Signal Acquisition from Measurements via Non-Linear Models
Abstract
We consider the problem of reconstruction of a non-linear finite-parametric model M=Mp(x), with p=(p1,...,pr) a set of parameters, from a set of measurements μj(M). In this paper μj(M) are always the moments mj(M)=∫ xjMp(x)dx. This problem is a central one in Signal Processing, Statistics, and in many other applications. We concentrate on a direct (and somewhat "naive") approach to the above problem: we simply substitute the model function Mp(x) into the measurements μj and compute explicitly the resulting "symbolic" expressions of μj(Mp) in terms of the parameters p. Equating these "symbolic" expressions to the actual measurement results, we produce a system of nonlinear equations on the parameters p, which we consequently try to solve. The aim of this paper is to review some recent results (mostly of Vet5,Mil1,Mil2,Put1,Vet4,Vet3,Mil3,Mil4,Vet2) in this direction, stressing the algebraic structure of the arising systems and mathematical tools required for their solutions. In particular, we discuss the relation of the reconstruction problem above with the recent results of bfy,bry,chr,pak1,pak2,pak3,pry,ry on the vanishing problem of generalized polynomial moments and on the Cauchy-type integrals of algebraic functions. The accompanying paper Kis1 (this volume) provides a solution method for a wide class of reconstruction problems as above, based on the study of linear differential equations with rational coefficient, which are satisfied by the moment generating function of the problem.
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