Particle Gaussian Mixture (PGM) Filters
Dilshad Raihan Akkam Veettil, Suman Chakravorty

TL;DR
This paper introduces a particle-based Gaussian mixture filtering method for nonlinear systems that overcomes particle depletion and handles non-Gaussian, multimodal uncertainties effectively, with proven convergence and demonstrated performance.
Contribution
It proposes a novel particle Gaussian mixture filter that avoids particle depletion and adapts the number of modes, improving nonlinear estimation accuracy.
Findings
Proven weak convergence of the PGM density to the true filter density.
Demonstrated improved estimation performance in test cases.
Overcomes curse of dimensionality associated with particle filters.
Abstract
Recursive estimation of nonlinear dynamical systems is an important problem that arises in several engineering applications. Consistent and accurate propagation of uncertainties is important to ensuring good estimation performance. It is well known that the posterior state estimates in nonlinear problems may assume non-Gaussian multimodal densities. In the past, Gaussian mixture filters and particle filters were introduced to handle non-Gaussianity and nonlinearity. However, these methods have seen only limited success as most mixture filters attempt to fix the number of mixture modes during estimation process, and the particle filters suffer from the curse of dimensionality. In this paper, we propose a particle based Gaussian mixture filtering approach for the general nonlinear estimation problem that is free of the particle depletion problem inherent to most particle filters. We…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Underwater Acoustics Research · Blind Source Separation Techniques
