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Voice liveness detection under feature fusion and cross-environment scenario

机译:特征融合与交叉环境场景下的语音活力检测

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摘要

Detecting playback spoofing attacks in speaker verification system is a big challenge. Recent studies on ASVspoof challenges show that replay attacks are the most difficult to recognize. Reasonable performance is expected from such antispoofing systems to avoid malicious access attempts on voice biometrics enabled systems for possible commercial deployment. We present a study on filterbank based short-term cepstral features for liveness detection to counter replay spoofing attacks on speaker verification systems. These systems are evaluated on ASVspoof 2017 version 2.0 dataset. Experimental investigation is carried out on standalone and fused features to assess the performance of the antispoofing systems using spoofing detection equal error rate (EER). Improvement of 20.47% and 21.51% is obtained over baseline system using standalone and fused approaches, respectively. We also explore the impact of proposed static inverted Mel frequency cepstral coefficients (1MECC) based system under mismatched conditions by training and testing it in different environments (with different background conditions) alongwith other systems. Results show that the proposed system outperforms other systems used in this study in all experiments.
机译:检测扬声器验证系统中的播放欺骗攻击是一个很大的挑战。最近关于ASVSpof挑战的研究表明,重播攻击是最难以理解的。预计此类防扰系统的合理性能是为了避免对语音生物识别性的恶意访问尝试启用了可能的商业部署。我们展示了基于Filterbank的短期临时特征的研究,以进行活力检测,以对扬声器验证系统进行计数器重播欺骗攻击。这些系统在ASVSpof 2017版本2.0数据集上进行评估。实验调查是在独立和融合功能上进行的,以评估使用欺骗检测等同误差率(eer)的抗菌系统的性能。使用独立和融合方法的基线系统获得了20.47%和21.51%的提高。我们还通过在不同的环境中训练和测试,在不同的环境中探讨了基于静态倒置MEL频率谱系统(1MECC)的系统的影响(有不同的背景条件)。结果表明,该系统在所有实验中占该研究中使用的其他系统。

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