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Supervised learning of gesture-action associations for human-robot collaboration

机译:监督人体机器人协作的姿态行动协会学习

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As human-robot collaboration methodologies develop robots need to adapt fast learning methods in domestic scenarios. The paper presents a novel approach to learn associations between the human hand gestures and the robot's manipulation actions. The role of the robot is to operate as an assistant to the user. In this context we propose a supervised learning framework to explore the gesture-action space for human-robot collaboration scenario. The framework enables the robot to learn the gesture-action associations on the fly while performing the task with the user; an example of zero-shot learning. We discuss the effect of an accurate gesture detection in performing the task. The accuracy of the gesture detection system directly accounts for the amount of effort put by the user and the number of actions performed by the robot.
机译:随着人机协作方法,制定机器人需要在国内场景中适应快速学习方法。本文提出了一种新颖的学习人手势与机器人的操纵行为之间的关联方法。机器人的作用是作为用户的助手操作。在这种情况下,我们提出了一个监督的学习框架来探索人类机器人协作场景的手势行动空间。该框架使机器人能够在与用户执行任务的同时在飞行中学习手势行动关联;零射击学习的一个例子。我们讨论了准确的手势检测在执行任务时的效果。手势检测系统的准确性直接占用户所提供的努力以及机器人执行的操作数量。

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