Filtering, smoothing and M-ary detection with discrete time Poisson observations
Date
2005
Authors
Elliott, Robert J
Malcolm, William
Aggoun, Lakhdar
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Publisher
Elsevier
Abstract
In this article, we solve a class of estimation problems, namely, filtering smoothing and detection for a discrete time dynamical system with integer-valued observations. The observation processes we consider are Poisson random variables observed at discrete times. Here, the distribution parameter for each Poisson observation is determined by the state of a Markov chain. By appealing to a duality between forward (in time) filter and its corresponding backward processes, we compute dynamics satisfied by the unnormalized form of the smoother probability. These dynamics can be applied to construct algorithms typically referred to as fixed point smoothers, fixed lag smoothers, and fixed interval smoothers. M-ary detection filters are computed for two scenarios: one for the standard model parameter detection problem and the other for a jump Markov system.
Description
Keywords
Keywords: Backwards dynamics; Detection; Discrete parameter martingales; Jump markov systems; Poisson random variables; Reference probability
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Source
Stochastic Processes and their Applications
Type
Journal article
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2037-12-31