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Experience-Based Planning Domains: an Integrated Learning and Deliberation Approach for Intelligent Robots

机译:基于经验的计划领域:智能机器人的集成学习和思考方法

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Deliberation and learning are required to endow a robot with the capabilities for acquiring knowledge, performing a variety of tasks and interactions, and adapting to open-ended environments. This paper presents the notion of experience-based planning domains (EBPDs) for task level learning and planning in robotics. EBPDs provide methods for a robot to: (i) obtain robot activity experiences from the robot's performance in a dynamic environment; (ii) conceptualize each experience producing an activity schema; and (iii) exploit the learned activity schemata to make plans in similar situations. Experiences are episodic descriptions of plan-based robot activities including environment perception, sequences of applied actions and achieved tasks. The conceptualization approach integrates different techniques including deductive generalization, abstraction, goal inference and feature extraction. A high-level task planner was developed to find a solution for a task by following an activity schema. The proposed approach is illustrated and evaluated in a restaurant environment where a service robot learns how to carry out complex tasks.
机译:为了使机器人具备获取知识,执行各种任务和交互以及适应开放式环境的能力,需要进行思考和学习。本文提出了基于经验的计划域(EBPD)的概念,用于机器人技术中的任务级学习和计划。 EBPD为机器人提供了以下方法:(i)从机器人在动态环境中的表现中获得机器人活动经验; (ii)概念化每项产生活动图式的经验; (iii)利用学习到的活动模式来制定类似情况下的计划。经验是对基于计划的机器人活动的情景描述,包括环境感知,所应用的动作序列和已完成的任务。概念化方法集成了各种技术,包括演绎概括,抽象,目标推断和特征提取。开发了一个高级任务计划程序,以通过遵循活动模式来找到任务的解决方案。在餐厅机器人服务人员学习如何执行复杂任务的环境中,对提出的方法进行了说明和评估。

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