Feature detection based on linear prediction residual for spoofing countermeasures of speaker verification system

Min Chen, Yibiao Yu
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引用次数: 0

Abstract

The pre-research shows that Linear prediction (LP) residual contains more discriminative information related to replay spoofing attacks, so this paper proposes three features based on LP residual and IMel filter-banks which closely distributed in the high-frequency regions for replay spoofing countermeasures. They are residual IMel frequency cepstral coefficient (RIMFC), LP residual Hilbert envelope IMel frequency cepstral coefficient (LHIMFC) and residual phase cepstral coefficient (RPC). The effectiveness of these features is demonstrated on ASVspoofing2017 Challenge Version 2.0 dataset. Experimental results indicate that the proposed features outperform the baseline system using constant Q cepstral coefficient (CQCC), and the equal error rate (EER) is reduced under the same conditions. Moreover, feature fusions help to achieve higher performance than traditional IMel frequency cepstral coefficient (IMFCC) and CQCC, which indicates that the complementary information of different features is beneficial for detecting replay attacks.
基于线性预测残差的说话人验证系统欺骗对抗特征检测
前期研究表明,线性预测(LP)残差包含更多与重放欺骗攻击相关的判别信息,因此本文提出了基于LP残差和紧密分布在高频区域的IMel滤波器组的三个特征用于重放欺骗对抗。它们分别是残差IMel频率倒谱系数(RIMFC)、LP残差Hilbert包络线IMel频率倒谱系数(LHIMFC)和残差相位倒谱系数(RPC)。在ASVspoofing2017挑战2.0版本数据集上验证了这些特征的有效性。实验结果表明,所提特征优于采用恒Q倒谱系数(CQCC)的基线系统,在相同条件下降低了等错误率(EER)。此外,与传统的IMel倒频谱系数(IMFCC)和CQCC相比,特征融合可以获得更高的性能,这表明不同特征的互补信息有利于检测重放攻击。
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