Title :
Optimal linear reduced-rank estimation
Author :
Watson, Charles C.
Author_Institution :
Schlumberger-Doll Res., Ridgefield, CT, USA
Abstract :
Summary form only given. The problem of estimating an unknown signal or property vector, x∈Rp, from a multichannel data vector z∈Rn, p ⩽n, by means of a linear estimator having rank ⩽ p is considered. Here, x and z are treated as stochastic variables characterized by their first- and second-order statistics. A reduced-rank linear transformation of z that provides an estimate of z minimizing a (weighted) mean-square-error cost function is sought. Typically, z will represent a noisy data vector and possibly also contain extraneous coherent components; x can represent either the noise-free signal of interest or a set of quantities related to the signal, such as the underlying physical properties which determine the signal, in which case the problem is one of data inversion. The result can be viewed as a synthesis of the Karhunen-Loeve transformation with linear mean-square estimation, and thus as a generalization of each
Keywords :
estimation theory; picture processing; signal processing; Karhunen-Loeve transformation; data inversion; image processing; linear estimator; linear mean-square estimation; linear reduced-rank estimation; mean-square-error cost function; multichannel data vector; optimal type; reduced-rank linear transformation; stochastic variables; Cost function; Data mining; Image coding; Noise reduction; Signal synthesis; Statistics; Stochastic processes; Upper bound; Vectors; X-ray imaging;
Conference_Titel :
Multidimensional Signal Processing Workshop, 1989., Sixth
Conference_Location :
Pacific Grove, CA
DOI :
10.1109/MDSP.1989.97085