Title :
On a least squares predictive-transform modeling methodology
Author :
Guerci, Joseph R. ; Feria, Erlan H.
Author_Institution :
Dept. of Electr. Eng., Polytech. Univ., Brooklyn, NY, USA
fDate :
7/1/1996 12:00:00 AM
Abstract :
A deterministic least squares (LS) predictive-transform (PT) multichannel modeling framework is presented. In a manner analogous to the development of minimum mean square error (MSE) PT, the LS PT signal model is obtained as an inherent byproduct of an optimized predictive-transform signal source “encoder”, thereby preserving the direct integration of specific data compression concepts into the basic modeling procedure that have proven very useful in the application of minimum MSE PT to coding, detection, estimation, and control. Fundamental properties of the LS PT signal model are presented, and a recursive least squares (RLS) PT modeling procedure is developed. In addition to subsuming conventional RLS signal modeling as a special case and the presence of an integrated transformation mechanism, RLS PT offers greater flexibility when independent “fading memory” weighting of both the first- and second-order sample moments is desired. Sufficient conditions for the convergence of the RLS PT parameters to their minimum MSE PT counterparts are developed. In addition, the zero mean constraint (either deterministic or stochastic) imposed on the LS PT signal model´s innovation sequence is shown to provide a mechanism for mitigating the deleterious effects of a singular or near-singular data correlation matrix
Keywords :
correlation methods; data compression; least squares approximations; matrix algebra; prediction theory; recursive estimation; signal sampling; telecommunication channels; transform coding; MSE; RLS signal modeling; control; data compression; detection; deterministic least squares; estimation; fading memory weighting; first-order sample moments; integrated transformation; least squares predictive-transform modeling; minimum mean square error; multichannel modeling; optimized predictive transform signal source; predictive transform; recursive least squares; second-order sample moments; singular data correlation matrix; stochastic; sufficient conditions; transform coding; zero mean constraint; Data compression; Least squares methods; Mean square error methods; Phased arrays; Predictive coding; Predictive models; Resonance light scattering; Source coding; Sufficient conditions; Transform coding;
Journal_Title :
Signal Processing, IEEE Transactions on