Adaptive Individual-Level Cognitive Driving Anomaly Detection Model Exclusively Using BSMs

Di Wu, Shuang Z. Tu, Robert W. Whalin, Li Zhang
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Abstract

Detecting drivers’ cognitive states poses a substantial challenge. In this context, cognitive driving anomalies have generally been regarded as stochastic disturbances. To the best of the author’s knowledge, existing safety studies in the realm of human Driving Anomaly Detection (DAD) utilizing vehicle trajectories have predominantly been conducted at an aggregate level, relying on data aggregated from multiple drivers or vehicles. However, to gain a more nuanced understanding of driving behavior at the individual level, a more detailed and granular approach is essential. To bridge this gap, we developed a Data Anomaly Detection (DAD) model designed to assess a driver’s cognitive abnormal driving status at the individual level, relying solely on Basic Safety Message (BSM) data. Our DAD model comprises both online and offline components, each of which analyzes historical and real-time Basic Safety Messages (BSMs) sourced from connected vehicles (CVs). The training data for the DAD model consist of historical BSMs collected from a specific CV over the course of a month, while the testing data comprise real-time BSMs collected at the scene. By shifting our focus from aggregate-level analysis to individual-level analysis, we believe that the DAD model can significantly contribute to a more comprehensive comprehension of driving behavior. Furthermore, when combined with a Conflict Identification (CIM) model, the DAD model has the potential to enhance the effectiveness of Advanced Driver Assistance Systems (ADAS), particularly in terms of crash avoidance capabilities. It is important to note that this paper is part of our broader research initiative titled “Automatic Safety Diagnosis in the Connected Vehicle Environment”, which has received funding from the Southeastern Transportation Research, Innovation, Development, and Education Center.
基于bsm的自适应个体认知驾驶异常检测模型
检测驾驶员的认知状态是一个巨大的挑战。在这种情况下,认知驾驶异常通常被认为是随机干扰。据笔者所知,利用车辆轨迹进行的人类驾驶异常检测(DAD)领域的现有安全研究主要是在总体水平上进行的,依赖于来自多个驾驶员或车辆的汇总数据。然而,为了在个人层面上更细致地理解驾驶行为,一种更详细、更细致的方法是必不可少的。为了弥补这一差距,我们开发了一种数据异常检测(DAD)模型,旨在仅依靠基本安全信息(BSM)数据,在个人层面评估驾驶员的认知异常驾驶状态。我们的DAD模型包括在线和离线组件,每个组件都分析来自联网车辆(cv)的历史和实时基本安全信息(BSMs)。DAD模型的训练数据包括在一个月内从特定简历中收集的历史bsm,而测试数据包括在现场收集的实时bsm。通过将我们的重点从总体层面的分析转移到个体层面的分析,我们相信DAD模型可以显著地促进对驾驶行为的更全面的理解。此外,当与冲突识别(CIM)模型相结合时,DAD模型有可能提高高级驾驶员辅助系统(ADAS)的有效性,特别是在避免碰撞能力方面。值得注意的是,本文是我们更广泛的研究计划的一部分,名为“联网车辆环境中的自动安全诊断”,该计划已获得东南交通研究、创新、发展和教育中心的资助。
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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