交互式机器人视觉空间技能学习

S. Ahmadzadeh, Petar Kormushev, D. Caldwell
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引用次数: 4

摘要

本文提出了一种新的交互式机器人视觉空间学习方法。它允许机器人在与人类护理人员互动时通过观察演示来获得新的能力。大多数现有的来自演示方法的学习都集中在轨迹上,而在我们的方法中,重点放在实现相对于另一个对象的期望目标配置上。我们的方法是基于视觉感知,捕捉每个演示动作的对象上下文。上下文隐含地体现了视觉空间表示,包括对象同时相对于多个其他对象的相对位置。所提出的方法能够学习和推广不同的技能,如对象重构、分类和轮流交互。机器人通过一次演示学习实现目标,同时对环境的先验知识要求最低。我们用巴雷特WAM机器人的四个真实世界实验来说明我们的方法的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive robot learning of visuospatial skills
This paper proposes a novel interactive robot learning approach for acquiring visuospatial skills. It allows a robot to acquire new capabilities by observing a demonstration while interacting with a human caregiver. Most existing learning from demonstration approaches focus on the trajectories, whereas in our approach the focus is placed on achieving a desired goal configuration of objects relative to one another. Our approach is based on visual perception which captures the object's context for each demonstrated action. The context embodies implicitly the visuospatial representation including the relative positioning of the object with respect to multiple other objects simultaneously. The proposed approach is capable of learning and generalizing different skills such as object reconfiguration, classification, and turn-taking interaction. The robot learns to achieve the goal from a single demonstration while requiring minimum a priori knowledge about the environment. We illustrate the capabilities of our approach using four real world experiments with a Barrett WAM robot.
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