DocumentCode :
53626
Title :
Gaussian Process Regression for Sensor Networks Under Localization Uncertainty
Author :
Jadaliha, Mahdi ; Xu, Yunfei ; Choi, Jongeun ; Johnson, Nicholas S. ; Li, Weiming
Author_Institution :
Dept. of Mech. Eng., Michigan State Univ., East Lansing, MI, USA
Volume :
61
Issue :
2
fYear :
2013
fDate :
Jan.15, 2013
Firstpage :
223
Lastpage :
237
Abstract :
In this paper, we formulate Gaussian process regression with observations under the localization uncertainty due to the resource-constrained sensor networks. In our formulation, effects of observations, measurement noise, localization uncertainty, and prior distributions are all correctly incorporated in the posterior predictive statistics. The analytically intractable posterior predictive statistics are proposed to be approximated by two techniques, viz., Monte Carlo sampling and Laplace´s method. Such approximation techniques have been carefully tailored to our problems and their approximation error and complexity are analyzed. Simulation study demonstrates that the proposed approaches perform much better than approaches without considering the localization uncertainty properly. Finally, we have applied the proposed approaches on the experimentally collected real data from a dye concentration field over a section of a river and a temperature field of an outdoor swimming pool to provide proof of concept tests and evaluate the proposed schemes in real situations. In both simulation and experimental results, the proposed methods outperform the quick-and-dirty solutions often used in practice.
Keywords :
Gaussian processes; Monte Carlo methods; approximation theory; communication complexity; measurement errors; regression analysis; sampling methods; sensor placement; wireless sensor networks; Gaussian process regression; Laplace method; Monte Carlo sampling; approximation error; approximation technique; communication complexity; dye concentration field; measurement noise; outdoor swimming pool; posterior predictive statistics; resource constrained sensor network; river; sensor localization uncertainty; Approximation methods; Gaussian processes; Mobile computing; Monte Carlo methods; Robot sensing systems; Uncertainty; Vectors; Gaussian processes; Laplace´s methods; Monte Carlo methods; regression analysis; sensor networks;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2012.2223695
Filename :
6327685
Link To Document :
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