脑电信号对人类认知技能的分类与预测

Malak Shah, Ruma Ghosh
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引用次数: 3

摘要

本文提出了一种利用脑电图信号对人类认知技能进行二值分类的新方法。分类是通过评估受试者在解决一系列复杂程度不同的算术问题时,以不同频率的大脑活动来完成的。借助EMOTIV EPOC+神经耳机,通过脑电图信号记录脑活动。通过K近邻(KNN)、支持向量机(SVM)、回归(Regression)、判别(Discriminant)、树(Tree)和集成(Ensemble)等监督学习分类器对采集到的数据进行分析和分类。采用类似于效价/唤醒模型的情绪分类方法,将被试的心理技能分为解决/不解决两种状态。本文对实验结果进行了详细的介绍和讨论。人们相信,这项工作将导致准确预测人类认知技能的方法的发展,从而更好地了解人类的学习能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification and Prediction of Human Cognitive Skills Using EEG Signals
In this paper, a novel method to perform binary classification of human cognitive skill using electroencephalography (EEG) signals was developed. The classification was done by assessing activity in the brain, at different frequencies while the subjects were solving a series of arithmetic questions of varying complexity. Recording of brain activity was done through EEG signals with the aid of the EMOTIV EPOC+ neural headset. The acquired data was analyzed and the classifications were accomplished with the help of supervised learning classifiers, namely K Nearest Neighbors (KNN), Support Vector Machine (SVM), Regression, Discriminant, Tree and Ensemble classifiers. The mental skill of the test subject was classified in binary terms of a state of solving/not solving in a manner similar to emotional classification using the valence/arousal model. The results are presented and discussed in detail in this paper. It is believed that this work would lead to the development of accurate methods to predict cognitive skills of human beings for a better understanding of their learning capabilities.
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