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Probabilistic Planning for Behavior-Based Robots

机译:基于行为的机器人的概率规划

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摘要

Partially Observable Markov Decision Process models (POMDPs) have been applied to low-level robot control. We show how to use POMDPs differently, namely for sensor-planning in the context of behavior-based robot systems. This is possible because solutions of POMDPs can be expressed as policy graphs, which are similar to the finite state automata that behavior-based systems use to sequence their behaviors. An advantage of our system over previous POMDP navigation systems is that it is able to find close-to-optimal plans since it plans at a higher level and thus with smaller state spaces. An advantage of our system over behavior-based systems that need to get programmed by their users is that it can optimize plans during missions and thus deal robustly with probabilistic models that are initially inaccurate.
机译:部分可观察的马尔可夫决策过程模型(POMDP)已应用于低级机器人控制。我们展示了如何以不同的方式使用POMDP,即在基于行为的机器人系统的上下文中进行传感器计划。这是可能的,因为POMDP的解决方案可以表示为策略图,类似于基于行为的系统用来对其行为进行排序的有限状态自动机。与以前的POMDP导航系统相比,我们的系统的一个优点是它能够找到接近最佳的计划,因为它是在较高级别进行计划的,因此具有较小的状态空间。与需要由用户进行编程的基于行为的系统相比,我们的系统的一个优点是,它可以在任务期间优化计划,从而可靠地处理最初不准确的概率模型。

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