The Kalman filter is the Bayesian optimum solution to the problem of sequentially estimating the states of a dynamical system in which the state evolution and measurement processes are both linear and Gaussian. Given the ubiquity of such systems, the Kalman filter finds use in a variety of applications, e.g., target tracking, guidance and navigation, and communications systems. The purpose of this book is to present a brief introduction to Kalman filtering. The theoretical framework of the Kalman filter is first presented, followed by examples showing its use in practical applications. Extensions of the method to nonlinear problems and distributed applications are discussed. A software implementation of the algorithm in the MATLAB programming language is provided, as well as MATLAB code for several example applications discussed in the manuscript.
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The Kalman filter is the Bayesian optimum solution to the problem of sequentially estimating the states of a dynamical system in which the state evolution and measurement processes are both linear and Gaussian.
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Acknowledgments.- Introduction.- The Estimation Problem.- The Kalman Filter.- Extended and Decentralized Kalman Filtering.- Conclusion.- Notation.- Bibliography.- Authors' Biographies.
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Product details
ISBN
9783031014086
Published
2013-10-15
Publisher
Springer International Publishing AG
Height
235 mm
Width
191 mm
Age
Professional/practitioner, P, 06
Language
Product language
Engelsk
Format
Product format
Heftet
Number of pages
71
Original title
An Introduction to Kalman Filtering with MATLAB Examples