用于欺骗感知说话人验证的规范约束分数级集成

Peng Zhang, Peng Hu, Xueliang Zhang
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引用次数: 5

摘要

在本文中,我们介绍了提交给2022年Spoo fing Aware扬声器验证挑战赛(SASVC)的Elevoc系统。我们提交的材料重点是弥合自动扬声器验证(ASV)和对抗(CM)系统之间的差距。我们研究了一种通用且有效的范数约束分数级集成方法,该方法联合处理从ASV和CM子系统提取的分数,提高了对零效果冒名顶替和欺骗攻击的鲁棒性。此外,我们探索了当ASV和CM子系统都被优化时,集成系统可以提供更好的性能。实验结果表明,我们的主要系统产生了0.45%SV-EER、0.26%SPF-EER和0.37%SASV-EER,并在SASVC 2022评估集上获得了超过96.08%、66.67%和94.19%的相对改进。我们所有的代码和预先训练的模型权重都是公开的,并且是可复制的1。
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Norm-constrained Score-level Ensemble for Spoofing Aware Speaker Verification
In this paper, we present the Elevoc systems submitted to the Spoofing Aware Speaker Verification Challenge (SASVC) 2022. Our submissions focus on bridge the gap between the automatic speaker verification (ASV) and countermeasure (CM) systems. We investigate a general and efficient norm-constrained score-level ensemble method which jointly processes the scores extracted from ASV and CM subsystems, improving robustness to both zero-effect imposters and spoof-ing attacks. Furthermore, we explore that the ensemble system can provide better performance when both ASV and CM subsystems are optimized. Experimental results show that our primary system yields 0.45% SV-EER, 0.26% SPF-EER and 0.37% SASV-EER, and obtains more than 96.08%, 66.67% and 94.19% relative improvements over the best performing baseline systems on the SASVC 2022 evaluation set. All of our code and pre-trained models weights are publicly available and reproducible 1 .
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