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Real-time On and Off Road GPS Tracking
by
Willard, Brandon
in
Acceleration
/ Bayesian analysis
/ Distance learning
/ Global positioning systems
/ GPS
/ Satellite navigation systems
/ Tracking
/ Transition probabilities
2014
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Do you wish to request the book?
Real-time On and Off Road GPS Tracking
by
Willard, Brandon
in
Acceleration
/ Bayesian analysis
/ Distance learning
/ Global positioning systems
/ GPS
/ Satellite navigation systems
/ Tracking
/ Transition probabilities
2014
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Paper
Real-time On and Off Road GPS Tracking
2014
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Overview
This document describes a GPS-based tracking model for position and velocity states on and off of a road network and it enables parallel, online learning of state-dependent parameters, such as GPS error, acceleration error, and road transition probabilities. More specifically, the conditionally linear tracking model of Ulmke and Koch (2006) is adapted to the Particle Learning framework of H. F. Lopes, et. al. (2011), which provides a foundation for further hierarchical Bayesian extensions. The filter is shown to perform well on a real city road network while sufficiently estimating on and off road transition probabilities. The model in this paper is also backed by an open-source Java project.
Publisher
Cornell University Library, arXiv.org
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