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An Approach to Detect Replay Attack in Automatic Speaker Verification System

机译:说话人自动验证系统中重播攻击的检测方法

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Automatic Speaker Verification (ASV) system is to accept or reject a claimed identity based on a speech sample. Spoofing, in general, is a fraudsters or malicious practice in which communication is sent from an unknown source disguised as a source known to the receiver. Spoofing is most prevalent in communication mechanisms that lack a high level of security in biometric authentication. It is proposed to develop an approach to detect replay attack in ASV system. The proposed system uses ASVspoof2017 database. In speech signal processing traditional cepstral processing is combined with constant Q transform. Spoofing countermeaasure has been made effective by the recent introduction of the resulting constant Q cepstral processing(CQCCs). The merits of CQCC features is due to a variable spectro-temporal resolution which also does reliable capture of indicative signs of spoofing attacks but basically varies from those that used by most ASV systems. The extracted CQCC feature are trained using Gaussian Mixture Model(GMM). Using the training utterances of genuine and spoofed speakers the respective model is created using GMM. The experiments shows that proposed system is significantly better using CQCC features.
机译:自动说话者验证(ASV)系统将基于语音样本接受或拒绝所声明的身份。通常,欺骗是欺诈者或恶意行为,在这种行为中,通信是从伪装成接收者已知来源的未知来源发送的。欺骗在缺乏生物识别身份验证的高度安全性的通信机制中最为普遍。提出了一种在ASV系统中检测重放攻击的方法。拟议的系统使用ASVspoof2017数据库。在语音信号处理中,传统的倒谱处理与恒定的Q变换相结合。最近引入的恒定Q倒谱处理(CQCC)使得欺骗性对策变得有效。 CQCC功能的优点在于可变的光谱时间分辨率,该分辨率还可以可靠地捕获欺骗攻击的指示信号,但与大多数ASV系统所使用的信号基本上不同。使用高斯混合模型(GMM)对提取的CQCC特征进行训练。使用真实和欺骗性说话者的训练话语,使用GMM创建相应的模型。实验表明,利用CQCC功能,该系统明显更好。

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