高斯过程高斯-牛顿:非参数状态估计

Chi Hay Tong, P. Furgale, T. Barfoot
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引用次数: 22

摘要

本文提出了一种非参数、连续时间、非线性、批处理状态估计的高斯过程高斯-牛顿(GPGN)算法。本文采用高斯-牛顿方法,将高斯过程回归方法应用于批量状态估计问题。特别地,我们用连续时间状态模型以及更传统的离散时间测量来表述估计问题。我们的推导利用基函数方法,但通过代数操作,通过用协方差函数(即核技巧)替换基函数返回到非参数形式。该算法通过基于硬件的实验进行了验证,利用众所周知的2D漫游车定位问题,以已知地图为例,并与传统的离散时间批处理高斯-牛顿方法进行了比较。
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Gaussian Process Gauss-Newton: Non-Parametric State Estimation
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.
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