Title :
Low-rank adaptive filters
Author_Institution :
Fachhochschule Furtwangen, Germany
fDate :
12/1/1996 12:00:00 AM
Abstract :
We introduce a class of adaptive filters based on sequential adaptive eigendecomposition (subspace tracking) of the data covariance matrix. These new algorithms are completely rank revealing, and hence, they can perfectly handle the following two relevant data cases where conventional recursive least squares (RLS) methods fail to provide satisfactory results: (1) highly oversampled “smooth” data with rank deficient of almost rank deficient covariance matrix and (2) noise-corrupted data where a signal must be separated effectively from superimposed noise. This paper contradicts the widely held belief that rank revealing algorithms must be computationally more demanding than conventional recursive least squares. A spatial RLS adaptive filter has a complexity of O(N2) operations per time step, where N is the filter order. The corresponding low-rank adaptive filter requires only O(Nr) operations per time step, where r⩽N denotes the rank of the data covariance matrix. Thus, low-rank adaptive filters can be computationally less (or even much less) demanding, depending on the order/rank ratio N/r or the compressibility of the signal. Simulation results substantiate our claims. This paper is devoted to the theory and application of fast orthogonal iteration and bi-iteration subspace tracking algorithms
Keywords :
Gaussian noise; adaptive filters; adaptive signal processing; covariance matrices; iterative methods; least squares approximations; signal sampling; smoothing methods; tracking filters; biiteration subspace tracking algorithm; complexity; correlated Gaussian noise; data covariance matrix; fast orthogonal iteration algorithm; filter order; low rank adaptive filters; noise corrupted data; order/rank ratio; oversampled smooth data; rank deficient covariance matrix; rank revealing algorithms; recursive least squares; sequential adaptive eigendecomposition; signal compressibility; signal separation; simulation results; spatial RLS adaptive filter; subspace tracking; superimposed noise; Adaptive arrays; Adaptive filters; Adaptive signal processing; Covariance matrix; Gaussian noise; Least squares approximation; Least squares methods; Resonance light scattering; Sensor arrays; Signal processing algorithms;
Journal_Title :
Signal Processing, IEEE Transactions on