Quasi-Newton Adversarial Attacks on Speaker Verification Systems

2020 Asia-Pacific Signal and Information Processing Association Annual Summit and Conference (APSIPA ASC)(2020)

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摘要
This paper proposes a framework for generating adversarial utterances for speaker verification systems. Our main idea is to formulate an optimization problem to generate adversarial utterances that fool speaker verification models and solve it by a second-order optimization method. We first present our algorithm, which uses the first-order Gauss-Newton method, and then extend it to second-order Quasi-Newton methods. Our experiments on the VoxCeleb 1 dataset show that the proposed method can fool a speaker verification system with a smaller degree of perturbations than those of conventional methods. We also show that second-order optimization methods are effective for finding small perturbations.
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关键词
adversarial utterances,speaker verification system,fool speaker verification models,second-order optimization method,first-order Gauss-Newton method,second-order QuasiNewton methods,QuasiNewton adversarial attacks
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