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Features and classifiers for replay spoofing attack detection

机译:重播欺骗攻击检测的功能和分类

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Automatic speaker verification (ASV) systems are known to be highly vulnerable against spoofing attacks. Various successful countermeasures have recently been proposed to detect spoofing attacks originating from speech synthesis (SS) and voice conversion (VC). However, detecting replay attacks, the most easily implementable spoofing attacks against ASV systems, has gained less attention. Thus, in this paper we present an experimental comparison of various feature extraction techniques and classifiers for replay attack detection. In total, six magnitude spectrum and three phase spectrum based features are used for feature extraction. For classification in turn, four different techniques are utilized. Experiments are conducted on recently released ASVspoof 2017 replay attack detection challenge. Experimental results reveals that magnitude spectrum features considerably outperform phase based features independent of the classifier. Comparative results using four different classifiers indicate that i-vector cosine scoring yields lower equal error rates (EERs) than other methods.
机译:众所周知,自动扬声器验证(ASV)系统非常容易受到欺骗攻击。最近已经提出了各种成功的对策来检测源自语音合成(SS)和语音转换(VC)的欺骗攻击。但是,检测重放攻击是针对ASV系统的最容易实现的欺骗攻击,因此受到的关注较少。因此,在本文中,我们提出了针对重播攻击检测的各种特征提取技术和分类器的实验比较。总的来说,基于六幅谱和三相谱的特征用于特征提取。对于分类,依次使用了四种不同的技术。针对最近发布的ASVspoof 2017重播攻击检测挑战进行了实验。实验结果表明,幅度谱特征明显优于独立于分类器的基于相位的特征。使用四个不同分类器的比较结果表明,与其他方法相比,i-矢量余弦评分产生的等错误率(EER)更低。

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