Mental Workload Assessment using Low-Channel Prefrontal EEG Signals

Matin Beiramvand, T. Lipping, Nina Karttunen, Reijo Koivula
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Abstract

Objective: Monitoring stress using physiological signals has recently achieved a lot of attention since it has a significant adverse influence on an individual daily’s health and efficiency. As it has been proven that stress and mental workload are proportionally correlated, several studies have proposed algorithms for stress monitoring by increasing the mental workload. Despite the promising results reported in the literature, a majority of the proposed algorithms require the employment of several physiological signals which hinder their real-life application. Nonetheless, the advent of low-cost wearable devices has provided a new possibility for outdoor stress monitoring. The objective of this paper is to present an algorithm for stress detection using low-channel prefrontal electroencephalography (EEG) data. Methods: Firstly, artifacts in EEG signals are removed. Secondly, EEG signals are split into sub-bands using the discrete wavelet transform and two nonlinear parameter-free features are extracted. Thirdly, the extracted features are fed to three classifiers, i.e., support vector machine, Adaboost, and the K-Nearest Neighbours to discriminate stress from relaxed states. Main results: According to the obtained results, the highest accuracy (80.24%) was achieved using the AdaBoost classifier. Significance:Given that the proposed method does not require any parameter adjustment before processing, it has the potential to be used in real-world scenarios.
基于低通道前额叶脑电图信号的精神负荷评估
目的:利用生理信号监测压力最近受到了很多关注,因为它对个人的日常健康和效率有重大的不利影响。由于已经证明压力和心理工作量成比例相关,一些研究提出了通过增加心理工作量来监测压力的算法。尽管在文献中报道了有希望的结果,但大多数提出的算法需要使用几个生理信号,这阻碍了它们在现实生活中的应用。尽管如此,低成本可穿戴设备的出现为室外压力监测提供了新的可能性。本文的目的是提出一种利用低通道前额叶脑电图(EEG)数据进行应力检测的算法。方法:首先去除脑电信号中的伪影;其次,利用离散小波变换对脑电信号进行分带,提取两个非线性无参数特征;第三,将提取的特征输入到支持向量机(support vector machine)、Adaboost和k近邻(K-Nearest neighbors)三个分类器中,以区分压力和放松状态。主要结果:根据获得的结果,使用AdaBoost分类器获得最高的准确率(80.24%)。意义:由于该方法在处理前不需要任何参数调整,因此具有在现实场景中使用的潜力。
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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