Risk assessment of roadways is commonly practiced based on historical crash data. Information on driver behaviors and real-time traffic situations is sometimes missing. In this paper, the Safe Route Mapping (SRM) model, a methodology for developing dynamic risk heat maps of roadways, is extended to consider driver behaviors when making predictions. An Android App is designed to gather drivers' information and upload it to a server. On the server, facial recognition extracts drivers' data, such as facial landmarks, gaze directions, and emotions. The driver's drowsiness and distraction are detected, and driving performance is evaluated. Meanwhile, dynamic traffic information is captured by a roadside camera and uploaded to the same server. A longitudinal-scanline-based arterial traffic video analytics is applied to recognize vehicles from the video to build speed and trajectory profiles. Based on these data, a LightGBM model is introduced to predict conflict indices for drivers in the next one or two seconds. Then, multiple data sources, including historical crash counts and predicted traffic conflict indicators, are combined using a Fuzzy logic model to calculate risk scores for road segments. The proposed SRM model is illustrated using data collected from an actual traffic intersection and a driving simulation platform. The prediction results show that the model is accurate, and the added driver behavior features will improve the model's performance. Finally, risk heat maps are generated for visualization purposes. The authorities can use the dynamic heat map to designate safe corridors and dispatch law enforcement and drivers for early warning and trip planning.
翻译:对道路的风险评估通常根据历史坠毁数据进行。 有关司机行为和实时交通状况的信息有时会丢失。 在本文中, 安全路线绘图模型(SRM)模型, 用于绘制道路动态风险热图的方法, 用于在作出预测时考虑司机行为。 Android App 旨在收集司机信息并将其上传到服务器。 在服务器上, 面部识别提取驱动数据, 如面部标志、 凝视方向和情绪等。 检测司机的潜伏和分散注意力, 并评估驾驶性能。 同时, 动态交通信息被路边摄像头捕获, 并上传到同一个服务器上。 基于纵向扫描的动向交通模型视频分析, 用于识别视频中的车辆以建立速度和轨迹图。 根据这些数据, 引入了一个 LightGBM 模型, 用于预测下一或两秒钟的司机冲突指数。 然后, 多个数据源, 包括历史坠毁记录和预测的交通冲突指标, 并使用Fuzz 逻辑模型来计算路段的风险分数。 一种基于纵向扫描的动向路段的交通影像图, 视频视频视频视频分析分析分析分析分析, 将最终用SRMRM 模型和驱动图显示结果, 演示结果, 演示结果, 演示结果, 分析结果, 预演算出一个数据, 预演算结果, 预演算结果。