SLMIA-SR: Speaker-Level Membership Inference Attacks against Speaker Recognition Systems
September 14, 2023 Β· Declared Dead Β· π Network and Distributed System Security Symposium
"No code URL or promise found in abstract"
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Authors
Guangke Chen, Yedi Zhang, Fu Song
arXiv ID
2309.07983
Category
cs.CR: Cryptography & Security
Cross-listed
cs.LG,
cs.MM,
cs.SD,
eess.AS
Citations
13
Venue
Network and Distributed System Security Symposium
Last Checked
3 months ago
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 often not present in the training data. We utilize intra-similarity and inter-dissimilarity, two training objectives of SR, to characterize the differences between training and non-training speakers and quantify them with two groups of features driven by carefully-established feature engineering to mount the attack. To improve the generalizability of our attack, we propose a novel mixing ratio training strategy to train attack models. To enhance the attack performance, we introduce voice chunk splitting to cope with the limited number of inference voices and propose to train attack models dependent on the number of inference voices. Our attack is versatile and can work in both white-box and black-box scenarios. Additionally, we propose two novel techniques to reduce the number of black-box queries while maintaining the attack performance. Extensive experiments demonstrate the effectiveness of SLMIA-SR.
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