基于无线脑电图的开放式平台脑机接口在线应用研究

A. G. Risangtuni, Suprijanto, A. Widyotriatmo
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引用次数: 8

摘要

脑机接口(BCI)是一种直接利用脑电图(EEG)信号来控制外部设备的系统,无需身体任何肢体的帮助。脑机接口系统包括脑电波采集、信号处理、特征提取和分类。采用无线EEG Emotiv EPOC神经耳机和OpenViBE设计了脑机接口系统。它们都是开源系统,这给了我们自由开发BCI系统的机会。当受试者想象手部运动时,从获得的脑电波中提取Mu波。通过将Mu波应用于8 - 13 Hz带通滤波器,可以在运动前活动发生的FC5和FC6上获得Mu波。提取脑电信号幅值的平方——毫米波功率,将其分为两类。在离线分类和在线训练中使用支持向量机(SVM)进行特征分类。采用脑机接口(BCI)控制,对3名未经良好训练的健康受试者进行脑电信号采集。受试者的任务是在屏幕上的左右箭头的刺激下想象左手和右手的运动。OpenViBE已经成功地完成了培训和测试阶段的配置,以实现在线应用。所有受试者离线测试和单次分类的平均识别率右箭头为60.63%,左箭头为45.93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards online application of wireless EEG-based open platform Brain Computer Interface
Brain Computer Interface (BCI) is a system that directly utilize Electroencephalograph (EEG) signals to control external devices without aid from any limb of the body. BCI system consists of brainwave acquisition, signal processing, feature extraction and classification. A design of BCI system has been developed by using a wireless EEG Emotiv EPOC neuroheadset and OpenViBE. Both of them are open-source system which gives opportunity to develop our BCI system freely. Mu wave is extracted from the acquired brainwaves when the subject imagined hand movement. Mu wave can be obtained on FC5 and FC6, where premotor activities take place, by apply it to a 8 - 13 Hz bandpass filter. Mu wave power which is the square of EEG signal amplitude is extracted to be classified into two different classes. Feature classification is done by using Support Vector Machine (SVM) in offline classification and online training. EEG signal was acquired on three healthy subjects without well training with BCI control. The task of subjects are imaginary movement of right and left hand with stimulation by a left and right arrow on the screen. Configuration for training and testing phase has been successfully done in OpenViBE towards online application. The mean recognition rate in offline testing and single trial classification is 60.63% for right arrow and 45.93% for left arrow on all subjects.
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