基于正弦模型的机器说话人匿名化

Ayush Agarwal, Amitabh Swain, S. Prasanna
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引用次数: 0

摘要

随着语音技术的广泛应用,说话人身份/声纹保护变得非常重要。文献中提出了许多方法,通过修改声音或用另一个说话人的身份替换声音来保护说话人的身份。在这些方法中,认证系统和人类都无法识别说话者的身份。改变原始语音的说话人身份不能用于我们想要在机器认证中隐藏说话人身份的同时保持说话人的声音不变的应用。为了解决这个问题,文献中已经提出了添加噪声的方法。然而,在信号中加入噪声会增加对语音感知的刺激作用。本文提出了一种基于正弦模型的方法来解决这一问题。该方法在不影响语音原创性的同时,降低了ASV系统的性能,保护了说话人的身份。在针对TIMIT和IITG-MV数据集的ASV系统上对该方法的匿名语音进行了测试,得到了相等的错误率(EER)。智力测试如短时客观可理解性(STOI)和平均意见得分(MOS)也进行了。通过同时考虑EER和可理解性测试,表明该方法可以解决所讨论的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speaker Anonymization for Machines using Sinusoidal Model
With the widespread use of speech technologies, speaker identity/voiceprint protection has become very important. Many methods have been proposed in the literature that protects the speaker’s identity either by modifying the voice or replacing it with another speaker’s identity. Both authentication systems and humans cannot recognize the speaker’s identity in those approaches. Changing the speaker identity of original speech cannot be used for the applications in which we want to conceal speaker identity from machine authentication and, at the same time, keep the speaker’s voice as it is. Noise addition methods have been proposed in the literature to address this issue. However, adding noise to the signal increases the irritation effect on speech perception. This paper proposes a sinusoidal model-based approach that solves this issue. The proposed method does not interfere with the originality of speech but, at the same time, protects the speaker’s identity for the automatic speaker verification (ASV) system by degrading its performance. The proposed approach’s anonymized speech is tested on the ASV system for TIMIT and IITG-MV datasets, and an equal error rate (EER) is reported. Intelligence tests like short-time objective intelligibility (STOI) and mean opinion score (MOS) is also done. By taking both EER and intelligibility tests together into consideration, it is shown that the proposed approach can solve the discussed issue.
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