基于高斯混合模型的自动说话人验证欺骗检测与对抗

Ramesh Kumar Bhukya, Aditya Raj
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引用次数: 2

摘要

自动说话人验证(ASV)是一种新兴的生物识别认证技术,它基于用户的语音样本来接受/拒绝用户的身份声明。为了保护生物识别系统免受入侵者的攻击,需要针对欺骗攻击检测的强大对策。反欺骗也被称为重放检测,其中语音被记录,存储和重放以欺骗ASV系统。ASVspoof系列挑战提供了一种共享的反欺骗攻击,ASVspoof 2019专注于合成语音和重播语音,分别被称为物理和逻辑访问攻击。为了构建健壮的系统,我们考虑了真实和欺骗语音数据的独立数据,并为这两类实现了单独的模型。我们基于高斯混合模型对系统进行了求解,并在ASVspoof 2019数据库上进行了测试。最后,针对MFCC特征和机器学习特征进行的实验结果相当,错误率(EER)分别为5.64%和7.56%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Speaker Verification Spoof Detection and Countermeasures Using Gaussian Mixture Model
Automatic Speaker Verification (ASV) is an emerging biometric authentication technique with the process of accepting/rejecting the users' claimed identity based on his/her speech samples. Robust countermeasures for spoofing attack detections are required to secure biometric systems from intruders. Anti-spoofing is also called replay detection in which voice is recorded, stored and replayed to deceive ASV systems. The ASVspoof series of challenge provides a shared anti-spoofing attack, ASVspoof 2019 focused on both synthetic and replay speech that are referred to as physical and logical access attacks, respectively. To build the robust system, we considered separate data for bonafide and spoofed voice data and implemented separate models for both classes. We addressed our system based on Gaussian Mixture Model, which is performed on ASVspoof 2019 Database. Finally, the experiments focused on both MFCC features and machine learned features have a comparable results with an equal error rate (EER) of 5.64% and 7.56 %.
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