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Demonstration-Guided Motion Planning

机译:示范导向运动规划

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We present demonstration-guided motion planning (DGMP), a new frame-work for planning motions for personal robots to perform household tasks. DGMP combines the strengths of sampling-based motion planning and robot learning from demonstrations to generate plans that (1) avoid novel obstacles in cluttered environments, and (2) learn and maintain critical aspects of the motion required to successfully accomplish a task. Sampling-based motion planning methods are highly effective at computing paths from start to goal configurations that avoid obstacles, but task constraints (e.g. a glass of water must be held upright to avoid a spill) must be explicitly enumerated and programmed. Instead, we use a set of expert demonstrations and automatically extract time-dependent task constraints by learning low variance aspects of the demonstrations, which are correlated with the task constraints. We then introduce multi-component rapidly-exploring roadmaps (MC-RRM), a sampling-based method that incrementally computes a motion plan that avoids obstacles and optimizes a learned cost metric. We demonstrate the effectiveness of DGMP using the Aldebaran Nao robot performing household tasks in a cluttered environment, including moving a spoon full of sugar from a bowl to a cup and cleaning the surface of a table.
机译:我们展示了示范导向运动计划(DGMP),这是一个新的框架工作,用于为个人机器人进行个人机器人进行家庭任务的计划。 DGMP将基于采样的运动规划和机器人学习的优势与演示中的策略结合起来生成(1)避免杂乱环境中的新障碍物,(2)学习和维护成功完成任务所需的运动的关键方面。基于采样的运动规划方法在从开始到避免障碍物的目标配置中的计算路径非常有效,但是必须明确列举和编程任务约束(例如,必须保持避免溢出的一杯水)。相反,我们使用一组专家演示并通过学习演示的低方差方面自动提取时间依赖的任务约束,这与任务约束相关联。然后,我们引入多组分快速探索路线图(MC-RRM),一种基于采样的方法,可以逐步计算避免障碍物的运动计划,并优化学习的成本度量。我们展示了DGMP使用Aldebaran Nao机器人在杂乱的环境中执行家庭任务的有效性,包括将勺子从碗中从碗中移动到杯子并清洁桌子的表面。

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