IEEE Trans Biomed Eng. 2019 Jun;66(6):1769-1778. doi: 10.1109/TBME.2018.2879346. Epub 2018 Nov 2.
Driver drowsiness detection is a key technology that can prevent fatal car accidents caused by drowsy driving. The present work proposes a driver drowsiness detection algorithm based on heart rate variability (HRV) analysis and validates the proposed method by comparing with electroencephalography (EEG)-based sleep scoring.
Changes in sleep condition affect the autonomic nervous system and then HRV, which is defined as an RR interval (RRI) fluctuation on an electrocardiogram trace. Eight HRV features are monitored for detecting changes in HRV by using multivariate statistical process control, which is a well known anomaly detection method.
The performance of the proposed algorithm was evaluated through an experiment using a driving simulator. In this experiment, RRI data were measured from 34 participants during driving, and their sleep onsets were determined based on the EEG data by a sleep specialist. The validation result of the experimental data with the EEG data showed that drowsiness was detected in 12 out of 13 pre-N1 episodes prior to the sleep onsets, and the false positive rate was 1.7 times per hour.
The present work also demonstrates the usefulness of the framework of HRV-based anomaly detection that was originally proposed for epileptic seizure prediction.
The proposed method can contribute to preventing accidents caused by drowsy driving.
驾驶员困倦检测是预防因困倦驾驶导致致命车祸的关键技术。本研究提出了一种基于心率变异性(HRV)分析的驾驶员困倦检测算法,并通过与基于脑电图(EEG)的睡眠评分进行比较来验证该方法。
睡眠状态的变化会影响自主神经系统,进而影响心率变异性(HRV),HRV 定义为心电图迹上 RR 间期(RRI)的波动。使用多变量统计过程控制监测 8 个 HRV 特征,以检测 HRV 的变化,多变量统计过程控制是一种众所周知的异常检测方法。
通过使用驾驶模拟器进行的实验评估了该算法的性能。在该实验中,从 34 名参与者在驾驶过程中测量 RRI 数据,并由睡眠专家根据 EEG 数据确定其睡眠开始时间。将实验数据与 EEG 数据的验证结果表明,在睡眠开始前的 13 个 N1 期前的 12 个中检测到了困倦,假阳性率为每小时 1.7 次。
本研究还证明了最初用于癫痫发作预测的基于 HRV 的异常检测框架的有用性。
该方法有助于预防因困倦驾驶导致的事故。