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基于分类方法和电极配置对脑电无声语音分类的影响。

The Effects of Classification Method and Electrode Configuration on EEG-based Silent Speech Classification.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:131-134. doi: 10.1109/EMBC46164.2021.9629709.

Abstract

The effective classification for imagined speech and intended speech is of great help to the development of speech-based brain-computer interfaces (BCIs). This work distinguished imagined speech and intended speech by employing the cortical EEG signals recorded from scalp. EEG signals from eleven subjects were recorded when they produced Mandarin-Chinese monosyllables in imagined speech and intended speech, and EEG features were classified by the common spatial pattern, time-domain, frequency-domain and Riemannian manifold based methods. The classification results indicated that the Riemannian manifold based method yielded the highest classification accuracy of 85.9% among the four classification methods. Moreover, the classification accuracy with the left-only brain electrode configuration was close to that with the whole brain electrode configuration. The findings of this work have potential to extend the output commands of silent speech interfaces.

摘要

想象言语和意图言语的有效分类对基于言语的脑机接口(BCI)的发展有很大的帮助。本研究通过头皮记录的皮层 EEG 信号来区分想象言语和意图言语。当 11 名被试分别产生汉语单音节的想象言语和意图言语时,记录 EEG 信号,然后采用共空间模式、时域、频域和黎曼流形等方法对 EEG 特征进行分类。分类结果表明,在这 4 种分类方法中,基于黎曼流形的方法的分类准确率最高,达到 85.9%。此外,仅使用左侧脑电极配置的分类准确率接近使用全脑电极配置的分类准确率。这项工作的结果有望扩展无声言语接口的输出指令。

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