考虑周围车辆相互作用和不确定预测的自动驾驶决策

Constantin Hubmann, Marvin Becker, Daniel Althoff, David Lenz, C. Stiller
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引用次数: 150

摘要

自动驾驶需要在动态和不确定的环境中做出决策。预测的不确定性来自于噪声传感器数据和人类驾驶员的意图无法直接测量的事实。该问题被表述为一个部分可观察的马尔可夫决策过程(POMDP),其他车辆的意图作为隐变量。POMDP的解决方案是确定自我车辆沿着预先规划的路径的最佳加速度的策略。因此,该策略针对其他车辆的交互式概率运动模型所产生的最可能的未来场景进行了优化。考虑到未来可能对周围环境的测量,自动驾驶汽车可以将未来预测精度的估计变化纳入最优策略。紧凑的表示允许低维状态空间,以便可以在线解决不同道路布局和其他车辆数量的问题。这是通过基于点的求解器在连续状态空间上以随时方式完成的。我们通过复杂(无信号)交叉路口的仿真来展示结果。我们的方法几乎与其他车辆的意图的完整先验信息一样好,并且明显优于反应性方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision making for autonomous driving considering interaction and uncertain prediction of surrounding vehicles
Autonomous driving requires decision making in dynamic and uncertain environments. The uncertainty from the prediction originates from the noisy sensor data and from the fact that the intention of human drivers cannot be directly measured. This problem is formulated as a partially observable Markov decision process (POMDP) with the intention of the other vehicles as hidden variables. The solution of the POMDP is a policy determining the optimal acceleration of the ego vehicle along a preplanned path. Therefore, the policy is optimized for the most likely future scenarios resulting from an interactive, probabilistic motion model for the other vehicles. Considering possible future measurements of the surroundings allows the autonomous car to incorporate the estimated change in future prediction accuracy in the optimal policy. A compact representation allows a low-dimensional state-space so that the problem can be solved online for varying road layouts and number of other vehicles. This is done with a point-based solver in an anytime fashion on a continuous state-space. We show the results with simulations for the crossing of complex (unsignalized) intersections. Our approach performs nearly as good as with full prior information about the intentions of the other vehicles and clearly outperforms reactive approaches.
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