Speaker verification using Secure Binary Embeddings

José Portêlo, B. Raj, P. Boufounos, I. Trancoso, A. Abad
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引用次数: 6

Abstract

This paper addresses privacy concerns in voice biometrics. Conventional remote speaker verification systems rely on the system to have access to the user's recordings, or features derived from them, and also a model of the user's voice. In the proposed approach, the system has access to none of them. The supervectors extracted from the user's recordings are transformed to bit strings in a way that allows the computation of approximate distances, instead of exact ones. The key to the transformation uses a hashing scheme known as Secure Binary Embeddings. An SVM classifier with a modified kernel operates on the hashes. This allows speaker verification to be performed without exposing speaker data. Experiments showed that the secure system yielded similar results as its non-private counterpart. The approach may be extended to other types of biometric authentication.
使用安全二进制嵌入的说话人验证
本文讨论了语音生物识别技术中的隐私问题。传统的远程扬声器验证系统依赖于该系统来访问用户的录音,或从中衍生的特征,以及用户声音的模型。在建议的方法中,系统不能访问其中任何一个。从用户记录中提取的超向量被转换成比特串,以允许计算近似距离,而不是精确距离。转换的关键使用一种称为安全二进制嵌入的哈希方案。带有修改核的SVM分类器对哈希进行操作。这允许在不暴露说话人数据的情况下执行说话人验证。实验表明,安全系统产生的结果与非私有系统相似。这种方法可以扩展到其他类型的生物识别认证。
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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