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Distinguishable Speaker Anonymization based on Formant and Fundamental Frequency Scaling

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arxiv 2211.03038 v1 pith:V7AD5Q2W submitted 2022-11-06 eess.AS cs.CRcs.SD

Distinguishable Speaker Anonymization based on Formant and Fundamental Frequency Scaling

classification eess.AS cs.CRcs.SD
keywords speakerspeechanonymizationformantframeworkscalingdatadistinguishability
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Speech data on the Internet are proliferating exponentially because of the emergence of social media, and the sharing of such personal data raises obvious security and privacy concerns. One solution to mitigate these concerns involves concealing speaker identities before sharing speech data, also referred to as speaker anonymization. In our previous work, we have developed an automatic speaker verification (ASV)-model-free anonymization framework to protect speaker privacy while preserving speech intelligibility. Although the framework ranked first place in VoicePrivacy 2022 challenge, the anonymization was imperfect, since the speaker distinguishability of the anonymized speech was deteriorated. To address this issue, in this paper, we directly model the formant distribution and fundamental frequency (F0) to represent speaker identity and anonymize the source speech by the uniformly scaling formant and F0. By directly scaling the formant and F0, the speaker distinguishability degradation of the anonymized speech caused by the introduction of other speakers is prevented. The experimental results demonstrate that our proposed framework can improve the speaker distinguishability and significantly outperforms our previous framework in voice distinctiveness. Furthermore, our proposed method also can trade off the privacy-utility by using different scaling factors.

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