Homepage
Research
Students
Courses
Robots
Papers
Videos
Press
Talks
Faq
CV
Lab
Travel
Contact
Personal
Links


Efficient multi-robot localization based on monte carlo approximation.

D. Fox, W. Burgard, H. Kruppa, and S. Thrun.

This paper presents a probabilistic algorithm for collaborative mobile robot localization. Our approach uses a sample-based version of Markov localization, capable of localizing mobile robots in an any-time fashion. When teams of robots localize themselves in the same environment, probabilistic methods are employed to synchronize each robot's belief whenever one robot detects another. As a result, the robots localize themselves faster, maintain higher accuracy, and high-cost sensors are amortized across multiple robot platforms. The paper also describes experimental results obtained using two mobile robots, using computer vision and laser range-finding for detecting each other and estimating each other's relative location. The results, obtained in an indoor office environment, illustrate drastic improvements in localization speed and accuracy when compared to conventional single-robot localization.

The full paper is available in PDF and gzipped Postscript

@InProceedings{Fox99d,
  author = 	 {Fox, D. and Burgard, W. and Kruppa, H. and Thrun, S.},
  title = 	 {Efficient Multi-Robot Localization Based on Monte Carlo
Approximation},
  booktitle = 	 {Proc.~of the 9th International Symposium of Robotics
Research (ISRR'99)},
  year =	 1999
}