AbstractsStatistics

Nonlinear Gaussian Filtering : Theory, Algorithms, and Applications

by Marco Huber




Institution: Universität Karlsruhe
Department:
Year: 2015
Keywords: Bayes'sche Statistik, Zustandsschätzung, Kalman-Filter, Gaußprozesse Bayesian statistics, state estimation, filtering, Kalman filter, Gaussian processes
Record ID: 1106076
Full text PDF: http://digbib.ubka.uni-karlsruhe.de/volltexte/documents/3448422


Abstract

By restricting to Gaussian distributions, the optimal Bayesian filtering problem can be transformed into an algebraically simple form, which allows for computationally efficient algorithms. Three problem settings are discussed in this thesis: (1) filtering with Gaussians only, (2) Gaussian mixture filtering for strong nonlinearities, (3) Gaussian process filtering for purely data-driven scenarios. For each setting, efficient algorithms are derived and applied to real-world problems.