Significance of Distance Measures for Speaker Anonymization

Gauri P. Prajapati, D. Singh, H. Patil
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Abstract

Privacy preservation methods for voice data are evolving day by day. A recent state-of-the-art voice privacy algorithm uses an x-vector and neural source-filter (NSF)- based anonymization approach that converts the original input voice into a pseudo speaker’s voice. The method uses an affinity propagation clustering (APC) algorithm to choose a pseudo speaker’s x-vector. Finding a set of distance measures for this clustering technique is important to get optimal anonymization. To that effect, in this paper, an attempt has been made to investigate the effect of six distance measures, namely, Euclidean, cosine, probabilistic linear discriminant analysis (PLDA), correlation, Manhattan, and Mahalanobis for voice privacy preservation using an x-vector-based anonymization system. This approach gave a 4.75% relative improvement in Equal Error Rate(EER) for original enrolls and anonymized trials. In addition, 11.49% relative improvement in EER is observed for anonymized enrolls and trials. Experimental results show that Mahalanobis and Pearson correlation coefficient-based distance are better choices for anonymization tasks. It provides better speaker de-identification and good speech intelligibility without increasing system complexity.
距离度量对说话人匿名化的意义
语音数据的隐私保护方法日益发展。最近的一种最先进的语音隐私算法使用基于x向量和神经源滤波器(NSF)的匿名化方法,将原始输入语音转换为伪说话者的语音。该方法采用亲和传播聚类(APC)算法选择伪说话人的x向量。为这种聚类技术找到一组距离度量对于获得最佳匿名化非常重要。为此,本文尝试使用基于x向量的匿名化系统来研究欧几里得、余弦、概率线性判别分析(PLDA)、相关性、曼哈顿和马氏等六种距离度量对语音隐私保护的影响。对于原始受试者和匿名试验,该方法在相等错误率(EER)方面的相对改进为4.75%。此外,在匿名入组和试验中,观察到11.49%的EER相对改善。实验结果表明,基于Mahalanobis和Pearson相关系数的距离是匿名化任务的较好选择。它在不增加系统复杂性的情况下提供了更好的说话人去识别和良好的语音清晰度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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