Numerically robust Gaussian state estimation with singular observation noise
Methodology
2025-03-14 v1 Machine Learning
Numerical Analysis
Numerical Analysis
Computation
Abstract
This article proposes numerically robust algorithms for Gaussian state estimation with singular observation noise. Our approach combines a series of basis changes with Bayes' rule, transforming the singular estimation problem into a nonsingular one with reduced state dimension. In addition to ensuring low runtime and numerical stability, our proposal facilitates marginal-likelihood computations and Gauss-Markov representations of the posterior process. We analyse the proposed method's computational savings and numerical robustness and validate our findings in a series of simulations.
Cite
@article{arxiv.2503.10279,
title = {Numerically robust Gaussian state estimation with singular observation noise},
author = {Nicholas Krämer and Filip Tronarp},
journal= {arXiv preprint arXiv:2503.10279},
year = {2025}
}