论文标题

欺骗攻击语音生物识别技术的对抗性转变

Adversarial Transformation of Spoofing Attacks for Voice Biometrics

论文作者

Gomez-Alanis, Alejandro, Gonzalez-Lopez, Jose A., Peinado, Antonio M.

论文摘要

基于自动扬声器验证(ASV)的语音生物识别系统暴露于\ textit {欺骗}攻击,这可能会损害其安全性。为了提高针对此类攻击的鲁棒性,已经提出了反欺骗或呈现攻击检测(PAD)系统,以检测基于重播,综合和基于语音转换的攻击。最近,科学界表明,PAD系统也容易受到对抗性攻击的影响。但是,据我们所知,以前的工作没有研究这些新型的对抗性\ textit {spoofing}攻击的完整语音生物识别系统(ASV + PAD)的鲁棒性。在这项工作中,我们开发了一个新的对抗性生物识别技术转换网络(ABTN),该网络共同处理PAD和ASV系统的丢失,以生成白色框和Black-Box对抗性\ TextIt \ textIt {SpoOfing}攻击。该系统的核心思想是生成对抗性\ textit {spoofing}攻击,这些攻击能够欺骗PAD系统而无需ASV系统检测到。实验是在ASVSPOOF 2019语料库上进行的,包括逻辑访问(LA)和物理访问(PA)方案。实验结果表明,提出的ABTN显然优于白盒和黑盒攻击方案中一些众所周知的对抗技术。

Voice biometric systems based on automatic speaker verification (ASV) are exposed to \textit{spoofing} attacks which may compromise their security. To increase the robustness against such attacks, anti-spoofing or presentation attack detection (PAD) systems have been proposed for the detection of replay, synthesis and voice conversion based attacks. Recently, the scientific community has shown that PAD systems are also vulnerable to adversarial attacks. However, to the best of our knowledge, no previous work have studied the robustness of full voice biometrics systems (ASV + PAD) to these new types of adversarial \textit{spoofing} attacks. In this work, we develop a new adversarial biometrics transformation network (ABTN) which jointly processes the loss of the PAD and ASV systems in order to generate white-box and black-box adversarial \textit{spoofing} attacks. The core idea of this system is to generate adversarial \textit{spoofing} attacks which are able to fool the PAD system without being detected by the ASV system. The experiments were carried out on the ASVspoof 2019 corpus, including both logical access (LA) and physical access (PA) scenarios. The experimental results show that the proposed ABTN clearly outperforms some well-known adversarial techniques in both white-box and black-box attack scenarios.

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