RoSTAR: ROS-based Telerobotic Control via Augmented Reality

Chung Xue Er Shamaine, Yuansong Qiao, John Henry, Ken McNevin, Niall Murray
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引用次数: 7

Abstract

Real world virtual world communication and interaction will be a cornerstone of future intelligent manufacturing ecosystems. Human robotic interaction is considered to be the basic element of factories of the future. Despite the advancement of different technologies such as wearables and Augmented Reality (AR), human-robot interaction (HRI) is still extremely challenging. Whilst progress has been made in the development of different mechanisms to support HRI, there are issues with cost, naturalistic and intuitive interaction, and communication across heterogeneous systems. To mitigate these limitations, RoSTAR is proposed. RoSTAR is a novel open-source HRI system based on the Robot Operating System (ROS) and Augmented Reality. An AR Head Mounted Display (HMD) is deployed. It enables the user to interact and communicate through a ROS powered robotic arm. A model of the robot arm is imported directly into the Unity Game engine, and any interactions with this virtual robotic arm are communicated to the ROS robotic arm. This system has the potential to be used for different process tasks, such as robotic gluing, dispensing and arc welding as part of an interoperable, low cost, portable and naturalistically interactive experience.
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RoSTAR:基于ros的远程机器人控制通过增强现实
现实世界与虚拟世界的交流与互动将成为未来智能制造生态系统的基石。人机交互被认为是未来工厂的基本要素。尽管可穿戴设备和增强现实(AR)等不同技术取得了进步,但人机交互(HRI)仍然极具挑战性。虽然在支持HRI的不同机制的开发方面取得了进展,但仍存在成本、自然和直观的交互以及跨异构系统的通信等问题。为了减轻这些限制,提出了RoSTAR。RoSTAR是一种基于机器人操作系统(ROS)和增强现实技术的新型开源HRI系统。部署AR头戴式显示器(HMD)。它使用户能够通过ROS驱动的机械臂进行交互和通信。机器人手臂的模型被直接导入到Unity Game引擎中,与这个虚拟机器人手臂的任何交互都被传达给ROS机器人手臂。该系统有潜力用于不同的工艺任务,如机器人上胶、点胶和弧焊,作为可互操作、低成本、便携和自然互动体验的一部分。
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