因子图上的近似非线性高斯信息传递

Eike Petersen, C. Hoffmann, P. Rostalski
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引用次数: 5

摘要

因子图作为表示和构建信号处理、估计和控制算法的统一框架,最近得到了越来越多的关注。因子图工具包中似乎没有很好地探索的一个功能是处理确定性非线性转换的能力,例如使用表格消息传递规则处理非线性过滤和平滑问题中的转换。在这篇贡献中,我们基于前向传递的数值正交程序和后向传递的rauch - tung - striebel型近似,为满足马尔可夫性质的任意因子图中的确定性非线性变换节点提供了一般的前向(滤波)和后向(平滑)近似高斯消息传递规则。这些消息传递规则可用于推导许多使用因子图求解非线性问题的算法,如基于所提出的消息传递规则的非线性修正brson - frazier (MBF)平滑的命题所示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Approximate Nonlinear Gaussian Message Passing on Factor Graphs
Factor graphs have recently gained increasing attention as a unified framework for representing and constructing algorithms for signal processing, estimation, and control. One capability that does not seem to be well explored within the factor graph tool kit is the ability to handle deterministic nonlinear transformations, such as those occuring in nonlinear filtering and smoothing problems, using tabulated message passing rules. In this contribution, we provide general forward (filtering) and backward (smoothing) approximate Gaussian message passing rules for deterministic nonlinear transformation nodes in arbitrary factor graphs fulfilling a Markov property, based on numerical quadrature procedures for the forward pass and a Rauch-Tung-Striebel-type approximation of the backward pass. These message passing rules can be employed for deriving many algorithms for solving nonlinear problems using factor graphs, as is illustrated by the proposition of a nonlinear modified Bryson-Frazier (MBF) smoother based on the presented message passing rules.
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