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基于言语-意象的耳 EEG 脑-机接口系统。

Speech-imagery-based brain-computer interface system using ear-EEG.

机构信息

School of Computing, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea. Both authors contributed equally to this work.

出版信息

J Neural Eng. 2021 Feb 24;18(1):016023. doi: 10.1088/1741-2552/abd10e.

Abstract

OBJECTIVE

This study investigates the efficacy of electroencephalography (EEG) centered around the user's ears (ear-EEG) for a speech-imagery-based brain-computer interface (BCI) system.

APPROACH

A wearable ear-EEG acquisition tool was developed and its performance was directly compared to that of a conventional 32-channel scalp-EEG setup in a multi-class speech imagery classification task. Riemannian tangent space projections of EEG covariance matrices were used as input features to a multi-layer extreme learning machine classifier. Ten subjects participated in an experiment consisting of six sessions spanning three days. The experiment involves imagining four speech commands ('Left,' 'Right,' 'Forward,' and 'Go back') and staying in a rest condition.

MAIN RESULTS

The classification accuracy of our system is significantly above the chance level (20%). The classification result averaged across all ten subjects is 38.2% and 43.1% with a maximum (max) of 43.8% and 55.0% for ear-EEG and scalp-EEG, respectively. According to an analysis of variance, seven out of ten subjects show no significant difference between the performance of ear-EEG and scalp-EEG.

SIGNIFICANCE

To our knowledge, this is the first study that investigates the performance of ear-EEG in a speech-imagery-based BCI. The results indicate that ear-EEG has great potential as an alternative to the scalp-EEG acquisition method for speech-imagery monitoring. We believe that the merits and feasibility of both speech imagery and ear-EEG acquisition in the proposed system will accelerate the development of the BCI system for daily-life use.

摘要

目的

本研究旨在调查基于用户耳朵的脑电图(EEG)(耳 EEG)在基于言语想象的脑机接口(BCI)系统中的功效。

方法

开发了一种可穿戴的耳 EEG 采集工具,并在多类言语想象分类任务中直接将其性能与传统的 32 通道头皮 EEG 设置进行比较。 EEG 协方差矩阵的黎曼切空间投影被用作多层极限学习机分类器的输入特征。十位受试者参与了一项包含六个会话的实验,跨越三天。该实验涉及想象四个言语命令('左'、'右'、'前'和'后退')和保持休息状态。

主要结果

我们系统的分类准确率明显高于随机水平(20%)。十个受试者的平均分类结果为 38.2%,耳 EEG 和头皮 EEG 的最大值分别为 43.8%和 55.0%。根据方差分析,十个受试者中有七个在耳 EEG 和头皮 EEG 的性能之间没有显著差异。

意义

据我们所知,这是首次研究基于言语想象的 BCI 中耳 EEG 的性能。结果表明,耳 EEG 作为言语想象监测的头皮 EEG 采集方法的替代方法具有很大的潜力。我们相信,所提出系统中言语想象和耳 EEG 采集的优点和可行性将加速日常使用的 BCI 系统的发展。

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