Marginalized particle filtering and related filtering techniques as message passing
Academic Article
Publication Date:
2019
abstract:
In this paper, a factor graph approach is employed to investigate the recursive filtering problem for conditionally linear Gaussian state-space models. First, we derive a new factor graph for the considered filtering problem; then, we show that applying the sum-product rule to our graphical model results in both known and novel filtering techniques. In particular, we prove that: 1) marginalized particle filtering can be interpreted as a form of forward only message passing over the devised graph; 2) novel filtering methods can be easily developed by exploiting the graph structure and/or simplifying probabilistic messages.
Iris type:
1.1 Articolo in rivista
Keywords:
belief propagation; hidden Markov model; particle filter; Rao-Blackwellization; State space representation
List of contributors:
Vitetta, G. M.; Sirignano, E.; Viesti, P. D.; Montorsi, F.; Sola, M.
Published in: