Voice-indistinguishability: Protecting voiceprint in privacy-preserving speech data release

Y Han, S Li, Y Cao, Q Ma… - 2020 IEEE International …, 2020 - ieeexplore.ieee.org
2020 IEEE International Conference on Multimedia and Expo (ICME), 2020ieeexplore.ieee.org
With the development of smart devices, such as the Amazon Echo and Apple's HomePod,
speech data have become a new dimension of big data. However, privacy and security
concerns may hinder the collection and sharing of real-world speech data, which contain the
speaker's identifiable information, ie, voiceprint, which is considered a type of biometric
identifier. Current studies on voiceprint privacy protection do not provide either a meaningful
privacy-utility trade-off or a formal and rigorous definition of privacy. In this study, we design …
With the development of smart devices, such as the Amazon Echo and Apple's HomePod, speech data have become a new dimension of big data. However, privacy and security concerns may hinder the collection and sharing of real-world speech data, which contain the speaker's identifiable information, i.e., voiceprint, which is considered a type of biometric identifier. Current studies on voiceprint privacy protection do not provide either a meaningful privacy-utility trade-off or a formal and rigorous definition of privacy. In this study, we design a novel and rigorous privacy metric for voiceprint privacy, which is referred to as voice-indistinguishability, by extending differential privacy. We also propose mechanisms and frameworks for privacy-preserving speech data release satisfying voice-indistinguishability. Experiments on public datasets verify the effectiveness and efficiency of the proposed methods.
ieeexplore.ieee.org
Showing the best result for this search. See all results