Scaled unscented transform Gaussian sum filter: theory and application
Xiaodong Luo, Irene M. Moroz, and Ibrahim Hoteit

TL;DR
This paper introduces the scaled unscented transform Gaussian sum filter (SUT-GSF), a novel recursive framework combining the scaled unscented Kalman filter and Gaussian mixture models for improved nonlinear state estimation.
Contribution
It develops a new filtering framework that integrates SUT and GMM to better handle nonlinear and non-Gaussian systems in state estimation.
Findings
Provides an explicit approximate pdf of the state
Enables recursive assimilation of nonlinear systems
Offers a complete statistical solution for state estimation
Abstract
In this work we consider the state estimation problem in nonlinear/non-Gaussian systems. We introduce a framework, called the scaled unscented transform Gaussian sum filter (SUT-GSF), which combines two ideas: the scaled unscented Kalman filter (SUKF) based on the concept of scaled unscented transform (SUT), and the Gaussian mixture model (GMM). The SUT is used to approximate the mean and covariance of a Gaussian random variable which is transformed by a nonlinear function, while the GMM is adopted to approximate the probability density function (pdf) of a random variable through a set of Gaussian distributions. With these two tools, a framework can be set up to assimilate nonlinear systems in a recursive way. Within this framework, one can treat a nonlinear stochastic system as a mixture model of a set of sub-systems, each of which takes the form of a nonlinear system driven by a known…
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