部分可观测马尔可夫决策过程
解算器
计算机科学
趋同(经济学)
启发式
运动规划
数学优化
概率逻辑
马尔可夫决策过程
代表(政治)
加速度
状态空间
过程(计算)
马尔可夫过程
马尔可夫链
人工智能
机器学习
马尔可夫模型
数学
机器人
政治学
法学
经济增长
经济
物理
操作系统
经典力学
统计
政治
作者
Constantin Hubmann,Jens Schulz,Marvin B. Becker,Daniel Althoff,Christoph Stiller
出处
期刊:IEEE transactions on intelligent vehicles
[Institute of Electrical and Electronics Engineers]
日期:2018-01-05
卷期号:3 (1): 5-17
被引量:236
标识
DOI:10.1109/tiv.2017.2788208
摘要
Automated 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 intended route 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 surrounding cars allows the autonomous car to incorporate the estimated change in future prediction accuracy in the optimal policy. A compact representation results in a low-dimensional state-space. Thus, the problem can be solved online for varying road layouts and number of vehicles. This is done with a point-based solver in an anytime fashion on a continuous state-space. Our evaluation is threefold: At first, the convergence of the algorithm is evaluated and it is shown how the convergence can be improved with an additional search heuristic. Second, we show various planning scenarios to demonstrate how the introduction of different considered uncertainties results in more conservative planning. At the end, we show online simulations for the crossing of complex (unsignalized) intersections. We can demonstrate that 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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