Hasan Md Mahmudul, Watling Christopher N, Larue Grégoire S
Queensland University of Technology (QUT), Centre for Accident Research and Road Safety Queensland (CARRS-Q), Australia; Queensland University of Technology (QUT), Institute of Health and Biomedical Innovation (IHBI), Australia.
Queensland University of Technology (QUT), Centre for Accident Research and Road Safety Queensland (CARRS-Q), Australia; Queensland University of Technology (QUT), Institute of Health and Biomedical Innovation (IHBI), Australia.
J Safety Res. 2022 Feb;80:215-225. doi: 10.1016/j.jsr.2021.12.001. Epub 2021 Dec 13.
Drowsiness is one of the main contributors to road-related crashes and fatalities worldwide. To address this pressing global issue, researchers are continuing to develop driver drowsiness detection systems that use a variety of measures. However, most research on drowsiness detection uses approaches based on a singular metric and, as a result, fail to attain satisfactory reliability and validity to be implemented in vehicles.
This study examines the utility of drowsiness detection based on singular and a hybrid approach. This approach considered a range of metrics from three physiological signals - electroencephalography (EEG), electrooculography (EOG), and electrocardiography (ECG) - and used subjective sleepiness indices (assessed via the Karolinska Sleepiness Scale) as ground truth. The methodology consisted of signal recording with a psychomotor vigilance test (PVT), pre-processing, extracting, and determining the important features from the physiological signals for drowsiness detection. Finally, four supervised machine learning models were developed based on the subjective sleepiness responses using the extracted physiological features to detect drowsiness levels.
The results illustrate that the singular physiological measures show a specific performance metric pattern, with higher sensitivity and lower specificity or vice versa. In contrast, the hybrid biosignal-based models provide a better performance profile, reducing the disparity between the two metrics.
The outcome of the study indicates that the selected features provided higher performance in the hybrid approaches than the singular approaches, which could be useful for future research implications. Practical Applications: Use of a hybrid approach seems warranted to improve in-vehicle driver drowsiness detection system. Practical applications will need to consider factors such as intrusiveness, ergonomics, cost-effectiveness, and user-friendliness of any driver drowsiness detection system.
嗜睡是全球道路交通事故及死亡的主要原因之一。为解决这一紧迫的全球性问题,研究人员不断开发采用多种测量方法的驾驶员嗜睡检测系统。然而,大多数嗜睡检测研究采用基于单一指标的方法,因此未能获得令人满意的可靠性和有效性,无法在车辆中实施。
本研究考察基于单一方法和混合方法的嗜睡检测效用。该方法考虑了来自三种生理信号——脑电图(EEG)、眼电图(EOG)和心电图(ECG)——的一系列指标,并使用主观嗜睡指数(通过卡罗林斯卡嗜睡量表评估)作为基准事实。该方法包括通过精神运动警觉性测试(PVT)进行信号记录、预处理、提取以及从生理信号中确定用于嗜睡检测的重要特征。最后,基于提取的生理特征,利用主观嗜睡反应开发了四个监督机器学习模型,以检测嗜睡程度。
结果表明,单一生理测量显示出特定的性能指标模式,敏感性较高但特异性较低,反之亦然。相比之下,基于混合生物信号的模型提供了更好的性能概况,减少了两个指标之间的差异。
研究结果表明,所选特征在混合方法中比单一方法具有更高的性能,这可能对未来的研究具有重要意义。实际应用:采用混合方法似乎有必要来改进车载驾驶员嗜睡检测系统。实际应用需要考虑任何驾驶员嗜睡检测系统诸如侵入性、人体工程学、成本效益和用户友好性等因素。