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Presentation Attack Detection Using Long-Term Spectral Statistics for Trustworthy Speaker Verification

机译:使用长期频谱统计的演讲攻击检测可用于可靠的说话人验证

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In recent years, there has been a growing interest in developing countermeasures against non zero-effort attacks for speaker verification systems. Until now, the focus has been on logical access attacks, where the spoofed samples are injected into the system through a software-based process. This paper investigates a more realistic type of attack, referred to as physical access or presentation attacks, where the spoofed samples are presented as input to the microphone. To detect such attacks, we propose a binary classifier based approach that uses long-term spectral statistics as feature input. Experimental studies on the AVspoof database, which contains presentation attacks based on replay, speech synthesis and voice conversion, shows that the proposed approach can yield significantly low detection error rate with a linear classifier (half total error rate of 0.038%). Furthermore, an investigation on Interspeech 2015 ASVspoof challenge dataset shows that it is equally capable of detecting logical access attacks.
机译:近年来,对于开发针对说话者验证系统的非零努力攻击的对策的兴趣与日俱增。到目前为止,重点一直放在逻辑访问攻击上,其中通过基于软件的过程将欺骗性样本注入到系统中。本文研究了一种更现实的攻击类型,称为物理访问或演示攻击,其中,欺骗性样本被作为麦克风的输入提供。为了检测此类攻击,我们提出了一种基于二进制分类器的方法,该方法使用长期频谱统计作为特征输入。对包含基于重放,语音合成和语音转换的演示攻击的AVspoof数据库进行的实验研究表明,该方法使用线性分类器可以产生极低的检测错误率(一半的总错误率是0.038%)。此外,对Interspeech 2015 ASVspoof挑战数据集的调查显示,它同样具有检测逻辑访问攻击的能力。

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