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Detection of Driver Drowsiness Using Wavelet Analysis of Heart Rate Variability and a Support Vector Machine Classifier

机译:基于心率变异性的小波分析和支持向量机分类器的驾驶员困倦检测

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Driving while fatigued is just as dangerous as drunk driving and may result in car accidents. Heart rate variability (HRV) analysis has been studied recently for the detection of driver drowsiness. However, the detection reliability has been lower than anticipated, because the HRV signals of drivers were always regarded as stationary signals. The wavelet transform method is a method for analyzing non-stationary signals. The aim of this study is to classify alert and drowsy driving events using the wavelet transform of HRV signals over short time periods and to compare the classification performance of this method with the conventional method that uses fast Fourier transform (FFT)-based features. Based on the standard shortest duration for FFT-based short-term HRV evaluation, the wavelet decomposition is performed on 2-min HRV samples, as well as 1-min and 3-min samples for reference purposes. A receiver operation curve (ROC) analysis and a support vector machine (SVM) classifier are used for feature selection and classification, respectively. The ROC analysis results show that the wavelet-based method performs better than the FFT-based method regardless of the duration of the HRV sample that is used. Finally, based on the real-time requirements for driver drowsiness detection, the SVM classifier is trained using eighty FFT and wavelet-based features that are extracted from 1-min HRV signals from four subjects. The averaged leave-one-out (LOO) classification performance using wavelet-based feature is 95% accuracy, 95% sensitivity, and 95% specificity. This is better than the FFT-based results that have 68.8% accuracy, 62.5% sensitivity, and 75% specificity. In addition, the proposed hardware platform is inexpensive and easy-to-use.
机译:疲劳驾驶时与酒后驾驶一样危险,并可能导致交通事故。最近已对心率变异性(HRV)分析进行了研究,以检测驾驶员的睡意。但是,由于驾驶员的HRV信号始终被视为固定信号,因此检测可靠性一直低于预期。小波变换方法是一种用于分析非平稳信号的方法。这项研究的目的是使用HRV信号在短时间内的小波变换对警报和困倦驾驶事件进行分类,并将该方法的分类性能与使用基于快速傅里叶变换(FFT)的功能的常规方法进行比较。基于基于FFT的短期HRV评估的标准最短持续时间,对2分钟的HRV样本以及1分钟和3分钟的样本进行小波分解,以供参考。接收器操作曲线(ROC)分析和支持向量机(SVM)分类器分别用于特征选择和分类。 ROC分析结果表明,无论使用HRV样本的持续时间如何,基于小波的方法都比基于FFT的方法执行得更好。最后,根据驾驶员睡意检测的实时要求,使用80个FFT和基于小波的特征对SVM分类器进行训练,这些特征是从四个对象的1分钟HRV信号中提取的。使用基于小波的特征的平均留一出(LOO)分类性能为95%准确度,95%灵敏度和95%特异性。这要优于基于FFT的结果,该结果具有68.8%的准确性,62.5%的灵敏度和75%的特异性。另外,所提出的硬件平台便宜且易于使用。

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