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Hypo and Hyperarticulated Speech Data Augmentation for Spontaneous Speech Recognition

机译:用于自发语音识别的低表达和超清晰语音数据增强

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Among many challenges in spontaneous speech recognition, we focus on the variability of speech depending on the degree of articulation such as hypo and hyperarticulation. In this paper, we investigate the feasibility of the past acoustic-phonetic studies on the variability of speech in terms of the data augmentation of a spontaneous speech recognition system. To do so, we develop data augmentation approaches to reflect the acoustic-phonetic characteristics of hypo and hyper-articulated speech. Since our approaches are based on signal processing methods they do not require a model learned from supervised or unsupervised data. A series of speech recognition tests are conducted across various speech styles. The results show that we are able to achieve meaningful performance gain by using our approaches. It also indicates that the past acoustic-phonetic knowledge of the variability of speech is useful for improving the recognition performance of spontaneous speech including hypo and hyper-articulated speech.
机译:在自发语音识别的许多挑战中,我们专注于语音的可变性,取决于可变性的程度,例如低清晰度和超清晰度。在本文中,我们根据自发语音识别系统的数据扩充,研究了过去的语音语音可变性研究的可行性。为此,我们开发了数据增强方法来反映低清晰度和高清晰度语音的声学特征。由于我们的方法基于信号处理方法,因此它们不需要从监督或非监督数据中学习的模型。针对各种语音样式进行了一系列语音识别测试。结果表明,通过使用我们的方法,我们能够实现有意义的性能提升。这也表明,过去关于语音可变性的语音知识对于提高自发语音(包括低清晰度和超清晰度)的识别性能很有用。

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