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A Hybrid Brain-Computer Interface System Based on Motor Imageries and Eye-Blinking

机译:基于运动图像和眨眼的混合脑机接口系统

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This paper focuses on the online implementation of a hybrid brain computer interface (BCI) involving electroculogram (EOG) and electroencephalogram (EEG) of motor imagery (MI). The hybrid BCI system comprises of modules of eye-blinking detection, ICA spatial filter, zero-training classifier and cursor movement controlling. Eye-blinking information contained in EOG signal was achieved for locating EEG segments related to motor imageries. Then, independent component analysis (ICA) was applied to the filtered EEG data to yield the motor-related potentials, whose features were fed into a zero-training classifier. Finally, the classification results regarding the types of moving imagination were transferred into commands to control the cursor moving along a predesigned path shown on the computer screen. Four subjects attended the online BCI tests, the average moving accuracy reached 84.56% for all tests, and the response time was about 4.13 trials/min. The experimental results demonstrate that the hybrid M1BCI system in this study is feasible for the real-time control of peripheral devices.
机译:本文重点介绍了混合脑计算机接口(BCI)的在线实现,其中包括运动图像(MI)的脑电图(EOG)和脑电图(EEG)。混合BCI系统包括眨眼检测,ICA空间滤波器,零训练分类器和光标移动控制等模块。 EOG信号中包含的眨眼信息可用于定位与运动图像有关的EEG段。然后,将独立成分分析(ICA)应用于滤波后的EEG数据,以产生与电机相关的电势,并将其特征输入到零训练分类器中。最后,关于移动想像力类型的分类结果被传输到命令中,以控制光标沿着计算机屏幕上显示的预先设计的路径移动。四名受试者参加了在线BCI测试,所有测试的平均移动准确度达到84.56%,响应时间约为4.13次/分钟。实验结果表明,本研究中的混合M1BCI系统对于外围设备的实时控制是可行的。

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