Single-Sensor Probabilistic Localization on the SeReS Self-Reconfigurable Robot
Kenneth Payne, Jacob Everist, Feili Hou, and Wei-Min Shen. Single-Sensor Probabilistic Localization on the SeReS Self-Reconfigurable Robot. In The 9th Intl. Conf. Intelligent and Autonomous Systems (IAS-9), Tokyo, Japan, March 2006.
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Abstract
This paper proposes a novel method for localizing a stationary infrared source of unknown orientation relative to a static docking sensor. This method uses elliptical approximations of likely positions of the infrared source and computes the intersections to find the most probable locations. It takes only a few samples to localize, is easily computed with inexpensive microcontrollers, and is robust to sensor noise. We then compare our approach with two other methods. The first uses a Bayesian filter across a map of discrete locations in the robot's operational workspace to determine the suspected source position. The second also uses a probability distribution map but uses the method described by Elfes in his paper on probabilistic sonar-based mapping and navigation [1]. We show that our approach localizes quickly with a single sensor and is no more computationally demanding than other methods.
BibTeX Entry
@InProceedings{ payne2006single-sensor-probabilistic-localization-on-the-seres,
abstract = {This paper proposes a novel method for localizing a
stationary infrared source of unknown orientation relative
to a static docking sensor. This method uses elliptical
approximations of likely positions of the infrared source
and computes the intersections to find the most probable
locations. It takes only a few samples to localize, is
easily computed with inexpensive microcontrollers, and is
robust to sensor noise. We then compare our approach with
two other methods. The first uses a Bayesian filter across
a map of discrete locations in the robot's operational
workspace to determine the suspected source position. The
second also uses a probability distribution map but uses
the method described by Elfes in his paper on probabilistic
sonar-based mapping and navigation [1]. We show that our
approach localizes quickly with a single sensor and is no
more computationally demanding than other methods. },
address = {Tokyo, Japan},
author = {Kenneth Payne and Jacob Everist and Feili Hou and Wei-Min
Shen},
booktitle = {The 9th Intl.\ Conf.\ Intelligent and Autonomous Systems
(IAS-9)},
month = {March},
title = {Single-Sensor Probabilistic Localization on the {SeReS}
Self-Reconfigurable Robot},
year = {2006}
}