DocumentCode
3223610
Title
Rich probabilistic representations for bearing only decentralised data fusion
Author
Upcroft, Ben ; Ong, Lee Ling ; Kumar, Suresh ; Ridley, Matthew ; Bailey, Tim ; Sukkarieh, Salah ; Durrant-Whyte, Hugh
Author_Institution
ARC Centre of Excellence for Autonomous Syst., Sydney Univ., NSW, Australia
Volume
2
fYear
2005
fDate
25-28 July 2005
Abstract
The aim of this paper is to demonstrate the validity of using Gaussian mixture models (GMM) for representing probabilistic distributions in a decentralised data fusion (DDF) framework. GMMs are a powerful and compact stochastic representation allowing efficient communication of feature properties in large scale decentralised sensor networks. It will be shown that GMMs provide a basis for analytical solutions to the update and prediction operations for general Bayesian filtering. Furthermore, a variant on the covariance intersect algorithm for Gaussian mixtures will be presented ensuring a conservative update for the fusion of correlated information between two nodes in the network. In addition, purely visual sensory data will be used to show that decentralised data fusion and tracking of non-Gaussian states observed by multiple autonomous vehicles is feasible.
Keywords
Bayes methods; Gaussian processes; correlation theory; filtering theory; multivariable systems; sensor fusion; signal representation; tracking; vehicles; Bayesian filtering; DDF; GMM; Gaussian mixture model; autonomous vehicle; communication feature property; correlated information; covariance intersect algorithm; decentralised data fusion framework; probabilistic distribution; sensor network; stochastic representation; tracking; Australia; Bayesian methods; Buildings; Filtering; Filters; Land vehicles; Laser radar; Payloads; Radar tracking; Remotely operated vehicles;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Fusion, 2005 8th International Conference on
Print_ISBN
0-7803-9286-8
Type
conf
DOI
10.1109/ICIF.2005.1591974
Filename
1591974
Link To Document