A novel consensus approach to networked nonlinear filtering is introduced. The proposed approach is based on the idea of carrying out in parallel a consensus on likelihoods and a con- sensus on prior probability distributions and then combine the out- comes with a suitable weighting factor. Simulation experiments concerning a target tracking case-study show that the proposed consensus-based nonlinear filter can be convenient when only a few consensus iterations per sampling interval can be afforded.
Parallel consensus on likelihoods and priors for networked nonlinear filtering / G. Battistelli; L. Chisci; C. Fantacci. - In: IEEE SIGNAL PROCESSING LETTERS. - ISSN 1070-9908. - STAMPA. - 21:(2014), pp. 787-791. [10.1109/LSP.2014.2316258]
Parallel consensus on likelihoods and priors for networked nonlinear filtering
BATTISTELLI, GIORGIO;CHISCI, LUIGI;FANTACCI, CLAUDIO
2014
Abstract
A novel consensus approach to networked nonlinear filtering is introduced. The proposed approach is based on the idea of carrying out in parallel a consensus on likelihoods and a con- sensus on prior probability distributions and then combine the out- comes with a suitable weighting factor. Simulation experiments concerning a target tracking case-study show that the proposed consensus-based nonlinear filter can be convenient when only a few consensus iterations per sampling interval can be afforded.File | Dimensione | Formato | |
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