DocumentCode
1480198
Title
Class of Widely Linear Complex Kalman Filters
Author
Dini, D.H. ; Mandic, D.P.
Author_Institution
Dept. of Electr. & Electron. Eng., Imperial Coll. London, London, UK
Volume
23
Issue
5
fYear
2012
fDate
5/1/2012 12:00:00 AM
Firstpage
775
Lastpage
786
Abstract
Recently, a class of widely linear (augmented) complex-valued Kalman filters (KFs), that make use of augmented complex statistics, have been proposed for sequential state space estimation of the generality of complex signals. This was achieved in the context of neural network training, and has allowed for a unified treatment of both second-order circular and noncircular signals, that is, both those with rotation invariant and rotation-dependent distributions. In this paper, we revisit the augmented complex KF, augmented complex extended KF, and augmented complex unscented KF in a more general context, and analyze their performances for different degrees of noncircularity of input and the state and measurement noises. For rigor, a theoretical bound for the performance advantage of widely linear KFs over their strictly linear counterparts is provided. The analysis also addresses the duality with bivariate real-valued KFs, together with several issues of implementation. Simulations using both synthetic and real world proper and improper signals support the analysis.
Keywords
Kalman filters; learning (artificial intelligence); state estimation; statistics; augmented complex extended KF; augmented complex statistics; augmented complex unscented KF; complex signal generality; linear complex-valued Kalman filters; measurement noise; neural network training; noncircular signals; rotation invariant distribution; rotation-dependent distributions; second-order circular signal; sequential state space estimation; state noise; Covariance matrix; Equations; Estimation; Kalman filters; Noise; Noise measurement; Vectors; Augmented complex Kalman filter; complex Kalman filter; complex circularity; extended Kalman filter; unscented Kalman filter; widely linear model;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2012.2189893
Filename
6175965
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