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Real-time hierarchical POMDPs for autonomous robot navigation

机译:用于自主机器人导航的实时分层POMDP

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This paper proposes a new hierarchical formulation of POMDPs for autonomous robot navigation that can be solved in real-time, and is memory efficient. It will be referred to in this paper as the Robot Navigation-Hierarchical POMDP (RN-HPOMDP). The RN-HPOMDP is utilized as a unified framework for autonomous robot navigation in dynamic environments. As such, it is used for localization, planning and local obstacle avoidance. Hence, the RN-HPOMDP decides at each time step the actions the robot should execute, without the intervention of any other external module for obstacle avoidance or localization. Our approach employs state space and action space hierarchy, and can effectively model large environments at a fine resolution. Finally, the notion of the reference POMDP is introduced. The latter holds all the information regarding motion and sensor uncertainty, which makes the proposed hierarchical structure memory efficient and enables fast learning. The RN-HPOMDP has been experimentally validated in real dynamic environments.
机译:本文提出了一种用于自动化机器人导航的POMDP的新层次结构,该结构可以实时解决,并且具有存储效率。在本文中将其称为机器人导航层次POMDP(RN-HPOMDP)。 RN-HPOMDP用作动态环境中自主机器人导航的统一框架。因此,它用于定位,计划和避免局部障碍。因此,RN-HPOMDP在每个时间步长上决定机器人应执行的动作,而无需其他任何外部模块的干预来避免或定位障碍物。我们的方法采用状态空间和动作空间层次结构,并且可以在高分辨率下有效地对大型环境进行建模。最后,介绍了参考POMDP的概念。后者保存了有关运动和传感器不确定性的所有信息,这使所提出的分层结构内存高效并能够快速学习。 RN-HPOMDP已在真实动态环境中进行了实验验证。

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