基于机器学习的微睡眠检测新方法

Xuebin Zhu, Zhoulin Wang, Zhenghong Yu, Ying-Jia Lin, Haijie Feng
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引用次数: 0

摘要

本文提出了一种基于机器学习的微睡眠检测方法。该方法简单、高效,无需服务器等大型设备,可应用于实际场景。我们在驾驶模拟实验室中记录了16名年轻人的生理特征,主要包括脑电图(EEG)和驾驶行为视频,并利用机器学习检测微睡眠事件。我们比较了不同的机器学习算法(SVM, KNN, ANN),最终采用了ANN和SVM算法的组合(预处理小规模数据),将识别错误率从最初的4.5%降低到0.2%。这种组合加快了识别速度,提高了识别精度,是一种实用的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new and efficient method for detecting micro-sleep based on machine learning
This article presents a machine learning-based method for detecting micro-sleep. The method is simple, efficient, and can be applied in practical scenarios without the need for large-scale equipment such as servers. We recorded the physiological characteristics of 16 young adults in a driving simulation laboratory, mainly consisting of electroencephalogram (EEG) and driver behaviour videos, and used machine learning to detect micro-sleep events. We compared different machine learning algorithms (SVM, KNN, ANN) and ultimately adopted a combination of ANN and SVM algorithms (pre-processing small-scale data), which reduced the recognition error rate from an initial 4.5% to 0.2%. This combination accelerated the recognition speed and improved the accuracy, making it a practical approach.
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