论文标题
使用短期不确定性轨迹和高清图的长期预测车辆行为
Long-term Prediction of Vehicle Behavior using Short-term Uncertainty-aware Trajectories and High-definition Maps
论文作者
论文摘要
周围车辆的运动预测是自动驾驶车辆处理的最重要的任务之一,它代表了确保所有相关交通行为者安全所需的自主系统的关键步骤。最近,来自学术和工业社区的许多研究人员都集中在这个重要问题上,提出了从工程,基于规则的方法到学习的方法,这些想法在不同的预测视野中表现良好。特别是,对于长期轨迹,工程方法的表现优于竞争方法,但学到的方法已被证明是短期视野的最佳选择。在这项工作中,我们描述了如何克服这两个研究方向之间的差异,并提出了一种结合单个统一框架下不同方法的方法。所得的算法融合以原则性的方式学习,具有基于车道的路径的不确定性感知轨迹,从而在较短和长期的视野中提高了预测准确性。关于现实世界中大规模数据的实验强烈表明了所提出的统一方法的好处,该方法的表现优于现有的最新方法。此外,遵循离线评估,提出的方法已在自动驾驶车上成功测试。
Motion prediction of surrounding vehicles is one of the most important tasks handled by a self-driving vehicle, and represents a critical step in the autonomous system necessary to ensure safety for all the involved traffic actors. Recently a number of researchers from both academic and industrial communities have focused on this important problem, proposing ideas ranging from engineered, rule-based methods to learned approaches, shown to perform well at different prediction horizons. In particular, while for longer-term trajectories the engineered methods outperform the competing approaches, the learned methods have proven to be the best choice at short-term horizons. In this work we describe how to overcome the discrepancy between these two research directions, and propose a method that combines the disparate approaches under a single unifying framework. The resulting algorithm fuses learned, uncertainty-aware trajectories with lane-based paths in a principled manner, resulting in improved prediction accuracy at both shorter- and longer-term horizons. Experiments on real-world, large-scale data strongly suggest benefits of the proposed unified method, which outperformed the existing state-of-the-art. Moreover, following offline evaluation the proposed method was successfully tested onboard a self-driving vehicle.