Autonomous Ground Navigation in Highly Constrained Spaces: Lessons Learned From the Benchmark Autonomous Robot Navigation Challenge at ICRA 2022 [Competitions]

Xuesu Xiao, Zifan Xu, Zizhao Wang, Yunlong Song, Garrett Warnell, P. Stone, Tingnan Zhang, Shravan Ravi, Gary Wang, Haresh Karnan, Joydeep Biswas, Nicholas Mohammad, Lauren Bramblett, Rahul Peddi, N. Bezzo, Zhanteng Xie, P. Dames
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引用次数: 10

Abstract

148 • IEEE ROBOTICS & AUTOMATION MAGAZINE • DECEMBER 2022 T he Benchmark Autonomous Robot Navigation (BARN) Challenge took place at the 2022 IEEE International Conference on Robotics and Automation (ICRA), in Philadelphia, PA, USA. The aim of the challenge was to evaluate state-ofthe-art autonomous ground navigation systems for moving robots through highly constrained environments in a safe and efficient manner. Specifically, the task was to navigate a standardized differential drive ground robot from a predefined start location to a goal location as quickly as possible without colliding with any obstacles, both in simulation and in the real world. Five teams from all over the world participated in the qualifying simu lation competition, three of which were invited to compete with one another at a set of physical obstacle courses at the conference center in Philadelphia. The competition results suggest that autonomous ground navigation in highly con strained spaces, despite seeming simple for experienced ro boticists, is actually far from being a solved problem. In this article, we discuss the challenge, the ap proaches used by the top three winning teams, and lessons learned to direct future research.
高度受限空间中的自主地面导航:ICRA 2022自主机器人导航挑战赛的经验教训
基准自主机器人导航(BARN)挑战赛在美国宾夕法尼亚州费城举行的2022年IEEE机器人与自动化国际会议(ICRA)上举行。挑战赛的目的是评估最先进的自主地面导航系统,以安全有效的方式在高度受限的环境中移动机器人。具体来说,该任务是在模拟和现实世界中,在不与任何障碍物碰撞的情况下,将标准化差动驱动地面机器人从预定义的起始位置快速导航到目标位置。来自世界各地的五支队伍参加了资格赛模拟比赛,其中三支队伍被邀请在费城会议中心的一组物理障碍训练场相互竞争。比赛结果表明,在高度受限的空间中自主地面导航,尽管对经验丰富的机器人专家来说似乎很简单,但实际上远未解决问题。在本文中,我们讨论了挑战,前三名获胜团队使用的方法,以及指导未来研究的经验教训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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