Title :
Conservative data fusion for decentralized networks
Author :
Tahir, Nazifa ; Bailey, Tim
Author_Institution :
Australian Centre for Field Robot., Univ. of Sydney, Sydney, NSW, Australia
Abstract :
The paper investigates a technique for computing conservative data fusion for Gaussian mixture model (GMM) in decentralized networks with any topology. The main advantage of conservative solutions is that they do not deteriorate the performance of a sensor network in presence of any kind of correlations. The paper exploits normalize geometric mean for computing conservative data fusion. It computes normalized geometric mean by Newton generalized binomial theorem and Monte Carlo technique. It is shown that the solution by Newton´s generalized binomial theorem exhibits divergence and numerical instability. On the other hand, Monte Carlo technique offers conservative solution. The tradeoffs are that it requires considerable computational time and is expensive as large numbers of samples are required to get statistical accuracy.
Keywords :
Gaussian distribution; Monte Carlo methods; Newton method; sensor fusion; Gaussian mixture model; Monte Carlo technique; Newton generalized binomial theorem; conservative data fusion; decentralized networks; normalized geometric mean; sensor network; statistical accuracy; Approximation methods; Equations; Kernel; Mathematical model; Monte Carlo methods; Network topology; Robot sensing systems; Conservative fusion; Monte Carlo; Newton´s generalized binomial approximation; decentralized networks; normalized geometric mean;
Conference_Titel :
GCC Conference & Exhibition, 2009 5th IEEE
Conference_Location :
Kuwait City
Print_ISBN :
978-1-4244-3885-3
DOI :
10.1109/IEEEGCC.2009.5734233