Bayesian and geometric subspace tracking

Citation
Srivastava, Anuj et Klassen, Eric, Bayesian and geometric subspace tracking, Advances in applied probability , 36(1), 2004, pp. 43-56
ISSN journal
00018678
Volume
36
Issue
1
Year of publication
2004
Pages
43 - 56
Database
ACNP
SICI code
Abstract
We address the problem of tracking the time-varying linear subspaces (of a larger system) under a Bayesian framework. Variations in subspaces are treated as a piecewise-geodesic process on a complex Grassmann manifold and a Markov prior is imposed on it. This prior model, together with an observation model, gives rise to a hidden Markov model on a Grassmann manifold, and admits Bayesian inferences. A sequential Monte Carlo method is used for sampling from the time-varying posterior and the samples are used to estimate the underlying process. Simulation results are presented for principal subspace tracking in array signal processing.