论文标题
使用序列到序列复发的神经网络在交叉点上识别车辆冲突识别的轨迹预测
Trajectory Prediction for Vehicle Conflict Identification at Intersections Using Sequence-to-Sequence Recurrent Neural Networks
论文作者
论文摘要
冲突指标形式的替代安全措施是主动交通安全工具箱必不可少的组成部分。冲突指标可以分为过去基于第一个设备的冲突和预测的基于trajectory的冲突。尽管对以前的冲突类别的计算是确定性和明确的,但后者类别是使用预测的车辆轨迹计算的,因此更加随机。因此,基于预测的冲突的准确性取决于使用的轨迹预测算法的准确性。轨迹预测可能是一项具有挑战性的任务,尤其是在车辆操纵不同的交叉点。此外,由于与道路用户轨迹提取管道有关的限制,冲突分析期间车辆的准确几何表示是一项艰巨的任务。虚假陈述的几何形状扭曲了观察到的车辆之间的实际距离。在这项研究中,提出了一种基于预测的冲突识别方法。开发了一个序列到序列的复发性神经网络,以依次预测未来的车辆轨迹长达3秒。此外,提出的网络是使用CitySim数据集培训的,以预测未来的车辆位置和标题,以促进对未来边界框的预测,从而保持准确的车辆几何形式表示。经过实验确定的是,所提出的方法优于在交叉路口进行冲突分析的常用轨迹预测模型。使用车辆边界框与常用的车辆中心点进行几何表示之间的比较(TTC)冲突识别之间的比较。与边界框方法相比,中心点方法通常无法识别TTC冲突或低估其严重性。
Surrogate safety measures in the form of conflict indicators are indispensable components of the proactive traffic safety toolbox. Conflict indicators can be classified into past-trajectory-based conflicts and predicted-trajectory-based conflicts. While the calculation of the former class of conflicts is deterministic and unambiguous, the latter category is computed using predicted vehicle trajectories and is thus more stochastic. Consequently, the accuracy of prediction-based conflicts is contingent on the accuracy of the utilized trajectory prediction algorithm. Trajectory prediction can be a challenging task, particularly at intersections where vehicle maneuvers are diverse. Furthermore, due to limitations relating to the road user trajectory extraction pipelines, accurate geometric representation of vehicles during conflict analysis is a challenging task. Misrepresented geometries distort the real distances between vehicles under observation. In this research, a prediction-based conflict identification methodology was proposed. A sequence-to-sequence Recurrent Neural Network was developed to sequentially predict future vehicle trajectories for up to 3 seconds ahead. Furthermore, the proposed network was trained using the CitySim Dataset to forecast both future vehicle positions and headings to facilitate the prediction of future bounding boxes, thus maintaining accurate vehicle geometric representations. It was experimentally determined that the proposed method outperformed frequently used trajectory prediction models for conflict analysis at intersections. A comparison between Time-to-Collision (TTC) conflict identification using vehicle bounding boxes versus the commonly used vehicle center points for geometric representation was conducted. Compared to the bounding box method, the center point approach often failed to identify TTC conflicts or underestimated their severity.