Architectural Review of Co-Adaptive Brain Computer Interface

Amardeep Singh, Sunil Lal, H. Guesgen
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引用次数: 8

Abstract

Electroencephalogram (EEG) based brain computer interface (BCI) detect specific EEG pattern from brain scalp and translate them into control commands for external devices. EEG based BCIs are indeed very promising for people suffering from neuromuscular disorder, but still lack adoption as access modalities outside laboratories. Two major factors responsible for this are (a) User variability: huge performance variations among and within user; (b) Signal Variability: High signal variations within or in between BCI sessions. To some extent advanced signal processing and classification methods can adapt with these variability. This makes machines to adapt with users; however these techniques do not focus on cause of these user and signal variability. Co-adaptive BCI systems are newly introduced concept which identify cause of variability and incorporate appropriate action for it. This enables both user and machine adapt with each other. This review paper describes a framework for co-adaptive BCI system as an initial point for any adaptive BCI solution.
协同自适应脑机接口体系结构综述
基于脑电图(EEG)的脑机接口(BCI)检测来自大脑头皮的特定EEG模式,并将其转化为对外部设备的控制命令。基于脑电图的脑机接口确实对患有神经肌肉疾病的人很有希望,但在实验室之外仍然缺乏采用。造成这种情况的两个主要因素是(a)用户可变性:用户之间和用户内部的巨大性能差异;(b)信号变异性:脑机接口会话内或会话之间的高信号变化。在一定程度上,先进的信号处理和分类方法可以适应这些变化。这使得机器能够适应用户;然而,这些技术并没有关注这些用户和信号变化的原因。协同自适应脑机接口系统是一个新引入的概念,它可以识别可变性的原因并采取适当的措施。这使得用户和机器能够相互适应。这篇综述文章描述了一个协同自适应BCI系统的框架,作为任何自适应BCI解决方案的起点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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