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Evaluation of Speaker Verification Security and Detection of HMM-Based Synthetic Speech

机译:基于HMM的合成语音的说话人验证安全性评估和检测

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摘要

In this paper, we evaluate the vulnerability of speaker verification (SV) systems to synthetic speech. The SV systems are based on either the Gaussian mixture model–universal background model (GMM-UBM) or support vector machine (SVM) using GMM supervectors. We use a hidden Markov model (HMM)-based text-to-speech (TTS) synthesizer, which can synthesize speech for a target speaker using small amounts of training data through model adaptation of an average voice or background model. Although the SV systems have a very low equal error rate (EER), when tested with synthetic speech generated from speaker models derived from the Wall Street Journal (WSJ) speech corpus, over 81% of the matched claims are accepted. This result suggests vulnerability in SV systems and thus a need to accurately detect synthetic speech. We propose a new feature based on relative phase shift (RPS), demonstrate reliable detection of synthetic speech, and show how this classifier can be used to improve security of SV systems.
机译:在本文中,我们评估了说话人验证(SV)系统对合成语音的脆弱性。 SV系统基于高斯混合模型-通用背景模型(GMM-UBM)或使用GMM超向量的支持向量机(SVM)。我们使用基于隐马尔可夫模型(HMM)的文本语音转换(TTS)合成器,该合成器可以通过平均语音或背景模型的模型调整,使用少量训练数据来为目标说话者合成语音。尽管SV系统的均等错误率(EER)极低,但使用从《华尔街日报》(WSJ)语料库衍生的说话人模型生成的合成语音进行测试时,超过81%的匹配声明被接受。此结果表明SV系统存在漏洞,因此需要准确检测合成语音。我们提出了一种基于相对相移(RPS)的新功能,展示了对合成语音的可靠检测,并展示了该分类器如何用于提高SV系统的安全性。

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