面部和颈部肌肉对高密度表面肌电图语音识别的贡献比较

Jiashuo Zhuang, Mingxing Zhu, Xiaochen Wang, Dan Wang, Zijian Yang, Xin Wang, Lin Qi, Shixiong Chen, Guanglin Li
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引用次数: 2

摘要

说话是人类相互交流的重要方式。一般采用语音信号进行语音识别,容易受到环境干扰的影响。此外,在先前的研究中,已经提出使用关节肌的表面肌电图(sEMG)来实现对嘈杂环境不敏感的语音识别。然而,面部和颈部肌肉对语音识别的贡献仍不清楚,这对于选择表面肌电信号记录电极的位置至关重要。本研究采用高密度(HD)肌电图技术探讨与说话有关的主要发音肌肉。通过面部和颈部表面电极采集4名被试在说5个汉语日常短语时的高清表面肌电信号,从中提取4个特征(平均绝对值、波形长度、过零次数和斜率符号变化)。然后利用表面肌电信号特征构建线性判别分析分类器进行语音识别。初步结果表明,不同汉语短语的表面肌电信号和均方根波形存在明显差异。使用颈部信号的分类准确率高于面部肌肉信号,而使用整个面部和颈部肌肉信号的分类准确率有所提高。我们的实验结果表明,面部和颈部肌肉都对语音识别有贡献,但在说话过程中,颈部肌肉比面部肌肉更重要。这项初步研究可能表明,高清表面肌电信号可能为找到语音识别的主要肌肉铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Contributions between Facial and Neck Muscles for Speech Recognition Using High-Density surface Electromyography
Speaking is an important way for human beings to communicate each other. Generally, voice signals are used for speech recognition, which is easily affected by environmental interference. Additionally, surface electromyography (sEMG) of articulatory muscles has been proposed in previous studies to enable speech recognition, which is insensitive to noisy environments. However, it remains unclear what are the contributions of facial and neck muscles for speech recognition, which would be vital for selecting locations of sEMG recording electrodes. In this study, the high-density (HD) sEMG technique was proposed to explore the major articulatory muscles contributed to speaking. The HD sEMG signals were acquired from four subjects by surface electrodes over the face and neck during speaking five Chinese daily phrases, from which four features (mean absolute value, waveform length, number of zero crossing, and slope sign change) were extracted. Then a linear-discriminant-analysis classifier was built by the sEMG features for speech recognition. The primary results showed that the sEMG and RMS waveforms illustrated obvious difference when speaking different Chinese phrases. And the classification accuracy using signals from the neck was higher than that from the facial muscles, whereas the accuracy was increased by using the whole facial and neck muscles. Our pilot results revealed that the facial and neck muscles were both contributed to the speech recognition while the neck muscles were more crucial than the facial muscles during speaking. This pilot study may suggest that the HD sEMG might pave a way to find the major muscles of speech recognition.
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