运动意象领域的最新趋势和迹象:脑机接口范式

Anam Suri, S. Jabin, Munna Khan, Kashif I. K. Sherwani, M. Sardar, Mohammad Monis Khan
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引用次数: 0

摘要

脑机接口(BCI)是一项成熟的技术,仅基于大脑活动促进用户与外部设备之间的通信,将用户的意图与各种人脑信号连接起来,包括EEG(脑电图)、fNIRS(功能性近红外光谱)和DTI(扩散张量成像)。其中,脑电图是最常用的方法。脑电图是一种记录大脑电活动的技术,它使用一种无创的电生理方法来测量脑神经元内离子电流引起的电压波动。没有临床风险,脑电图数据可以使用负担得起的采集设备记录,并且高度便携。在脑电图的各种范式中,运动意象(MI)在近十年来得到了广泛的关注。由于它的潜力,一些改变人类生活的突破性研究已经进行,从而产生了世界级的脑机接口产品。在本文中,我们全面概述了各种基于脑电图的MI-BCI分类趋势和挑战,并特别强调了深度学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent trends and Indications in the field of Motor Imagery: a Brain-computer interface paradigm
Brain-computer interface (BCI) is a well-established technology that facilitates the communication between a user and an external device solely based on brain activity, bridging users' intentions from a variety of human brain signals, including EEG (Electroencephalogram), fNIRS (functional near-infrared spectroscopy), and DTI (diffusion tensor imaging). Out of these, EEG, a technique to record electrical brain activities using a noninvasive electrophysiological method that measures voltage fluctuations induced by the ionic current within brain neurons, is the most commonly applied method. With no clinical risk, EEG data can be recorded using affordable acquisition equipment and is highly portable. Among the various paradigms of EEG, Motor Imagery (MI) has garnered a lot of recognition in the last ten years. Owing to its potential, several ground-breaking research transforming human life have been conducted resulting in world-class BCI products. In this paper, we provide a comprehensive overview of the various EEG-based MI-BCI classification trends and challenges with a particular emphasis on deep learning approaches.
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