Planning with movable obstacles in continuous environments with uncertain dynamics

Robotics and Automation(2013)

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摘要
In this paper we present a decision theoretic planner for the problem of Navigation Among Movable Obstacles (NAMO) operating under conditions faced by real robotic systems. While planners for the NAMO domain exist, they typically assume a deterministic environment or rely on discretization of the configuration and action spaces, preventing their use in practice. In contrast, we propose a planner that operates in real-world conditions such as uncertainty about the parameters of workspace objects and continuous configuration and action (control) spaces. To achieve robust NAMO planning despite these conditions, we introduce a novel integration of Monte Carlo simulation with an abstract MDP construction. We present theoretical and empirical arguments for time complexity linear in the number of obstacles as well as a detailed implementation and examples from a dynamic simulation environment.
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关键词
Monte Carlo methods,collision avoidance,computational complexity,decision theory,robot dynamics,Monte Carlo simulation,NAMO domain,NAMO planning,abstract MDP construction,action spaces,continuous environments,decision theoretic planner,deterministic environment,dynamic simulation environment,linear time complexity,movable obstacle planning,navigation among movable obstacles,real robotic systems,real-world conditions,uncertain dynamics,workspace object configuration
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