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Feasibility Grids for
Localization and Mapping in Crowded Urban Scenes
Shao-Wen Yang and Chieh-Chih Wang
2011 IEEE International Conference on
Robotics and Automation
Abstract |
Localization and
mapping are fundamental tasks in mobile robotics. State-of-the-arts
often rely on the static world assumption
using the occupancy grids. However, the real environment is typically
dynamic. We propose the feasibility grids to facilitate the
representation of both the static scene and the moving objects. The
dual sensor models are introduced to discriminate between stationary
and moving objects in mobile robot localization.
Instead of estimating the occupancy states, the feasibility grids
maintain the stochastic estimates of the feasibility (crossability)
states of the environment. Given that an observation can be decomposed
into stationary objects and moving objects, incorporating the
feasibility grids in localization yields performance
improvements over the occupancy grids, particularly in highly dynamic
environments. Our approach is extensively evaluated using real data
acquired with a planar laser range finder. The experimental results
show that the feasibility grid is capable of rapid convergence and
robust performance in mobile robot localization by taking into account
moving object information. A root mean squares accuracy of within 50cm
is achieved, without the aid of GPS, which is sufficient for autonomous
navigation in crowded urban scenes. The empirical results suggest that
the performance of localization can be improved when handling the
changing environment explicitly.
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The full paper is available in PDF.
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Bibtex |
@inproceedings{Yang_icra11,
author = {Shao-Wen Yang and Chieh-Chih Wang},
title = {Feasibility Grids
for Localization and Mapping in Crowded Urban Scenes},
booktitle = {IEEE
International
Conference
on Robotics and Automation (ICRA)},
address = {Shanghai,
China},
month
=
{May},
year
=
{2011},
}
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Copyright ©
Chieh-Chih
(Bob) Wang 2011. All right reserved.
Last Updated: Feb. 13, 2011.
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