TL;DR
This paper introduces SLMIA-SR, a novel speaker-level membership inference attack against speaker recognition systems, leveraging intra- and inter-similarity features, with strategies to improve generalizability and reduce query complexity.
Contribution
It is the first attack tailored to speaker recognition, utilizing speaker-level inference and innovative training strategies for improved effectiveness and practicality.
Findings
Effective in both white-box and black-box scenarios
Reduces black-box query requirements while maintaining performance
Demonstrates high success rate in extensive experiments
Abstract
Membership inference attacks allow adversaries to determine whether a particular example was contained in the model's training dataset. While previous works have confirmed the feasibility of such attacks in various applications, none has focused on speaker recognition (SR), a promising voice-based biometric recognition technique. In this work, we propose SLMIA-SR, the first membership inference attack tailored to SR. In contrast to conventional example-level attack, our attack features speaker-level membership inference, i.e., determining if any voices of a given speaker, either the same as or different from the given inference voices, have been involved in the training of a model. It is particularly useful and practical since the training and inference voices are usually distinct, and it is also meaningful considering the open-set nature of SR, namely, the recognition speakers were…
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