ASCLLGSDMLMay 30, 2019

Speaker Anonymization Using X-vector and Neural Waveform Models

arXiv:1905.13561v1165 citations
Originality Incremental advance
AI Analysis

This addresses privacy and security concerns for users sharing speech data on social media, though it is an incremental improvement on existing anonymization techniques.

The paper tackles the problem of speaker identity privacy in shared speech data by proposing a speaker anonymization method that replaces original speaker timbre with an anonymous pseudo identity using x-vector representations and neural waveform models, resulting in increased equal error rate for speaker verification while maintaining high speech quality.

The social media revolution has produced a plethora of web services to which users can easily upload and share multimedia documents. Despite the popularity and convenience of such services, the sharing of such inherently personal data, including speech data, raises obvious security and privacy concerns. In particular, a user's speech data may be acquired and used with speech synthesis systems to produce high-quality speech utterances which reflect the same user's speaker identity. These utterances may then be used to attack speaker verification systems. One solution to mitigate these concerns involves the concealing of speaker identities before the sharing of speech data. For this purpose, we present a new approach to speaker anonymization. The idea is to extract linguistic and speaker identity features from an utterance and then to use these with neural acoustic and waveform models to synthesize anonymized speech. The original speaker identity, in the form of timbre, is suppressed and replaced with that of an anonymous pseudo identity. The approach exploits state-of-the-art x-vector speaker representations. These are used to derive anonymized pseudo speaker identities through the combination of multiple, random speaker x-vectors. Experimental results show that the proposed approach is effective in concealing speaker identities. It increases the equal error rate of a speaker verification system while maintaining high quality, anonymized speech.

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