Machine Learning Approach for Stress Detection based on Alpha-Beta and Theta-Beta Ratios of EEG Signals

Hunain Altaf, S. Ibrahim, Nor F. M. Azmin, A. L. Asnawi, Balqis Hanisah Binti Walid, N.H. Harun
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引用次数: 2

Abstract

The contribution to stress detection and classification is far beyond demand as the statistics show that the health and mental illness of society have kept on deteriorating. Electroencephalogram (EEG) signals have the potential to detect stress levels reliably due to their high accuracy. Majority of studies of stress detection are based on alpha and beta waves and the corresponding ratio of the two waves and there are hardly any based-on theta waves. This work explores the impact of bandpower of alpha/beta and theta/beta ratios when combined with other features to classify two-levels of human stress based on EEG signals using five commonly used machine learning algorithms. A classification model is developed from the clustering model gained and Naïve Bayes shows the highest accuracy which is 95% in compared to the other four common machine learning algorithms (i.e., SVM, Logistic, IBk, and SGD) by using WEKA. The proposed framework recommends that both ratios are reliable features, and theta/beta appears to give a huge impact compared to alpha/beta. This study will ultimately contribute to society's development with improved robust machine learning algorithm for binary classification.
基于脑电信号Alpha-Beta和Theta-Beta比值的应力检测机器学习方法
对压力检测和分类的贡献远远超出了需求,因为统计数据表明,社会的健康和精神疾病一直在恶化。由于脑电图(EEG)信号具有较高的准确性,因此具有可靠检测应激水平的潜力。大多数的应力检测研究都是基于α波和β波及其对应的比值,很少有基于θ波的研究。这项工作探索了alpha/beta和theta/beta比率的带宽功率与其他特征相结合的影响,使用五种常用的机器学习算法基于脑电图信号对人类压力的两个级别进行分类。从获得的聚类模型中开发分类模型,Naïve贝叶斯与使用WEKA的其他四种常见机器学习算法(即SVM, Logistic, IBk和SGD)相比,显示出最高的准确率,达到95%。拟议的框架建议,这两个比率都是可靠的特征,与α / β相比,θ / β似乎产生了巨大的影响。本研究最终将通过改进的鲁棒机器学习二分类算法为社会的发展做出贡献。
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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