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Daniel Meyer-Delius, Jürgen Hess, Giorgio Grisetti and Wolfram Burgard
Accurate and robust localization is essential for the successful
navigation of autonomous mobile robots. The majority of existing
localization approaches, however, is based on the assumption that
the environment is static which does not hold for most practical
application domains. In this paper, we present a localization
framework that can robustly track a robot's pose even in non-static
environments. Our approach keeps track of the observations caused by
unexpected objects in the environment using temporary local maps. It
relies both on these temporary local maps and on a reference map of
the environment for estimating the pose of the robot. Experimental
results demonstrate that by exploiting the observations caused by
unexpected objects our approach outperforms standard localization
methods for static environments.
@inproceedings{meyer-delius10iros, author = {D. Meyer-Delius and J. Hess and G. Grisetti and W. Burgard}, title = {Temporary Maps for Robust Localization in Semi-static Environments}, booktitle = {Proc.~of the IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)}, address = {Taipei, Taiwan}, year = 2010 } PDF-File: paper, 866K pdf file |