Imagined Speech Classification Using Six Phonetically Distributed Words

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Frontiers in signal processing Pub Date : 2022-03-25 DOI:10.3389/frsip.2022.760643
Y. Varshney, Azizuddin Khan
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引用次数: 3

Abstract

Imagined speech can be used to send commands without any muscle movement or emitting audio. The current status of research is in the early stage, and there is a shortage of open-access datasets for imagined speech analysis. We have proposed an openly accessible electroencephalograph (EEG) dataset for six imagined words in this work. We have selected six phonetically distributed, monosyllabic, and emotionally neutral words from W-22 CID word lists. The phonetic distribution of words consisted of the different places of consonants’ articulation and different positions of tongue advancement for vowel pronunciation. The selected words were “could,” “yard,” “give,” “him,” “there,” and “toe.” The experiment was performed over 15 subjects who performed the overt and imagined speech task for the displayed word. Each word was presented 50 times in random order. EEG signals were recorded during the experiment using a 64-channel EEG acquisition system with a sampling rate of 2,048 Hz. A preliminary analysis of the recorded data is presented by performing the classification of EEGs corresponding to the imagined words. The achieved accuracy is above the chance level for all subjects, which suggests that the recorded EEGs contain distinctive information about the imagined words.
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基于六个语音分布词的想象语音分类
想象的语音可以用来发送命令,而不需要任何肌肉运动或发出声音。目前的研究处于早期阶段,缺乏开放获取的虚拟语音分析数据集。在这项工作中,我们提出了一个开放访问的脑电图(EEG)数据集,用于六个想象词。我们从W-22 CID单词列表中选择了6个语音分布的、单音节的、情感中性的单词。单词的语音分布由辅音发音的不同位置和元音发音的舌头推进的不同位置组成。被选中的单词是“could”、“yard”、“give”、“him”、“there”和“toe”。该实验在15名受试者中进行,他们分别对所显示的单词进行显性和想象的语音任务。每个单词按随机顺序出现50次。实验过程中脑电信号的记录采用64通道脑电信号采集系统,采样率为2048 Hz。通过对想象词对应的脑电图进行分类,对记录的数据进行初步分析。对所有受试者来说,达到的准确率都高于随机水平,这表明记录的脑电图包含了关于想象单词的独特信息。
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