DocumentCode
1348752
Title
New Method of Sparse Parameter Estimation in Separable Models and Its Use for Spectral Analysis of Irregularly Sampled Data
Author
Stoica, Petre ; Babu, Prabhu ; Li, Jian
Author_Institution
Dept. of Inf. Technol., Uppsala Univ., Uppsala, Sweden
Volume
59
Issue
1
fYear
2011
Firstpage
35
Lastpage
47
Abstract
Separable models occur frequently in spectral analysis, array processing, radar imaging and astronomy applications. Statistical inference methods for these models can be categorized in three large classes: parametric, nonparametric (also called “dense”) and semiparametric (also called “sparse”). We begin by discussing the advantages and disadvantages of each class. Then we go on to introduce a new semiparametric/sparse method called SPICE (a semiparametric/sparse iterative covariance-based estimation method). SPICE is computationally quite efficient, enjoys global convergence properties, can be readily used in the case of replicated measurements and, unlike most other sparse estimation methods, does not require any subtle choices of user parameters. We illustrate the statistical performance of SPICE by means of a line-spectrum estimation study for irregularly sampled data.
Keywords
covariance analysis; iterative methods; parameter estimation; signal sampling; spectral analysis; SPICE method; array processing; irregularly sampled data; line-spectrum estimation; radar imaging; semiparametric-sparse iterative covariance-based estimation method; separable model; sparse parameter estimation; spectral analysis; statistical inference method; Analytical models; Arrays; Data models; Estimation; Iterative methods; SPICE; Spectral analysis; Irregular sampling; separable models; sparse parameter estimation; spectral analysis;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2010.2086452
Filename
5599897
Link To Document