DocumentCode :
382811
Title :
Vision-based Monte Carlo self-localization for a mobile service robot acting as shopping assistant in a home store
Author :
Gross, H.-M. ; Koenig, A. ; Boehme, H.-J. ; Schroeter, Ch
Author_Institution :
Dept. of Neuroinformatics, Ilmenau Tech. Univ., Germany
Volume :
1
fYear :
2002
fDate :
2002
Firstpage :
256
Abstract :
We present a novel omnivision-based robot localization approach which utilizes the Monte Carlo Localization (MCL), a Bayesian filtering technique based on a density representation by means of particles. The capability of this method to approximate arbitrary likelihood densities is a crucial property for dealing with highly ambiguous localization hypotheses as are typical for real-world environments. We show how omnidirectional imaging can be combined with the MCL-algorithm to globally localize and track a mobile robot given a taught graph-based representation of the operation area. In contrast to other approaches, the nodes of our graph are labeled with both visual feature vectors extracted from the omnidirectional image, and odometric data about the pose of the robot at the moment of the node insertion (position and heading direction). To demonstrate the reliability of our approach, we present first experimental results in the context of a challenging robotics application, the self-localization of a mobile service robot acting as shopping assistant in a very regularly structured, maze-like and crowded environment, a home store.
Keywords :
Monte Carlo methods; distance measurement; feature extraction; image representation; mobile robots; position control; retailing; robot vision; Bayesian filtering technique; arbitrary likelihood densities; density representation; global localization; highly ambiguous localization hypotheses; home store; mobile robot tracking; mobile service robot; node insertion; odometric data; omnidirectional image; omnivision-based robot localization; real-world environments; regularly structured maze-like crowded environment; robot pose; shopping assistant; taught graph-based representation; vision-based Monte Carlo self-localization; visual feature vector extraction; Bayesian methods; Filtering; Human robot interaction; Machine vision; Mobile robots; Monte Carlo methods; Robot sensing systems; Robot vision systems; Service robots; Sonar navigation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Robots and Systems, 2002. IEEE/RSJ International Conference on
Print_ISBN :
0-7803-7398-7
Type :
conf
DOI :
10.1109/IRDS.2002.1041398
Filename :
1041398
Link To Document :
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