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Cognitive tasks for driving a brain-computer interfacing system: a pilot study

机译:驱动脑计算机接口系统的认知任务:一项初步研究

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Different cognitive tasks were investigated for use with a brain-computer interface (BCI). The main aim was to evaluate which two of several candidate tasks lead to patterns of electroencephalographic (EEG) activity that could be differentiated most reliably and, therefore, produce the highest communication rate. An optimal signal processing method was also sought to enhance differentiation of EEG profiles across tasks. In ten normal subjects (five male), aged 29-54 years, EEG activity was recorded from four channels during cognitive tasks grouped in pairs, and performed alternately. Four imagery tasks were: spatial navigation around a familiar environment; auditory imagery of a familiar tune; and right and left motor imagery of opening and closing the hand. Signal processing methodology included autoregressive (AR) modeling and classification based on logistic regression and a nonlinear generative classifier. The highest communication rate was found using the navigation and auditory imagery tasks. In terms of classification performance and, hence, possible communication rate, these results were significantly better (p>0.05) than those obtained with the classical pairing of motor tasks involving imaginary movements of the left and right hands. In terms of EEG data analysis, a nonlinear classification model provided more robust results than a linear model (p/spl Lt/0.01), and a lower AR model order than those used in previous work was found to be effective. These findings have implications for establishing appropriate methods to operate BCI systems, particularly for disabled people who may experience difficulty with motor tasks, even motor imagery.
机译:研究了与脑计算机接口(BCI)配合使用的不同认知任务。主要目的是评估几个候选任务中有哪两个导致了脑电图(EEG)活动模式,该模式可以最可靠地加以区分,从而产生最高的交流率。还寻求一种最佳的信号处理方法来增强跨任务的脑电图谱的区分。在十个年龄在29-54岁之间的正常受试者(五名男性)中,在成对分组的认知任务中,从四个通道记录了脑电活动,并交替进行。四个图像任务是:在熟悉的环境中进行空间导航;熟悉曲调的听觉影像;左右手的左右运动图像。信号处理方法包括基于逻辑回归和非线性生成分类器的自回归(AR)建模和分类。使用导航和听觉图像任务发现通讯率最高。在分类性能和可能的沟通率方面,这些结果比经典配对运动任务(包括左右手的虚构运动)获得的结果明显更好(p> 0.05)。在脑电数据分析方面,非线性分类模型提供的结果比线性模型(p / spl Lt / 0.01)更可靠,并且发现AR模型的阶次比以前的研究更有效。这些发现对建立适当的方法来操作BCI系统具有重要意义,特别是对于可能在运动任务甚至运动图像方面遇到困难的残疾人。

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