论文标题

使用模仿学习和力量控制的可推广的人类机器人协作组装

Generalizable Human-Robot Collaborative Assembly Using Imitation Learning and Force Control

论文作者

Jha, Devesh K., Jain, Siddarth, Romeres, Diego, Yerazunis, William, Nikovski, Daniel

论文摘要

机器人一直在稳步增加我们在我们日常生活中的存在,在那里他们可以与人类一起工作,以在行业楼层,办公室和家中提供各种任务。自动组装是机器人的关键应用之一,下一代组装系统可能会通过创建协作人类机器人系统来提高效率。但是,尽管协作机器人已经存在数十年了,但它们在真正的协作系统中的应用是有限的。这是因为真正的协作人类机器人系统需要根据人类行动的不确定性和不确定性,确保在互动期间的安全性等调整其操作。在本文中,我们提出了一种使用示范和姿势估计的人类与人类协作组装系统的系统,以便机器人可以适应人类的行动引起的不确定性。从演示中学习用于根据基于深度学习的视力系统的不同目标位置的姿势估算来为机器人生成运动轨迹。在协作的人类机器人组装方案中,使用物理6 DOF操纵器进行了拟议的系统。我们通过各种实验显示了系统操作对最初和最终目标位置变化的成功概括。

Robots have been steadily increasing their presence in our daily lives, where they can work along with humans to provide assistance in various tasks on industry floors, in offices, and in homes. Automated assembly is one of the key applications of robots, and the next generation assembly systems could become much more efficient by creating collaborative human-robot systems. However, although collaborative robots have been around for decades, their application in truly collaborative systems has been limited. This is because a truly collaborative human-robot system needs to adjust its operation with respect to the uncertainty and imprecision in human actions, ensure safety during interaction, etc. In this paper, we present a system for human-robot collaborative assembly using learning from demonstration and pose estimation, so that the robot can adapt to the uncertainty caused by the operation of humans. Learning from demonstration is used to generate motion trajectories for the robot based on the pose estimate of different goal locations from a deep learning-based vision system. The proposed system is demonstrated using a physical 6 DoF manipulator in a collaborative human-robot assembly scenario. We show successful generalization of the system's operation to changes in the initial and final goal locations through various experiments.

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