论文标题

主动语音身份验证

Active Voice Authentication

论文作者

Meng, Zhong, Altaf, M Umair Bin, Biing-Hwang, Juang

论文摘要

主动身份验证是指一种新的身份验证模式,其中对生物识别指标进行了连续测试,以提供对授权访问服务或使用设备的实时或接近实时监视。这与传统的身份验证系统相反,该系统以验证令牌(例如密码)的形式进行单个测试。在主动语音身份验证(AVA)中,语音是生物识别方式。本文介绍了一系列技术的合奏,可以使用不常规的语音测试信号来使可靠的扬声器验证成为可能。这些技术包括针对非常短的训练和测试要求量身定制的模型适应和最小验证误差(MVE)培训。记录了25个扬声器的数据库,以开发此系统。在我们在此数据集上的离线评估中,该系统根据模型配置达到了平均基于窗口的同等错误率为3-4%,这非常引人注目,考虑到只有1秒钟的语音数据可用于做出每个身份验证决策。在NIST SRE 2001数据集上,当测试段的持续时间为1秒时,系统比I-Vector提供了3.88%的绝对增益。 Microsoft Surface Pro已实现了实时演示系统。

Active authentication refers to a new mode of identity verification in which biometric indicators are continuously tested to provide real-time or near real-time monitoring of an authorized access to a service or use of a device. This is in contrast to the conventional authentication systems where a single test in form of a verification token such as a password is performed. In active voice authentication (AVA), voice is the biometric modality. This paper describes an ensemble of techniques that make reliable speaker verification possible using unconventionally short voice test signals. These techniques include model adaptation and minimum verification error (MVE) training that are tailored for the extremely short training and testing requirements. A database of 25 speakers is recorded for developing this system. In our off-line evaluation on this dataset, the system achieves an average windowed-based equal error rates of 3-4% depending on the model configuration, which is remarkable considering that only 1 second of voice data is used to make every single authentication decision. On the NIST SRE 2001 Dataset, the system provides a 3.88% absolute gain over i-vector when the duration of test segment is 1 second. A real-time demonstration system has been implemented on Microsoft Surface Pro.

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