Spectral EEG features and tasks selection process: Some considerations toward BCI applications

Monica-Claudia Dobrea, D. Dobrea, D. Alexa
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引用次数: 13

Abstract

In this paper, we further develop the idea of subject specific mental tasks selection process as a necessary prerequisite in any EEG-based brain computer interface (BCI) application. While, in two previous researches we proved — using the EEG-extracted auto-regressive (AR) parameters and twelve different mental tasks —, the major gains one can obtain in tasks classification performance only by selecting the proper tasks, here we investigate the putative relation that exists between each (subject, given EEG features) pair and the corresponding individual optimum set of cognitive tasks. In this idea, a set of three different spectrum relative power parameters were considered. The classification performances achieved with these last EEG features are comparatively presented for two subjects and for two sets of tasks: i) the frequently used in the BCI field, Keirn and Aunon set of tasks, and ii) the previously determined (AR-based) optimum individual set of tasks.
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频谱脑电特征和任务选择过程:脑机接口应用的一些考虑
在本文中,我们进一步发展了受试者特定心理任务选择过程作为任何基于脑电图的脑机接口(BCI)应用的必要前提。然而,在之前的两项研究中,我们证明了只有通过选择合适的任务才能获得任务分类性能的主要收益,在这里,我们研究了每个(受试者,给定的EEG特征)对与相应的个体最佳认知任务集之间存在的假定关系。在这个思想中,考虑了一组三种不同的频谱相对功率参数。用这些最后的EEG特征实现的分类性能比较呈现了两个主题和两组任务:i)在BCI领域中经常使用的Keirn和Aunon任务集,以及ii)先前确定的(基于ar的)最佳个人任务集。
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