A Novel Task-Oriented Text Corpus in Silent Speech Recognition and its Natural Language Generation Construction Method

Dong Cao, Dongdong Zhang, Haibo Chen
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引用次数: 3

Abstract

Millions of people with severe speech disorders around the world may regain their communication capabilities through techniques of silent speech recognition (SSR). Using electroencephalography (EEG) as a biomarker for speech decoding has been popular for SSR. However, the lack of SSR text corpus has impeded the development of this technique. Here, we construct a novel task-oriented text corpus, which is utilized in the field of SSR. In the process of construction, we propose a task-oriented hybrid construction method based on natural language generation (NLG) algorithm. The algorithm focuses on the strategy of data-to-text generation, and has two advantages including linguistic quality and high diversity. These two advantages use template-based method and deep neural networks respectively. In an SSR experiment with the generated text corpus, analysis results show that the performance of our hybrid construction method outperforms the pure method such as template-based natural language generation or neural natural language generation models.
一种面向任务的无声语音识别文本语料库及其自然语言生成构建方法
全世界数百万患有严重语言障碍的人可以通过无声语音识别技术(SSR)重新获得沟通能力。利用脑电图(EEG)作为语音解码的生物标志物已成为SSR研究的热点。然而,缺乏SSR文本语料库阻碍了该技术的发展。在此,我们构建了一个新的面向任务的文本语料库,并将其应用于SSR领域。在构建过程中,提出了一种基于自然语言生成(NLG)算法的面向任务的混合构建方法。该算法侧重于数据到文本的生成策略,具有语言质量高、多样性高等优点。这两种优势分别利用了基于模板的方法和深度神经网络。在生成文本语料库的SSR实验中,分析结果表明,混合构建方法的性能优于基于模板的自然语言生成或神经自然语言生成模型等纯方法。
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