基于脑电信号的训练支持向量机模型的心理状态预测

Bidur Khanal, S. Pant, Kushal Pokharel, S. Gaire
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引用次数: 1

摘要

精神状态是大脑活动的一种功能;随着脑机接口(BCI)工具的进步,它们可以有效地预测。一般来说,脑机接口研究是复杂的,需要多通道电极,并且经常在受控的实验室环境中进行。本文说明了一个简单的脑接口研究,针对大脑的特定区域,可以进行一个基本的设置。本研究展示了一种预测注意力水平的方法,该方法利用放置在前额皮质区域的单通道无创干电极获得的脑电图(EEG)信号。对采集到的原始信号进行处理,得到特征,并将注意状态分为三类。针对支持向量机在高维数据的训练和分类中更有效的特点,对支持向量机进行了实现,并对其结果进行了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mental State Prediction by Deployment of Trained SVM Model on EEG Brain Signal
Mental States are a function of brain activity; with advancements in Brain Computer Interface (BCI) tools, they can be effectively predicted. Generally, BCI researches are sophisticated requiring multi-channel electrodes, and often carried out in controlled lab environment. This paper illustrates that a simple BCI research, targeting specific region of brain, can be conducted with an elementary setup. A method is demonstrated to predict the level of attentiveness using Electroencephalography (EEG) signal obtained from single-channel, non-invasive, dry-electrode placed on prefrontal cortex region. The acquired raw signal was processed to obtain features which were used to classify the attention state into three classes. As Support Vector Machine (SVM) is more effective in training and classification of high dimensional data, it was implemented and its results were studied.
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