Publication | Closed Access
Set-values filtering and smoothing
52
Citations
11
References
1991
Year
Nonlinear FilteringEngineeringConvex SetsKalman FiltersFilter (Signal Processing)State EstimationStatistical Signal ProcessingFiltering TechniqueUncertainty QuantificationUncertainty EstimationStochastic ProcessesEstimation TheorySet-valued Kalman FilterStatisticsLinear OptimizationProbability TheorySpatial FilteringSignal ProcessingRobust ModelingGaussian ProcessSet-values Filtering
A theory of discrete-time optimal filtering and smoothing based on convex sets of probability distributions is presented. Rather than propagating a single conditional distribution as does conventional Bayesian estimation, a convex set of conditional distributions is evolved. For linear Gaussian systems, the convex set can be generated by a set of Gaussian distributions with equal covariance with means in a convex region of state space. The conventional point-valued Kalman filter is generated to a set-valued Kalman filter consisting of equations of evolution of a convex set of conditional means and a conditional covariance. The resulting estimator is an exact solution to the problem of running an infinity of Kalman filters and fixed-interval smoothers, each with different initial conditions. An application is presented to illustrate and interpret the estimator results.< <ETX xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">></ETX>
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