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Nonlinear analysis of natural vs. HTS-based synthetic speech

机译:自然与HTS的非线性分析基于HTS的合成语音

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Many investigations on speech nonlinearities have been carried out and these studies provide strong evidences to support nonlinear system modelling of speech production. The nonlinear characteristics that these studies point to are analogous to chaotic systems. This paper aims to provide evidence of chaotic nature of speech signal and use it for feature extraction to distinguish synthetic and natural speech. The feature used to extract chaos is Lyapunov Exponent (LE). The synthetic speech is found to have higher values of LE in comparison with natural speech. We propose a new feature based on LE for detection of synthetic speech. The synthetic speech used is from Hidden Markov Model (HMM)-based speech synthesis system (HTS) trained using low resource Indian language-Gujarati. This work may find its application for improving robustness of speaker verification (SV) systems against imposture attack using synthetic speech.
机译:已经进行了许多关于语音非线性的调查,这些研究提供了强有力的证据,以支持语音生产的非线性系统建模。这些研究指出的非线性特征类似于混沌系统。本文旨在提供语音信号的混沌性质的证据,并使用它进行特征提取以区分合成和自然语音。用于提取混乱的功能是Lyapunov指数(LE)。与自然语音相比,发现合成语音具有更高的le值。我们提出了一种基于LE检测合成语音的新功能。使用的合成语音来自使用低资源印度语言-Gujarati接受过的隐马尔可夫模型(HMM)的语音合成系统(HTS)。这项工作可能会发现它可以使用合成语音改善对抗冒犯攻击的扬声器验证(SV)系统的稳健性。

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