Reasoning with occluded traffic agents is a significant open challenge for planning for autonomous vehicles. Recent deep learning models have shown impressive results for predicting occluded agents based on the behaviour of nearby visible agents; however, as we show in experiments, these models are difficult to integrate into downstream planning. To this end, we propose Bi-level Variational Occlusion Models (BiVO), a two-step generative model that first predicts likely locations of occluded agents, and then generates likely trajectories for the occluded agents. In contrast to existing methods, BiVO outputs a trajectory distribution which can then be sampled from and integrated into standard downstream planning. We evaluate the method in closed-loop replay simulation using the real-world nuScenes dataset. Our results suggest that BiVO can successfully learn to predict occluded agent trajectories, and these predictions lead to better subsequent motion plans in critical scenarios.
翻译:与隐蔽交通物剂有关的原因对自主车辆规划来说是一个重大的公开挑战。最近的深层次学习模型显示,根据附近可见物剂的行为预测隐蔽物剂的结果令人印象深刻;然而,正如我们在实验中显示的那样,这些模型难以纳入下游规划。为此,我们提议采用双级变相封闭物剂模型(BiVO),这是一个两步的基因化模型,首先预测隐蔽物剂的可能位置,然后为隐蔽物剂产生可能的轨迹。与现有方法不同,BiVO输出一种轨迹分布,然后从中取样并纳入标准下游规划。我们用真实世界核素数据集评估闭路模拟重现方法。我们的结果表明,BiVO可以成功地学会预测隐蔽物剂的轨迹,而这些预测则导致在关键情况下更好的后续运动计划。