In modern society, road safety relies heavily on the psychological and physiological state of drivers. Negative factors such as fatigue, drowsiness, and stress can impair drivers' reaction time and decision making abilities, leading to an increased incidence of traffic accidents. Among the numerous studies for impaired driving detection, wearable physiological measurement is a real-time approach to monitoring a driver's state. However, currently, there are few driver physiological datasets in open road scenarios and the existing datasets suffer from issues such as poor signal quality, small sample sizes, and short data collection periods. Therefore, in this paper, a large-scale multimodal driving dataset for driver impairment detection and biometric data recognition is designed and described. The dataset contains two modalities of driving signals: six-axis inertial signals and electrocardiogram (ECG) signals, which were recorded while over one hundred drivers were following the same route through open roads during several months. Both the ECG signal sensor and the six-axis inertial signal sensor are installed on a specially designed steering wheel cover, allowing for data collection without disturbing the driver. Additionally, electrodermal activity (EDA) signals were also recorded during the driving process and will be integrated into the presented dataset soon. Future work can build upon this dataset to advance the field of driver impairment detection. New methods can be explored for integrating other types of biometric signals, such as eye tracking, to further enhance the understanding of driver states. The insights gained from this dataset can also inform the development of new driver assistance systems, promoting safer driving practices and reducing the risk of traffic accidents. The OpenDriver dataset will be publicly available soon.
翻译:在现代社会中,道路安全极大地依赖于司机的心理和生理状态。疲劳、困倦和压力等负面因素会影响司机的反应时间和决策能力,导致交通事故的发生率增加。在许多用于检测驾驶员是否有行为异常的研究中,佩戴生理测量设备是一种实时监测驾驶员状态的方法。然而,目前在开放道路环境下缺乏驾驶员生理数据集,现有数据集的信号质量较差、样本大小较小且数据收集时间较短。因此,在本文中,我们设计并描述了一个大规模多模态驾驶数据集,用于驾驶员异常检测和生物识别数据识别。该数据集包含两种驾驶信号模态:六轴惯性信号和心电图(ECG)信号,这些信号是在数百名驾驶员在数个月内同行于同一路线时记录的。心电信号和六轴惯性信号传感器都安装在一个特殊设计的方向盘套上,可以在不打扰司机的情况下进行数据采集。此外,电皮肤活动(EDA)信号也在驾驶过程中记录下来,未来将被整合到所呈现的数据集中。未来的工作可以在此数据集的基础上探索整合其他生物识别信号(例如眼球追踪)的新方法,以进一步增强对驾驶员状态的理解。从这个数据集中获取的洞察力也可以为新的驾驶辅助系统的开发提供参考,促进更安全的驾驶行为,降低交通事故的风险。OpenDriver数据集很快将公开发布。