论文标题

对自动扬声器验证的恒定Q Cepstral系数欺骗对策的解释性研究

An explainability study of the constant Q cepstral coefficient spoofing countermeasure for automatic speaker verification

论文作者

Tak, Hemlata, Patino, Jose, Nautsch, Andreas, Evans, Nicholas, Todisco, Massimiliano

论文摘要

自动扬声器验证的反欺骗现在是一个良好的研究领域,在过去6年中,面临三个竞争性挑战。在这段时间内,已经将大量的研究工作投入到针对欺骗检测任务的前端表示的发展。一种称为常数q cepstral系数(CQCC)的方法已被证明在检测基于单位选择的语音合成算法实施的攻击方面特别有效。尽管他们取得了成功,但他们在很大程度上未能检测出其他形式的欺骗攻击,而更传统的前端表示会带来更好的结果。在最近的2019年ASVSPOOF挑战系列中也观察到了类似的差异。本文报告了我们试图帮助解释这些观察结果的尝试。该解释表明,每个前端对光谱的不同子带组件的关注水平。到目前为止,令人惊讶的是,关于通过欺骗对策检测到哪些人工制品的了解很少。因此,我们的工作旨在阐明信号或光谱级别的人工制品,这些伪像,以区分不同形式的欺骗攻击与真实的骨骼语言。通过更好地了解这些人工制品,我们将更好地设计出更可靠的对策。

Anti-spoofing for automatic speaker verification is now a well established area of research, with three competitive challenges having been held in the last 6 years. A great deal of research effort over this time has been invested into the development of front-end representations tailored to the spoofing detection task. One such approach known as constant Q cepstral coefficients (CQCCs) have been shown to be especially effective in detecting attacks implemented with a unit selection based speech synthesis algorithm. Despite their success, they largely fail in detecting other forms of spoofing attack where more traditional front-end representations give substantially better results. Similar differences were also observed in the most recent, 2019 edition of the ASVspoof challenge series. This paper reports our attempts to help explain these observations. The explanation is shown to lie in the level of attention paid by each front-end to different sub-band components of the spectrum. Thus far, surprisingly little has been learned about what artefacts are being detected by spoofing countermeasures. Our work hence aims to shed light upon signal or spectrum level artefacts that serve to distinguish different forms of spoofing attack from genuine, bone fide speech. With a better understanding of these artefacts we will be better positioned to design more reliable countermeasures.

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