Title :
Two methods for Toeplitz-plus-Hankel approximation to a data covariance matrix
Author :
Fang, Wen-Hsien ; Yagle, Andrew E.
Author_Institution :
Dept. of Electr. & Comput. Sci., Michigan Univ., Ann Arbor, MI, USA
fDate :
6/1/1992 12:00:00 AM
Abstract :
Recently, fast algorithms have been developed for computing the optimal linear least squares prediction filters for nonstationary random processes (fields) whose covariances have (block) Toeplitz-Hankel form. If the covariance of the random process (field) must be estimated from the data, the following problem is presented: given a data covariance matrix, computer from the available data, find the Toeplitz-plus-Hankel matrix closest to this matrix in some sense. The authors give two procedures for computing the Toeplitz-plus-Hankel matrix that minimizes the Hilbert-Schmidt norm of the difference between the two matrices. The first approach projects the data covariance matrix onto the subspace of Toeplitz-plus-Hankel matrices, for which basis functions can be computed using a Gram-Schmidt orthonormalization. The second approach projects onto the subspace of symmetric Toeplitz plus skew-persymmetric Hankel matrices, resulting in a much simpler algorithm. The extension to block Toeplitz-plus-Hankel data covariance matrix approximation is also addressed
Keywords :
function approximation; matrix algebra; signal processing; Gram-Schmidt orthonormalization; Hilbert-Schmidt norm; Toeplitz-plus-Hankel approximation; Toeplitz-plus-Hankel matrix; basis functions; data covariance matrix; fast algorithms; matrix subspace; nonstationary random processes; optimal linear least squares prediction filters; symmetric Toeplitz plus skew-persymmetric Hankel matrices; Approximation algorithms; Covariance matrix; Gaussian processes; Image processing; Least squares approximation; Least squares methods; Nonlinear filters; Random processes; Symmetric matrices; White noise;
Journal_Title :
Signal Processing, IEEE Transactions on