Object Localization using Bearing Only Visual Detection
Kristoffer Sjö
Chandana Paul,
Patric Jensfelt
Abstract:
This work demonstrates how an autonomous robotic
platform can use intrinsically noisy, coarse-scale visual methods
lacking range information to produce good estimates of the location of
objects, by using a map-space representation for weighting together
multiple observations from different vantage points. As the robot
moves through the environment it acquires visual images which are
processed by means of a fast but noisy visual detection algorithm that
gives bearing only information. The results from the detection are
projected from image space into map space, where data from multiple
viewpoints can intrinsically combine to yield an increasingly accurate
picture of the location of objects. This method has been implemented
and shown to work for object localization on a real robot. It has also
been tested extensively in simulation, with systematically varied
false positive and false negative detection rates. The results
demonstrate that this is a viable method for object localization, even
under a wide range of sensor uncertainties.
BibTeX Entry:
@Inproceedings{Sjoe08b,
author = {Sj\"{o}, K. and Paul, C. and Jensfelt, P.},
title = {Object Localization using Bearing Only Visual Detection},
booktitle = {Proceedings of the 10th International Conference on Intelligent Autonomous Systems (IAS-10)},
pages = {254--263},
year = 2008,
editor = {Burgard, W. et al.},
month = {July},
publisher = {IOS Press}
}
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