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Online Vehicle Trajectory Prediction using Policy Anticipation Network and optimization-based Context Reasoning

机译:使用政策预期网络和基于优化的上下文推理的在线车辆轨迹预测

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In this paper, we present an online two-level vehicle trajectory prediction framework for urban autonomous driving where there are complex contextual factors, such as lane geometries, road constructions, traffic regulations and moving agents. Our method combines high-level policy anticipation with low-level context reasoning. We leverage a long short-term memory (LSTM) network to anticipate the vehicle's driving policy (e.g., forward, yield, turn left, turn right, etc.) using its sequential history observations. The policy is then used to guide a low-level optimization-based context reasoning process. We show that it is essential to incorporate the prior policy anticipation due to the multimodal nature of the future trajectory. Moreover, contrary to existing regression-based trajectory prediction methods, our optimization-based reasoning process can cope with complex contextual factors. The final output of the two-level reasoning process is a continuous trajectory that automatically adapts to different traffic configurations and accurately predicts future vehicle motions. The performance of the proposed framework is analyzed and validated in an emerging autonomous driving simulation platform (CARLA).
机译:在本文中,我们在网上自主驾驶中提供了一个在线两级车辆轨迹预测框架,其中有复杂的上下文因素,如车道几何,道路结构,交通规则和移动代理。我们的方法将高级政策预期与低级别的上下文推理结合起来。我们利用长期短期内存(LSTM)网络来预测车辆的驾驶政策(例如,前进,产量,左转,右转等)。然后,策略用于指导基于低级优化的上下文推理过程。我们表明,由于未来轨迹的多模式性质,必须纳入先前的政策预期。此外,与现有的基于回归的轨迹预测方法相反,我们基于优化的推理过程可以应对复杂的上下文因素。两个级别推理过程的最终输出是一个连续的轨迹,可自动适应不同的流量配置,并准确地预测未来的车辆运动。在新兴自动驾驶仿真平台(Carla)中分析并验证了所提出的框架的性能。

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