首页> 外文会议>5th International Conference on Autonomous Agents, 5th, May 28 - Jun 1, 2001, Montreal, Canada >Learning Structured Reactive Navigation Plans from Executing MDP Navigation Policies
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Learning Structured Reactive Navigation Plans from Executing MDP Navigation Policies

机译:从执行MDP导航策略中学习结构化的反应式导航计划

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Autonomous robots, such as robot office couriers, need navigation routines that support flexible task execution and effective action planning. This paper describes XfrmLearn, a system that learns structured symbolic navigation plans. Given a navigation task, XfrmLearn learns to structure continuous navigation behavior and represents the learned structure as compact and transparent plans. The structured plans are obtained by starting with monolithical default plans that are optimized for average performance and adding subplans to improve the navigation performance for the given task. Compactness is achieved by incorporating only subplans that achieve significant performance gains. The resulting plans support action planning and opportunistic task execution. XfrmLearn is implemented and extensively evaluated on an autonomous mobile robot.
机译:诸如机器人办公室快递员之类的自主机器人需要导航例程,以支持灵活的任务执行和有效的行动计划。本文介绍了XfrmLearn,这是一个学习结构化符号导航计划的系统。给定导航任务,XfrmLearn将学习构造连续的导航行为,并将学习到的结构表示为紧凑且透明的计划。通过从针对平均性能进行了优化的单片默认计划开始,并添加子计划以提高给定任务的导航性能,可以获得结构化计划。通过仅合并可实现显着性能提升的子计划来实现紧凑性。产生的计划支持行动计划和机会任务执行。 XfrmLearn是在自动移动机器人上实施和广泛评估的。

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