2018
DOI: 10.1109/tac.2017.2774444
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Gaussian Process Quadrature Moment Transform

Abstract: Computation of moments of transformed random variables is a problem appearing in many engineering applications. The current methods for moment transformation are mostly based on the classical quadrature rules which cannot account for the approximation errors. Our aim is to design a method for moment transformation for Gaussian random variables which accounts for the error in the numerically computed mean. We employ an instance of Bayesian quadrature, called Gaussian process quadrature (GPQ), which allows us to… Show more

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Cited by 15 publications
(19 citation statements)
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“…Among many other filters, (2.11) is satisfied by the aforementioned Kalman--Bucy filters based on the unscented transform and Gaussian tensor-product rules. Filters that do not satisfy this assumption include kernel-based Gaussian process cubature filters [45,35].…”
Section: Gaussian Integration Filtersmentioning
confidence: 99%
“…Among many other filters, (2.11) is satisfied by the aforementioned Kalman--Bucy filters based on the unscented transform and Gaussian tensor-product rules. Filters that do not satisfy this assumption include kernel-based Gaussian process cubature filters [45,35].…”
Section: Gaussian Integration Filtersmentioning
confidence: 99%
“…Then the prediction covariance matrix in (24) can be obtained by (25) when a = b or by adding (27) to (25) in case a = b.…”
Section: Uncertainty Calibration Of Sigma Points Transform a Gamentioning
confidence: 99%
“…In the application of GNSS/INS, GP has also been used to enhance central difference KF, which however needs the ground truth to identify the residue between approximated model and reference model [26]. Recently, a quadrature rule named Gaussian process quadrature (GPQ) is proposed to further account for the uncertainty consisted in numerically computed moments, base on which a new quadrature KF is derived without a model identification step [27]. However, the GPQ-based KF may still suffer from non-Gaussian measurement noise, and the fixed selection of kernel parameters for GP measurement model approximation is invalid due to the changing sensor environment, which is not the case for process model.…”
Section: Introductionmentioning
confidence: 99%
“…Finally, it is worth remarking that this article is not the first instance of fully symmetric sets being used in conjunction with kernel quadrature. Arguably the simplest non-trivial fully symmetric kernel quadrature rule (this rule appears briefly in Section 4.3) has seen use in approximate filtering of non-linear systems [58,50,51], but without an efficient weight computation algorithm.…”
Section: Introductionmentioning
confidence: 99%