Sahayadhas Arun, Sundaraj Kenneth, Murugappan Murugappan
AI-Rehab Research Group, Universiti Malaysia Perlis, Kampus Pauh Putra, 02600 Arau, Malaysia.
Australas Phys Eng Sci Med. 2013 Jun;36(2):243-50. doi: 10.1007/s13246-013-0200-6. Epub 2013 May 30.
Driver drowsiness has been one of the major causes of road accidents that lead to severe trauma, such as physical injury, death, and economic loss, which highlights the need to develop a system that can alert drivers of their drowsy state prior to accidents. Researchers have therefore attempted to develop systems that can determine driver drowsiness using the following four measures: (1) subjective ratings from drivers, (2) vehicle-based measures, (3) behavioral measures and (4) physiological measures. In this study, we analyzed the various factors that contribute towards drowsiness. A total of 15 male subjects were asked to drive for 2 h at three different times of the day (00:00-02:00, 03:00-05:00 and 15:00-17:00 h) when the circadian rhythm is low. The less intrusive physiological signal measurements, ECG and EMG, are analyzed during this driving task. Statistically significant differences in the features of ECG and sEMG signals were observed between the alert and drowsy states of the drivers during different times of day. In the future, these physiological measures can be fused with vision-based measures for the development of an efficient drowsiness detection system.
驾驶员困倦一直是导致严重创伤的道路交通事故的主要原因之一,这些创伤包括身体伤害、死亡和经济损失,这凸显了开发一种能够在事故发生前提醒驾驶员困倦状态的系统的必要性。因此,研究人员试图开发能够通过以下四种方法来确定驾驶员困倦状态的系统:(1)驾驶员的主观评分;(2)基于车辆的测量方法;(3)行为测量方法;(4)生理测量方法。在本研究中,我们分析了导致困倦的各种因素。总共15名男性受试者被要求在一天中的三个不同时间段(00:00 - 02:00、03:00 - 05:00和15:00 - 17:00)驾驶2小时,这几个时间段的昼夜节律较低。在驾驶任务期间,对侵入性较小的生理信号测量值,即心电图(ECG)和肌电图(EMG)进行分析。在一天中的不同时间段,观察到驾驶员处于警觉状态和困倦状态时,心电图和表面肌电图信号特征存在统计学上的显著差异。未来,这些生理测量方法可以与基于视觉的测量方法相结合,以开发高效的困倦检测系统。