Compact Belief State Representation for Task Planning

E. Safronov, Michele Colledanchise, L. Natale
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Abstract

Task planning in a probabilistic belief space generates complex and robust execution policies in domains affected by state uncertainty. The performance of a task planner relies on the belief space representation of the world. However, such representation becomes easily intractable as the number of variables and execution time grow. To address this problem, we developed a novel belief space representation based on the Cartesian product and union operations over belief substates. These two operations and single variable assignment nodes form And-Or directed acyclic graph of Belief States (AOBSs). We show how to apply actions with probabilistic outcomes and how to measure the probability of conditions holding true over belief states. We evaluated AOBSs performance in simulated forward state space exploration. We compared the size of AOBSs with the size of Binary Decision Diagrams (BDDs) that were previously used to represent belief state. We show that AOBSs representation more compact than a full belief state and it scales better than BDDs for most of the cases.
任务规划的紧凑信念状态表示
概率信念空间中的任务规划在受状态不确定性影响的域中生成复杂且鲁棒的执行策略。任务规划器的性能依赖于对世界的信念空间表示。然而,随着变量数量和执行时间的增长,这种表示变得很容易难以处理。为了解决这个问题,我们开发了一种基于笛卡尔积和信念子态上的并运算的信念空间表示。这两种操作和单变量分配节点构成了有向无环相信状态图(aobs)。我们展示了如何应用具有概率结果的行为,以及如何测量条件在信念状态上为真的概率。我们评估了aobs在模拟前向状态空间探索中的性能。我们将aobs的大小与以前用于表示信念状态的二元决策图(bdd)的大小进行了比较。结果表明,在大多数情况下,aobs比完全信念状态更紧凑,并且比bdd具有更好的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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