Telling Minds Apart: Classification of EEG Signals Based on Comparison of Brain Activity Maps

Anastasiya V. Garenskaya, M. Bakaev, O. Razumnikova
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引用次数: 1

Abstract

The need to assign a particular human subject to a certain group arises in many tasks related to measurement of cognitive abilities or their application in interaction tasks. Analysis of frequencies in electroencephalograms is one of the useful approaches for the differentiation, but there is no agreed-upon method due to different frequency bands associated with various cognitive functions and personality traits. In a pilot study described in the paper, two obviously different groups of EEG signals for 26 subjects are employed: recorded with the subjects’ eyes open and the eyes closed. Brain activity maps in WinEEG are produced and 3 alternative algorithms are used to calculate pairwise image similarities for the maps per three groups: EO-EO, EC-EC, and EC-EO. The differences between all the groups are statistically significant, and the proposed “coarsening” approach towards EEG classification can easily yield accuracy of 81.25%. Its potential benefits include no need for advanced brain electric activity registration equipment and no reliance on sophisticated analysis methods that are not entirely resilient to noise in the EEG signals.
区分思维:基于脑活动图比较的脑电信号分类
在许多与认知能力测量或其在交互任务中的应用相关的任务中,需要将特定的人类受试者分配到特定的组中。脑电图频率分析是一种有效的区分方法,但由于不同的频带与不同的认知功能和人格特征有关,因此尚无统一的方法。在本文描述的一项初步研究中,对26名受试者采用了两组明显不同的脑电图信号:受试者睁眼和闭眼记录。在WinEEG中生成脑活动图,并使用3种替代算法来计算每三组图的成对图像相似性:EO-EO, EC-EC和EC-EO。各组之间的差异具有统计学意义,提出的“粗化”脑电分类方法可以轻松地获得81.25%的准确率。它的潜在好处包括不需要先进的脑电活动记录设备,也不依赖于对脑电图信号中的噪声不完全有弹性的复杂分析方法。
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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