Title :
Gaussian Process Gauss-Newton: Non-Parametric State Estimation
Author :
Tong, Chi Hay ; Furgale, Paul ; Barfoot, Timothy D.
Author_Institution :
Autonomous Space Robot. Lab., Univ. of Toronto, Toronto, ON, Canada
Abstract :
In this paper, we present Gaussian Process Gauss-Newton (GPGN), an algorithm for non-parametric, continuous-time, nonlinear, batch state estimation. This work adapts the methods of Gaussian Process regression to the problem of batch state estimation by using the Gauss-Newton method. In particular, we formulate the estimation problem with a continuous-time state model, along with the more conventional discrete-time measurements. Our derivation utilizes a basis function approach, but through algebraic manipulations, returns to a non-parametric form by replacing the basis functions with covariance functions (i.e., the kernel trick). The algorithm is validated through hardware-based experiments utilizing the well-understood problem of 2D rover localization using a known map as an illustrative example, and is compared to the traditional discrete-time batch Gauss-Newton approach.
Keywords :
Gaussian processes; continuous time systems; covariance analysis; discrete time systems; regression analysis; robots; state estimation; symbol manipulation; GPGN; Gauss-Newton method; Gaussian process Gauss-Newton; algebraic manipulations; batch state estimation; continuous-time state model; covariance functions; discrete-time measurements; nonparametric state estimation; regression; Mathematical model; Random variables; Robot sensing systems; State estimation; Time measurement;
Conference_Titel :
Computer and Robot Vision (CRV), 2012 Ninth Conference on
Conference_Location :
Toronto, ON
Print_ISBN :
978-1-4673-1271-4
DOI :
10.1109/CRV.2012.35