Brain Computer Interface Design Using Band Powers Extracted During Mental Tasks

Ramaswamy Palaniappan
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引用次数: 119

Abstract

In this paper, a brain computer interface (BCI) is designed using electroencephalogram (EEG) signals where the subjects have to think of only a single mental task. The method uses spectral power and power difference in 4 bands: delta and theta, beta, alpha and gamma. This could be used as an alternative to the existing BCI designs that require classification of several mental tasks. In addition, an attempt is made to show that different subjects require different mental task for minimising the error in BCI output. In the experimental study, EEG signals were recorded from 4 subjects while they were thinking of 4 different mental tasks. Combinations of resting (baseline) state and another mental task are studied at a time for each subject. Spectral powers in the 4 bands from 6 channels are computed using the energy of the elliptic FIR filter output. The mental tasks are detected by a neural network classifier. The results show that classification accuracy up to 97.5% is possible, provided that the most suitable mental task is used. As an application, the proposed method could be used to move a cursor on the screen. If cursor movement is used with a translation scheme like Morse code, the subjects could use the proposed BCI for constructing letters/words. This would be very useful for paralysed individuals to communicate with their external surroundings
利用脑力任务中提取的波段能量设计脑机接口
本文利用脑电图(EEG)信号设计了一个脑机接口(BCI),在这个接口中,受试者只需要思考一个单一的心理任务。该方法使用4个波段的频谱功率和功率差:delta和theta, beta, alpha和gamma。这可以作为现有的脑机接口设计的替代方案,该设计需要对几个心理任务进行分类。此外,还试图说明不同的被试需要不同的心理任务来最小化脑机接口输出的误差。在实验研究中,记录了4名受试者在思考4种不同的心理任务时的脑电图信号。对每个受试者同时研究静息(基线)状态和另一心理任务的组合。利用椭圆型FIR滤波器输出的能量计算6个通道4个波段的频谱功率。心理任务由神经网络分类器检测。结果表明,只要使用最合适的心理任务,分类准确率可达97.5%。作为一个应用程序,所提出的方法可用于移动屏幕上的光标。如果鼠标移动与莫尔斯电码这样的翻译方案一起使用,受试者可以使用提议的脑机接口来构建字母/单词。这将是非常有用的瘫痪个人沟通与他们的外部环境
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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