Dominik Joho, Martin Senk, Wolfram Burgard
Learning Wayfinding Heuristics Based on Local Information of Object Maps
Abstract.
In recent years, the problem of inferring and
utilizing semantic information has gained considerable interest
within the mobile robotics community. In this paper we focus
on the problem of how to utilize the local semantic information
of objects in a map to solve a navigation task more efficiently.
In particular, we consider a wayfinding task and choose a
supermarket environment as an example domain. We present an
approach allowing a mobile robot to efficiently find the location
of a target product in an unknown supermarket and to guide the
search by heuristic rules based on information about the objects
in the vicinity of the robot. The wayfinding strategy is learned
from data by observing optimal search paths in a training set
of supermarkets and then applied and evaluated in a previously
unseen supermarket. We evaluate different search strategies and
also give a comparison to the performance of humans in a real
market. Our results demonstrate, that the learned wayfinding
heuristics yield significantly shorter search paths than a standard
search technique.
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BibTeX
@InProceedings{joho09ecmr, author = {Dominik Joho and Martin Senk and Wolfram Burgard}, title = {Learning Wayfinding Heuristics Based on Local Information of Object Maps}, booktitle = {Proceedings of the European Conference on Mobile Robots {(ECMR)}}, pages = {117--122}, month = sep, year = {2009}, address = {Mlini/Dubrovnik, Croatia}, isbn = {978-953-6037-54-4} }