Road user behavior prediction is one of the most critical components in trajectory planning for autonomous driving, especially in urban scenarios involving traffic signals. In this paper, a hierarchical framework is proposed to predict vehicle behaviors at a signalized intersection, using the traffic signal information of the intersection. The framework is composed of two phases: a discrete intention prediction phase and a continuous trajectory prediction phase. In the discrete intention prediction phase, a Bayesian network is adopted to predict the vehicle's high-level intention, after that, maximum entropy inverse reinforcement learning is utilized to learn the human driving model offline; during the online trajectory prediction phase, a driver characteristic is designed and updated to capture the different driving preferences between human drivers. We applied the proposed framework to one of the most challenging scenarios in autonomous driving: the yellow light running scenario. Numerical experiment results are presented in the later part of the paper which show the viability of the method. The accuracy of the Bayesian network for discrete intention prediction is 91.1%, and the prediction results are getting more and more accurate as the yellow time elapses. The average Euclidean distance error in continuous trajectory prediction is only 0.85 m in the yellow light running scenario.
翻译:道路使用者行为预测是自主驾驶轨迹规划的最关键组成部分之一,特别是在涉及交通信号的城市假设情景中。本文件建议采用分级框架,利用十字路口的交通信号信息预测车辆在信号十字路口的行为。框架由两个阶段组成:离散意图预测阶段和连续轨迹预测阶段。在离散意图预测阶段,采用贝叶斯网络预测车辆的高水平意图,此后,利用最大反向反向强化学习来学习人类驾驶模型离线;在在线轨迹预测阶段,设计并更新驱动特征,以捕捉人类驾驶者之间的不同驾驶偏好。我们将拟议框架应用于自主驾驶中最具挑战性的一种情景:黄色光运行情景。数字实验结果见于显示方法可行性的论文后一部分。巴伊斯网络对离散意图预测的精确度为91.1%,而预测结果随着黄色时间的折叠而越来越准确。连续轨迹预测中的平均远距差只有0.85米。