2006
DOI: 10.1002/rob.20126
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A robust approach to high‐speed navigation for unrehearsed desert terrain

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 leverag… Show more

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Cited by 158 publications
(72 citation statements)
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“…The sub-sequence of trajectories is usually computed offline [11,9]. Such methods are widely used in modern, autonomous ground robots including the two highest placing teams for DARPA Urban Challenge and Grand Challenge [28,17,27,26], LAGR [12], UPI [1], and Perceptor [14] programs. We use CONSEQOPT to maximize this function and generate trajectory sequences taking the current environment features.…”
Section: B Mobile Robot Navigationmentioning
confidence: 99%
“…The sub-sequence of trajectories is usually computed offline [11,9]. Such methods are widely used in modern, autonomous ground robots including the two highest placing teams for DARPA Urban Challenge and Grand Challenge [28,17,27,26], LAGR [12], UPI [1], and Perceptor [14] programs. We use CONSEQOPT to maximize this function and generate trajectory sequences taking the current environment features.…”
Section: B Mobile Robot Navigationmentioning
confidence: 99%
“…With traditional hybrid architectures, deliberative components are usually kept at a high level, whereas the more reactive, behavior-based, components are used at a low level for direct actuator control (Konolige & Myers, 1998;Rosenblatt, 1995). With the rapid growth of computing technology, however, there has been a reemergence of deliberative methods for low-level motion planning (Thrun et al, 2006;Urmson et al, 2006). Search-based approaches provide the important traits of predictability and optimality, which are useful from an engineering point of view (Russel & Norvig, 2003).…”
Section: System Architecture and Communicationsmentioning
confidence: 99%
“…When clearance is not available, the algorithm plans at slower speeds [9]. Sandstorm and H1ghlander, robots developed for desert racing, have driven extreme routes at speeds up to 15 meters per second by planning in a series of grids along the original path and smoothing the result [10].…”
Section: Related Workmentioning
confidence: 99%