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Learning Symbolic Representations for Planning with Parameterized Skills

机译:学习符号表示以进行参数化技能规划

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A critical capability required for generally intelligent robot behavior is the ability to sequence motor skills to reach a goal. This requires a (typically abstract) representation that supports goal-directed planning, which raises the question of how to construct such a representation. Previous work has addressed this question in the context of simple black-box motor skills, which are insufficiently flexible to support the wide range of behavior required of intelligent robots. We now extend that work to include parametrized motor skills, where a robot must both select an action to execute and also decide how to parametrize it. We show how to construct a representation suitable for planning with parametrized motor skills, and specify conditions which are sufficient to separate the selection of motor skills from the parametrization of those skills. Our method results in a simple discrete abstract representation for planning followed by a parameter selection process that operates on a fixed plan. We first demonstrate learning this representation in a virtual domain based on Angry Birds and then learn an abstract symbolic representation for a robot manipulation task.
机译:通常智能机器人行为所需的临界能力是能够序列机动技能达到目标。这需要(通常是摘要)表示,支持目标定向规划,这提出了如何构建这种表示的问题。以前的工作在简单的黑匣子电机技能的背景下解决了这个问题,这不足以支持智能机器人所需的广泛行为。我们现在扩展了该工作要包括参数化电机技能,其中机器人必须选择执行操作并决定如何参加参数化。我们展示了如何构建适合于规划参数化电机技能的表示,并指定足以将机动技能从参数化分离这些技能的条件。我们的方法导致简单的离散抽象表示,用于规划,然后在固定计划上运行的参数选择过程。我们首先在基于愤怒的鸟类的虚拟域中演示在虚拟域中学习此表示,然后学习用于机器人操作任务的抽象符号表示。

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