MIT Multi-Robot Mapping Sets New “Gold Standard”

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MIT Multi-Robot Mapping Sets New “Gold Standard”



This article is a part of our unique IEEE Journal Watch collection in partnership with IEEE Xplore.

Does your robotic know the place it’s proper now? Does it? Are you certain? And what about all of its robotic pals, do they know the place they’re too? This is essential. So essential, in actual fact, that some would say that multi-robot simultaneous localization and mapping (SLAM) is an important functionality to acquire well timed situational consciousness over massive areas. Those some could be a bunch of MIT roboticists who simply gained the IEEE Transactions on Robotics Best Paper Award for 2022, offered at this 12 months’s IEEE International Conference on Robotics and Automation (ICRA 2023) in London. Congratulations!


Out of greater than 200 papers revealed in Transactions on Robotics final 12 months, reviewers and editors voted to award the 2022 IEEE Transactions on Robotics King-Sun Fu Memorial Best Paper Award to Yulun Tian, Yun Chang, Fernando Herrera Arias, Carlos Nieto-Granda, Jonathan P. How, and Luca Carlone from MIT for his or her paper Kimera-Multi: Robust, Distributed, Dense Metric-Semantic SLAM for Multi-Robot Systems.

“The editorial board, and the reviewers, were deeply impressed by the theoretical elegance and practical relevance of this paper and the open-source code that accompanies it. Kimera-Multi is now the gold-standard for distributed multi-robot SLAM.”
—Kevin Lynch, editor-in-chief, IEEE Transactions on Robotics

Robots depend on simultaneous localization and mapping to know the place they’re in unknown environments. But unknown environments are an enormous place, and it takes a couple of robotic to discover all of them. If you ship a complete crew of robots, every of them can discover their very own little bit, after which share what they’ve discovered with one another to make a a lot larger map that they’ll all benefit from. Like most issues robotic, that is a lot simpler mentioned than completed, which is why Kimera-Multi is so helpful and essential. The award-winning researchers say that Kimera-Multi is a distributed system that runs domestically on a bunch of robots unexpectedly. If one robotic finds itself in communications vary with one other robotic, they’ll share map information, and use these information to construct and enhance a globally constant map that features semantic annotations.

Since filming the above video, the researchers have completed real-world assessments with Kimera-Multi. Below is an instance of the map generated by three robots as they journey a complete of greater than two kilometers. You can simply see how the accuracy of the map improves considerably because the robots speak to one another:

More particulars and code can be found on GitHub.

T-RO additionally chosen some wonderful Honorable Mentions for 2022, that are:

Stabilization of Complementarity Systems by way of Contact-Aware Controllers, by Alp Aydinoglu, Philip Sieg, Victor M. Preciado, and Michael Posa

Autonomous Cave Surveying With an Aerial Robot, by Wennie Tabib, Kshitij Goel, John Yao, Curtis Boirum, and Nathan Michael

Prehensile Manipulation Planning: Modeling, Algorithms and Implementation, by Florent Lamiraux and Joseph Mirabel

Rock-and-Walk Manipulation: Object Locomotion by Passive Rolling Dynamics and Periodic Active Control, by Abdullah Nazir, Pu Xu, and Jungwon Seo

Origami-Inspired Soft Actuators for Stimulus Perception and Crawling Robot Applications, by Tao Jin, Long Li, Tianhong Wang, Guopeng Wang, Jianguo Cai, Yingzhong Tian, and Quan Zhang

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