基于基本尺度熵的驾驶疲劳实时检测与预警

Fuwang Wang, Xiaogang Kang, Bin Lu
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引用次数: 0

摘要

驾驶疲劳是造成交通事故的主要原因,交通事故往往造成严重的人身伤害和巨大的财产损失。因此,准确、快速地检测驾驶员的心理疲劳状态并进行疲劳预警,对交通安全具有重要意义。本文对采集到的脑电图信号进行预处理,去除干扰信号。采用Butterworth带通滤波器提取α和β节律的脑电信号,并将α和β节律的基本尺度熵作为驾驶疲劳特征。利用这些特征分析被试在不同驾驶阶段的驾驶疲劳状态,根据驾驶疲劳特征的变化规律,结合疲劳量表SOFI-25(瑞典职业疲劳量表-25),将驾驶疲劳分为清醒状态、轻度疲劳状态和重度疲劳状态3个等级。当疲劳达到轻度疲劳状态或重度疲劳状态时,向驾驶员发出疲劳警告,并播放驾驶员感兴趣的音乐。结果表明,利用α和β节律的基本尺度熵作为驾驶疲劳特征,可以有效地检测驾驶员疲劳。基本尺度熵是一种计算速度快、抗干扰能力强、对噪声有一定抑制作用的熵测量算法,可以实现对驾驶疲劳的实时、更准确的检测。此外,当疲劳达到轻度疲劳或重度疲劳状态时,本研究对驾驶员进行疲劳警告,并播放驾驶员感兴趣的音乐来缓解疲劳,在实际驾驶中具有实用价值,可以有效提高驾驶安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Detection and Early Warning of Driving Fatigue Based on Basic Scale Entropy
Driving fatigue is the main cause of traffic accidents, and traffic accidents often cause serious personal injury and huge property losses. Therefore, it is of great significance for traffic safety to accurately and quickly detect the mental fatigue of the driver and perform fatigue warning. In this paper, preprocess the collected the electroencephalogram (EEG) signals to remove interference signals. The Butterworth band-pass filter is used to extract the EEG signals of α and β rhythms, and then the basic scale entropy of αand β rhythms is used as driving fatigue features. Using these features to analyze the driving fatigue state of the subjects in different driving stages, according to the change law of driving fatigue features and combined with the fatigue scale SOFI-25 (swedish occupational fatigue inventory-25), driving fatigue is divided into 3 levels (awake state, mild fatigue state and severe fatigue state). When the fatigue reaches a mild fatigue state or a severe fatigue state, a fatigue warning is given to the driver, and a piece of music that the driver is interested in is played. The results show that using the basic scale entropy of α and βrhythms as driving fatigue characteristics can effectively detect driver fatigue. The basic scale entropy is an entropy measurement algorithm with fast calculation, strong anti-interference and certain suppression of noise, which can realize real-time and more accurate detection of driving fatigue. In addition, when the fatigue reaches the state of mild fatigue or severe fatigue, this study provides fatigue warning to the driver, and plays a piece of music that the driver is interested in to relieve fatigue, which has practical value in actual driving and can effectively improve driving safety.
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