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GVU Technical Report
Number: GIT-GVU-05-13
Title:
An Empirical Evaluation of Context-Sensitive Pose Estimators in an Urban Outdoor Environment
Authors:
Yoichiro Endo,
Patrick D. Ulam,
Ronald C. Arkin,
Tucker R. Balch,
Matthew D. Powers
Abstract:
When a mobile robot is executing a navigational task in an urban outdoor
environment, accurate localization information is often essential. The
difficulty of this task is compounded by sensor drop-out and the
presence of non-linear error sources over the span of the mission. We
have observed that certain motions of the robot and environmental
conditions affect pose sensors in different ways. In this paper, we
propose a computational method for localization that systematically
integrates and evaluates contextual information that affects the quality
of sensors, and utilize the information in order to improve the output
of sensor fusion. Our method was evaluated in comparison with
conventional probabilistic localization methods (namely, the extended
Kalman filter and Monte Carlo localization) in a set of outdoor
experiments. The results of the experiment are also reported in this paper.
Keywords:
Sensor fusion, context-sensitive perception, localization, extended Kalman Filter, particle filter
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