VoiceLive: A Phoneme Localization based Liveness Detection for Voice Authentication on Smartphones

Linghan Zhang, Sheng Tan, J. Yang, Yingying Chen
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引用次数: 153

Abstract

Voice authentication is drawing increasing attention and becomes an attractive alternative to passwords for mobile authentication. Recent advances in mobile technology further accelerate the adoption of voice biometrics in an array of diverse mobile applications. However, recent studies show that voice authentication is vulnerable to replay attacks, where an adversary can spoof a voice authentication system using a pre-recorded voice sample collected from the victim. In this paper, we propose VoiceLive, a practical liveness detection system for voice authentication on smartphones. VoiceLive detects a live user by leveraging the user's unique vocal system and the stereo recording of smartphones. In particular, with the phone closely placed to a user's mouth, it captures time-difference-of-arrival (TDoA) changes in a sequence of phoneme sounds to the two microphones of the phone, and uses such unique TDoA dynamic which doesn't exist under replay attacks for liveness detection. VoiceLive is practical as it doesn't require additional hardware but two-channel stereo recording that is supported by virtually all smartphones. Our experimental evaluation with 12 participants and different types of phones shows that VoiceLive achieves over 99% detection accuracy at around 1% Equal Error Rate (EER). Results also show that VoiceLive is robust to different phone placements and is compatible to different sampling rates and phone models.
VoiceLive:一种基于音素定位的智能手机语音认证动态检测方法
语音认证越来越受到人们的关注,并成为移动身份验证的一种有吸引力的替代密码。移动技术的最新进展进一步加速了语音生物识别技术在一系列不同移动应用中的应用。然而,最近的研究表明,语音认证容易受到重放攻击,攻击者可以使用从受害者收集的预先录制的语音样本来欺骗语音认证系统。在本文中,我们提出了一种用于智能手机语音认证的实用活体检测系统VoiceLive。VoiceLive通过利用用户独特的声音系统和智能手机的立体声录音来检测实时用户。特别是,当手机靠近用户的嘴巴时,它可以捕捉到手机两个麦克风的音素序列的到达时间差(TDoA)变化,并利用这种在重放攻击下不存在的独特的TDoA动态来进行活体检测。VoiceLive很实用,因为它不需要额外的硬件,而且几乎所有智能手机都支持双声道立体声录音。我们对12名参与者和不同类型的手机进行的实验评估表明,VoiceLive在1%左右的平均错误率(EER)下实现了99%以上的检测准确率。结果还表明,VoiceLive对不同的手机放置位置具有鲁棒性,并且兼容不同的采样率和手机型号。
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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