Fundamentals of statistical signal processing : estimation theory

Bibliographic Information

Fundamentals of statistical signal processing : estimation theory

Steven M. Kay

(Prentice Hall signal processing series)

Prentice Hall International, c1993

Available at  / 3 libraries

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Includes index

Description and Table of Contents

Description

This text provides a unified presentation of parameter estimation for those involved in the design and implementation of statistical signal processing algorithms, which covers important approaches to obtaining an optimal estimator and analyzing its performance. Examples and real-world applications are included. The text: describes the field of parameter estimation based on time series data; provides a summary of principal approaches as well as a "roadmap" to use in the selection of an estimator; extends many of the results for real data/real parameters to complex data/complex parameters; summarizes as examples many of the important estimators used in practice; illustrates how a digital computer can be used to assess performance of an estimator; and emphasizes a linear model to allow an optimal estimator to be found by inspection of a data model.

Table of Contents

  • Minimum variance unbiased estimation
  • Cramer-Rao lower bound
  • linear models
  • general minimum variance unbiased estimation
  • best linear unbiased estimators
  • maximum likelihood estimation
  • least squares
  • method of moments
  • the Bayesian philosophy
  • general Bayesian estimators
  • linear Bayesian estimators
  • Kalman filters
  • summary of estimators
  • extension for complex data and parameters.

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