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Preventing replay attacks on speaker verification systems

机译:防止重播攻击扬声器验证系统

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In this paper, we describe a system for detecting spoofing attacks on speaker verification systems. We understand as spoofing the fact of impersonating a legitimate user. We focus on detecting two types of low technology spoofs. On the one side, we try to expose if the test segment is a far-field microphone recording of the victim that has been replayed on a telephone handset using a loudspeaker. On the other side, we want to determine if the recording has been created by cutting and pasting short recordings to forge the sentence requested by a text dependent system. This kind of attacks is of critical importance for security applications like access to bank accounts. To detect the first type of spoof we extract several acoustic features from the speech signal. Spoofs and non-spoof segments are classified using a support vector machine (SVM). The cut and paste is detected comparing the pitch and MFCC contours of the enrollment and test segments using dynamic time warping (DTW). We performed experiments using two databases created for this purpose. They include signals from land line and GSM telephone channels of 20 different speakers. We present results of the performance separately for each spoofing detection system and the fusion of both. We have achieved error rates under 10% for all the conditions evaluated. We show the degradation on the speaker verification performance in the presence of this kind of attack and how to use the spoofing detection to mitigate that degradation.
机译:在本文中,我们描述了一种用于检测扬声器验证系统的欺骗攻击的系统。我们理解欺骗冒充合法用户的事实。我们专注于检测两种类型的低技术欺骗。在一方面,我们试图曝光测试段是使用扬声器在电话手机上重放的受害者的远场麦克风记录。在另一边,我们想确定是否通过切割和粘贴短记录来创建录制,以伪造文本相关系统所要求的句子。这种攻击对于访问银行账户的安全应用程序至关重要。为了检测第一类型的欺骗,我们从语音信号中提取若干声学特征。使用支持向量机(SVM)分类欺骗和非欺骗段。检测剪切和糊状物使用动态时间翘曲(DTW)比较登记和测试段的音高和MFCC轮廓。我们使用为此目的创建的两个数据库进行实验。它们包括来自陆线和20个不同扬声器的GSM电话通道的信号。我们为每个欺骗检测系统分开呈现性能的结果和两者的融合。我们在评估的所有条件下实现了10%以下的错误率。在存在这种攻击的情况下,我们展示了扬声器验证性能的劣化以及如何使用欺骗检测来缓解该劣化。

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