J.-S. Gutmann, D. Fox
An experimental comparison of localization methods continued
Proc. of the IEEE/RSJ International Conference on Intelligent
Robots and Systems (IROS'02)
Abstract
Localization is one of the fundamental problems in mobile robot
navigation. Past experiments show that in general grid-based Markov
localization is more robust than Kalman filtering while the latter
can be more accurate than the former. Recently new methods for
localization employing particle filters became popular. In this
paper we compare different localization methods using Kalman
filtering, grid-based Markov localization, Monte Carlo Localization
(MCL), and combinations thereof. We give experimental evidence that
a combination of Markov localization and Kalman filtering as well as
a variant of MCL outperform the other methods in terms of accuracy,
robustness, and time needed for recovering from manual robot
displacement, while requiring only few computational resources.
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Bibtex
@INPROCEEDINGS{Gut02Exp,
AUTHOR
= {Gutmann, J.-S. Fox, D.},
TITLE
= {An Experimental Comparison of Localization Methods Continued},
BOOKTITLE = {Proc.~of the IEEE/RSJ International Conference on Intelligent Robots and Systems},
YEAR
= {2002}
}
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