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Learning Driver Behavior Models from Traffic Observations for Decision Making and Planning

机译:从交通观察中学习驾驶员行为模型以进行决策和计划

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摘要

Estimating and predicting traffic situations over time is an essential capability for sophisticated driver assistance systems and autonomous driving. When longer prediction horizons are needed, e.g., in decision making or motion planning, the uncertainty induced by incomplete environment perception and stochastic situation development over time cannot be neglected without sacrificing robustness and safety. Building consistent probabilistic models of drivers interactions with the environment, the road network and other traffic participants poses a complex problem. In this paper, we model the decision making process of drivers by building a hierarchical Dynamic Bayesian Model that describes physical relationships as well as the driver's behaviors and plans. This way, the uncertainties in the process on all abstraction levels can be handled in a mathematically consistent way. As drivers behaviors are difficult to model, we present an approach for learning continuous, non-linear, context-dependent models for the behavior of traffic participants. We propose an Expectation Maximization (EM) approach for learning the models integrated in the DBN from unlabeled observations. Experiments show a significant improvement in estimation and prediction accuracy over standard models which only consider vehicle dynamics. Finally, a novel approach to tactical decision making for autonomous driving is outlined. It is based on a continuous Partially Observable Markov Decision Process (POMDP) that uses the presented model for prediction.
机译:对于复杂的驾驶员辅助系统和自动驾驶,随着时间的推移估算和预测交通状况是一项基本功能。当需要更长的预测范围时(例如,在决策或运动计划中),在不牺牲鲁棒性和安全性的情况下,由不完整的环境感知和随时间变化的随机情况导致的不确定性无法忽略。建立驾驶员与环境,道路网络和其他交通参与者之间相互作用的一致概率模型提出了一个复杂的问题。在本文中,我们通过建立分层的动态贝叶斯模型来对驾驶员的决策过程进行建模,该模型描述物理关系以及驾驶员的行为和计划。这样,可以以数学上一致的方式处理所有抽象级别上过程中的不确定性。由于驾驶员行为难以建模,因此我们提出了一种方法,用于学习交通参与者行为的连续,非线性,上下文相关的模型。我们提出了一种期望最大化(EM)方法,用于从未标记的观察值中学习集成在DBN中的模型。实验表明,与仅考虑车辆动力学的标准模型相比,估计和预测准确性有了显着提高。最后,概述了一种自动驾驶战术决策的新颖方法。它基于连续的部分可观察的马尔可夫决策过程(POMDP),该过程使用提出的模型进行预测。

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