Pedestrian safety has become an important research topic among various studies due to the increased number of pedestrian-involved crashes. To evaluate pedestrian safety proactively, surrogate safety measures (SSMs) have been widely used in traffic conflict-based studies as they do not require historical crashes as inputs. However, most existing SSMs were developed based on the assumption that road users would maintain constant velocity and direction. Risk estimations based on this assumption are less unstable, more likely to be exaggerated, and unable to capture the evasive maneuvers of drivers. Considering the limitations among existing SSMs, this study proposes a probabilistic framework for estimating the risk of pedestrian-vehicle conflicts at intersections. The proposed framework loosen restrictions of constant speed by predicting trajectories using a Gaussian Process Regression and accounts for the different possible driver maneuvers with a Random Forest model. Real-world LiDAR data collected at an intersection was used to evaluate the performance of the proposed framework. The newly developed framework is able to identify all pedestrian-vehicle conflicts. Compared to the Time-to-Collision, the proposed framework provides a more stable risk estimation and captures the evasive maneuvers of vehicles. Moreover, the proposed framework does not require expensive computation resources, which makes it an ideal choice for real-time proactive pedestrian safety solutions at intersections.
翻译:由于行人参与的撞车次数增多,行人安全已成为各种研究的一个重要研究课题。为了积极评价行人安全,在交通冲突研究中广泛采用代用安全措施(代用安全措施),因为它们不需要作为投入的历史撞车。不过,大多数现有的特别安全安排的制定所依据的假设是,道路使用者将保持不断的速度和方向。基于这一假设的风险评估较少不稳定,更有可能夸大,无法捕捉驾驶员的规避动作。考虑到现有的特别安全安排的局限性,本项研究提出了估算交叉路口行人与车辆冲突风险的概率框架。拟议框架通过使用高斯进程倒退预测轨迹来放宽对持续速度的限制,并计入了使用随机森林模型进行的不同可能的驾驶动作。在十字路口收集的现实世界LIDAR数据被用来评价拟议框架的绩效。新开发的框架能够查明所有行人与车辆的冲突。与时间对轨道的对比,拟议框架没有在交叉路交点上进行真正的选择,拟议框架提供了一种更稳定的机动性风险估计和机动性模型,因此需要一种更稳定的机动性车辆的机动性模型。