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Defense Against Adversarial Attacks on Spoofing Countermeasures of ASV

机译:防御对抗欺骗ASV的对策

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Various forefront countermeasure methods for automatic speaker verification (ASV) with considerable performance in anti-spoofing are proposed in the ASVspoof 2019 challenge. However, previous work has shown that countermeasure models are vulnerable to adversarial examples indistinguishable from natural data. A good countermeasure model should not only be robust against spoofing audio, including synthetic, converted, and replayed audios; but counteract deliberately generated examples by malicious adversaries. In this work, we introduce a passive defense method, spatial smoothing, and a proactive defense method, adversarial training, to mitigate the vulnerability of ASV spoofing countermeasure models against adversarial examples. This paper is among the first to use defense methods to improve the robustness of ASV spoofing countermeasure models under adversarial attacks. The experimental results show that these two defense methods positively help spoofing countermeasure models counter adversarial examples.
机译:在ASVSPOOO 2019挑战中提出了具有相当大的扬声器验证(ASV)的自动扬声器验证(ASV)的各种前沿对策方法。然而,以前的工作表明,对策模型容易受到来自自然数据无法区分的对抗性示例。一个良好的对策模型不仅适用于欺骗音频,包括合成,转换和重放的Audios;但是通过恶意对手抵消了故意产生的例子。在这项工作中,我们介绍了被动防御方法,空间平滑和主动防御方法,对抗训练,减轻了对抗对抗模型对抗对抗示例的脆弱性。本文是第一个使用防御方法来提高逆势攻击下的抗衡对策模型的鲁棒性。实验结果表明,这两种防御方法积极地帮助欺骗对策模型对抗逆势实例。

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