TL;DR
This paper systematically studies black-box adversarial attacks on speaker recognition systems, introducing FAKEBOB, which achieves high success rates and challenges existing defenses, highlighting security vulnerabilities in real-world scenarios.
Contribution
It presents FAKEBOB, a novel black-box adversarial attack method for speaker recognition, and evaluates its effectiveness against various systems and defenses in practical settings.
Findings
FAKEBOB achieves 99% targeted attack success rate.
Effective attack success over the air in physical environments.
Existing defenses are ineffective against FAKEBOB.
Abstract
Speaker recognition (SR) is widely used in our daily life as a biometric authentication or identification mechanism. The popularity of SR brings in serious security concerns, as demonstrated by recent adversarial attacks. However, the impacts of such threats in the practical black-box setting are still open, since current attacks consider the white-box setting only. In this paper, we conduct the first comprehensive and systematic study of the adversarial attacks on SR systems (SRSs) to understand their security weakness in the practical blackbox setting. For this purpose, we propose an adversarial attack, named FAKEBOB, to craft adversarial samples. Specifically, we formulate the adversarial sample generation as an optimization problem, incorporated with the confidence of adversarial samples and maximal distortion to balance between the strength and imperceptibility of adversarial…
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