Exploring linear prediction residual signal for developing countermeasures to playback attacks

Jagabandhu Mishra, Madhusudan Singh, D. Pati
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Abstract

Playback attack is an approach for acquiring the unauthorized access to the automatic speaker verification (SV) system by using targets’ pre-recorded speech samples. It is now a widely acknowledged fact that state-of-the-art SV systems are quite vulnerable to playback attacks, and developing countermeasures are in progress. In that direction most of the attempts try to capture the trace of the playback device characteristics by using spectral related information, that remain almost intact in playback signals, resulting less improvements in false acceptance rate. In this work we explore the use of linear prediction (LP) residual signal to counter the playback attacks. We observed that, as compared to spectral related vocal-tract features, the parametric representation of the LP residual signal shows relatively more robustness against playback attacks. In future, we aim to model the LP residual signal explicitly and develop countermeasures to playback attacks.
探索线性预测剩余信号的发展对策,重放攻击
重放攻击是一种利用目标预先录制的语音样本获取对自动说话人验证(SV)系统的未经授权访问的方法。现在一个广泛承认的事实是,最先进的SV系统非常容易受到重放攻击,并且正在开发对策。在这个方向上,大多数尝试试图通过使用频谱相关信息来捕捉回放设备特征的痕迹,这些信息在回放信号中几乎保持完整,导致错误接受率的改进较少。在这项工作中,我们探索使用线性预测(LP)残余信号来对抗重放攻击。我们观察到,与频谱相关的声道特征相比,LP残余信号的参数化表示对重放攻击表现出相对更强的鲁棒性。未来,我们的目标是明确地对LP残留信号进行建模,并开发针对重放攻击的对策。
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