Title :
Filtering and detection for doubly stochastic Poisson processes
Author :
Snyder, Donald L.
fDate :
1/1/1972 12:00:00 AM
Abstract :
Equations are derived that describe the time evolution of the posterior statistics of a general Markov process that modulates the intensity function of an observed inhomogeneous Poisson counting process. The basic equation is a stochastic differential equation for the conditional characteristic function of the Markov process. A separation theorem is established for the detection of a Poisson process having a stochastic intensity function. Specifically, it is shown that the causal minimum-mean-square-error estimate of the stochastic intensity is incorporated in the optimum Reiffen-Sherman detector in the same way as if it were known. Specialized results are obtained when a set of random variables modulate the intensity. These include equations for maximum a posteriori probability estimates of the variables and some accuracy equations based on the Cramér-Rao inequality. Procedures for approximating exact estimates of the Markov process are given. A comparison by simulation of exact and approximate estimates indicates that the approximations suggested can work well even under low count rate conditions.
Keywords :
Filtering; Markov processes; Parameter estimation; Poisson processes; Signal detection; Biomedical optical imaging; Counting circuits; Equations; Filtering; Intensity modulation; Markov processes; Mathematical model; Optical modulation; Optical scattering; Stochastic processes;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.1972.1054756