A robust approach to high‐speed navigation for unrehearsed desert terrain
Chris Urmson, Charlie Ragusa, David C. Ray, Joshua Anhalt, Daniel Bartz, Tugrul Galatali, Josh Johnston, Sam Harbaugh, Hiroki “Yu” Kato, William Messner, Nick Miller, Kevin Peterson, Bryon M. Smith, Jarrod Snider, Spencer Spiker, Jason Ziglar, William “Red” Whittaker, Michael Clark, Phillip L. Koon, Aaron Mosher
- 发表年份
- 2006
- 引用次数
- 142
摘要
Abstract This article presents a robust approach to navigating at high speed across desert terrain. A central theme of this approach is the combination of simple ideas and components to build a capable and robust system. A pair of robots were developed, which completed a 212 km Grand Challenge desert race in approximately 7 h. A pathcentric navigation system uses a combination of LIDAR and RADAR based perception sensors to traverse trails and avoid obstacles at speeds up to 15 m/s. The onboard navigation system leverages a human‐based preplanning system to improve reliability and robustness. The robots have been extensively tested, traversing over 3500 km of desert trails prior to completing the challenge. This article describes the mechanisms, algorithms, and testing methods used to achieve this performance. © 2006 Wiley Periodicals, Inc.
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