantly fewer queries and modifying very few pixels.

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