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AdvDrop: Adversarial Attack to DNNs by Dropping Information

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arxiv 2108.09034 v1 pith:4W25T6TM submitted 2021-08-20 cs.CV cs.CRcs.LGeess.IV

AdvDrop: Adversarial Attack to DNNs by Dropping Information

classification cs.CV cs.CRcs.LGeess.IV
keywords adversarialinformationadvdropdnnsdroppingexamplesimagesobjects
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Human can easily recognize visual objects with lost information: even losing most details with only contour reserved, e.g. cartoon. However, in terms of visual perception of Deep Neural Networks (DNNs), the ability for recognizing abstract objects (visual objects with lost information) is still a challenge. In this work, we investigate this issue from an adversarial viewpoint: will the performance of DNNs decrease even for the images only losing a little information? Towards this end, we propose a novel adversarial attack, named \textit{AdvDrop}, which crafts adversarial examples by dropping existing information of images. Previously, most adversarial attacks add extra disturbing information on clean images explicitly. Opposite to previous works, our proposed work explores the adversarial robustness of DNN models in a novel perspective by dropping imperceptible details to craft adversarial examples. We demonstrate the effectiveness of \textit{AdvDrop} by extensive experiments, and show that this new type of adversarial examples is more difficult to be defended by current defense systems.

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