脑机接口的脑电信号分析综述

Swati Vaid, Preeti Singh, Chamandeep Kaur
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引用次数: 142

摘要

脑机接口(BCI)系统是为了帮助残疾人,即那些不能做出运动反应的人,利用大脑信号与计算机进行交流而提出的设备。脑机接口的目的是将大脑活动转化为数字形式,作为计算机的指令。如何尽可能准确地提取随机时变脑电信号的特征并对其进行分类是当前脑机接口研究的一个关键挑战。特征提取技术是从脑信号的模式中提取代表某种独特性质的特征。早期的脑电图分析仅限于目视检查。对信号的目视检查非常主观,几乎不允许任何标准化或统计分析。因此,有几种不同的技术被用来量化大脑信号的信息。存在许多线性和非线性的特征提取方法。本文的目的是简单介绍脑电信号和脑机接口系统。本文还综述了用于信号特征提取的传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG Signal Analysis for BCI Interface: A Review
Brain Computer Interface (BCI) systems are the devices which are proposed to help the disabled, people who are incapable of making motor response to communicate with computer using brain signal. The aim of BCI is to interpret brain activity into digital form which acts as a command for a computer. One key challenge in current BCI research is how to extract features of random time-varying EEG signals and its classification as accurately as possible. Feature extraction techniques are used to extract the features which represent a unique property obtained from pattern of brain signal. Earlier EEG analysis was restricted to visual inspection only. The visual inspection of the signal is very subjective and hardly allows any standardization or statistical analysis. Hence, several different techniques were intended in order to quantify the information of the brain signal. Many linear and non-linear methods for feature extraction exist. The purpose of this paper is to give a brief introduction to the EEG signals and BCI system. The paper also includes a review on the conventional methods that are used for feature extraction of the signal.
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