In this paper, we present LookOut, a novel autonomy system that perceives the environment, predicts a diverse set of futures of how the scene might unroll and estimates the trajectory of the SDV by optimizing a set of contingency plans over these future realizations. In particular, we learn a diverse joint distribution over multi-agent future trajectories in a traffic scene that covers a wide range of future modes with high sample efficiency while leveraging the expressive power of generative models. Unlike previous work in diverse motion forecasting, our diversity objective explicitly rewards sampling future scenarios that require distinct reactions from the self-driving vehicle for improved safety. Our contingency planner then finds comfortable and non-conservative trajectories that ensure safe reactions to a wide range of future scenarios. Through extensive evaluations, we show that our model demonstrates significantly more diverse and sample-efficient motion forecasting in a large-scale self-driving dataset as well as safer and less-conservative motion plans in long-term closed-loop simulations when compared to current state-of-the-art models.
翻译:在本文中,我们介绍“LookOut”,这是一个新颖的自主系统,它能对环境产生感知,预测一系列不同的未来未来景象,通过优化一套未来实现的应急计划来预测SDV的轨迹。特别是,我们学习了对交通场多试剂未来轨迹的不同联合分布,该轨迹涵盖广泛的未来模式,具有高采样效率,同时利用基因模型的表达力。与以往在不同运动预测中的工作不同,我们的多样性目标明确奖励了未来情景的抽样,这些情景需要与自我驾驶工具的不同反应才能改善安全。我们的应急计划设计者随后发现舒适和非保守的轨迹,以确保对广泛的未来情景做出安全反应。通过广泛的评估,我们表明我们的模型显示,在长期闭环模拟中,在大规模自我驱动的数据集中,以及在与目前的状态模型相比,更安全、更不那么保守的远程模拟中,我们的模型显示了更多样化和抽样高效的动作预测。