基于脑电信号α波段的睡意自动检测系统的研究

Mejdi Ben Dkhil, Nidhal Chawech, A. Wali, A. Alimi
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引用次数: 9

摘要

本文介绍了α波段在评价睡意程度中的重要作用。通过过滤alpha波段并使用同一波段的功率谱密度,我们的数据使用百分位数作为色散度量进行分析。他们发现了一个区分这两种状态的阈值,这有助于突出司机大脑中负责困倦状态的区域。因此,在这项工作中,我们希望开发一种嗜睡监测系统,通过分析EEG(脑电图)信号记录来估计嗜睡水平,以参与减少大量的道路交通事故。最后,在Physionet sleep-EDF数据库中的12个样本上对该算法进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an automatic drowsiness detection system by evaluating the alpha band of EEG signals
In this paper, we present the important role of alpha band for the evaluation of the drowsiness degree. By filtering the alpha band and by using the power spectral density of that same band, our data were analyzed using the percentiles as measures of dispersion. A threshold discriminating the two states was found, which helped to highlight the area of the brain responsible for the state of drowsiness for driver. So, in this work, we look to develop a drowsiness monitoring system in the goal to participate in reducing of the big number of road accidents to estimate the drowsiness level by analysis of EEG (electroencephalography) signals records. Finally, the algorithm developed in this work has been tested on twelve samples from the Physionet sleep-EDF database.
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