Towards multi-modal wearable driver monitoring: Impact of road condition on driver distraction

O. Dehzangi, Cayce Williams
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引用次数: 14

Abstract

The objective of this paper is to propose initial steps towards the design of the next generation multi-modal driver monitoring platform to be facilitated in urban driving scenarios. The main novel ingredient is the adaptation of the proposed driver safety platform operation to the individual driver behavior (e.g., aggressive driving) and his/her current biological state (e.g., attention level). We have developed a robust driver monitoring platform consisting of automotive sensors (i.e. OBD-II) that capture the real-time information of the vehicle and driving behavior as well as a heterogeneous wearable body sensor network that collects the driver biometrics (e.g., electroencephalography (EEG) and electrocardiogram (ECG)). In this investigation, we intend to examine the effect of the driving condition on the driver distraction as one aspect of the driver monitoring platform. Distraction during driving has been identified as a leading cause of car accidents. Our aim is to investigate EEG-based brain biometric measures in response to driving distraction. Using our proposed driver monitoring platform, we study driver cognition under real driving task in two different road conditions including of peak and non-peak traffic periods. Five subjects are recruited in our study and their EEG signals are recorded throughout the driving experience. The experimental results illustrated that the power of theta and beta bands in the frontal cortex were substantially correlated with the road condition. Our investigations suggested that the features extracted from the time-frequency brain dynamics can be employed as statistical measures of the biometric indexes for early detection of driver distraction in real driving scenarios.
面向多模态可穿戴式驾驶员监控:路况对驾驶员注意力分散的影响
本文的目的是为下一代多模式驾驶员监控平台的设计提出初步步骤,以促进城市驾驶场景。主要的新颖成分是所提出的驾驶员安全平台操作对驾驶员个体行为(例如攻击性驾驶)及其当前生物状态(例如注意力水平)的适应性。我们开发了一个强大的驾驶员监控平台,该平台由汽车传感器(即OBD-II)组成,可捕获车辆和驾驶行为的实时信息,以及收集驾驶员生物特征(例如脑电图(EEG)和心电图(ECG))的异构可穿戴身体传感器网络。在本次调查中,我们打算研究驾驶条件对驾驶员分心的影响,作为驾驶员监控平台的一个方面。开车时分心已被确定为导致车祸的主要原因。我们的目的是研究基于脑电图的大脑生物测量对驾驶分心的反应。利用本文提出的驾驶员监控平台,研究了高峰和非高峰两种不同路况下驾驶员在真实驾驶任务下的认知。在我们的研究中招募了五名受试者,并记录了他们在整个驾驶过程中的脑电图信号。实验结果表明,额叶皮层的θ和β波段的功率与道路状况基本相关。我们的研究表明,从时频脑动力学中提取的特征可以作为生物特征指标的统计度量,用于真实驾驶场景中驾驶员分心的早期检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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