四状态脑机接口的单次实验运动意象分类

C. Hema, M. Paulraj, S. Yaacob, A. H. Adom, R. Nagarajan
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引用次数: 11

摘要

运动意象是对运动行为的心理模拟,可用于设计脑机接口。BMI是绕过周围神经系统和肌肉系统,将人脑直接连接到外部设备的数字通信系统。因此,BMI为神经肌肉疾病患者开辟了一种新的交流渠道。一个人通过想象的运动任务来控制他的脑电图的能力使他能够控制设备。提出了一种用于控制电动轮椅的四状态BMI单次试验运动意象分类的新方法。递归神经分类器用于对向前、停止、左手和右手运动图像中的脑电图信号进行分类。脑电图是用放置在运动皮层上的非侵入性头皮电极记录的。该算法的平均分类效率为96.15%。该方法可以利用四态BMI将运动图像信号转化为控制信号,从而控制轮椅的定向运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single trial motor imagery classification for a four state brain machine interface
Motor imagery is the mental simulation of a motor act which can be used to design brain machine interfaces [BMI]. A BMI is a digital communication system, which connects the human brain directly to an external device bypassing the peripheral nervous system and muscular system. Thus a BMI opens up possibilities for a new communication channel for people with neuromuscular disorders. The ability of an individual to control his EEG through imaginary motor tasks enables him to control devices. This paper presents a novel method for single trial motor imagery classification for a four state BMI to control a powered wheelchair. Recurrent Neural classifiers are used for classification of EEG signals during motor imagery for forward, stop, left and right hand movements. EEG is recorded using noninvasive scalp electrodes placed over the motor cortex. The performance of the proposed algorithm has an average classification efficiency of 96.15%. The proposed method can be used to translate the motor imagery signals into control signal using a four state BMI to control the directional movement of a powered wheelchair.
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