A fixed-interval smoother with reduced complexity for jump Markov nonlinear systems

Information Fusion(2014)

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摘要
A suboptimal algorithm to fixed-interval smoothing for nonlinear Markovian switching systems is proposed. It infers a Gaussian mixture approximation to the posterior smoothing pdf by combining the statistics produced by an IMM filter into an original backward recursive process. The complexity is limited, as the number of underlying filters and smoothers is equal to the constant number of hypotheses in the posterior mixture. A comparison, conducted on realistic simulated target tracking case studies, shows that the investigated method performs significantly better than equivalent algorithms.
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关键词
Gaussian processes,Markov processes,mixture models,probability,smoothing methods,Gaussian mixture approximation,fixed interval smoother,fixed interval smoothing,interacting multiple model filter,jump Markov nonlinear systems,nonlinear Markovian switching systems,posterior smoothing probability density function,reduced complexity,Interacting Multiple Model (IMM) filtering and smoothing,Nonlinear Markovian switching systems,Rauch-Tung-Striebel formulae,Target tracking
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