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An Introduction to the Kalman Filter (1995)

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by Greg Welch , Gary Bishop
Venue:UNIVERSITY OF NORTH CAROLINA AT CHAPEL HILL
Citations:445 - 12 self
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BibTeX

@MISC{Welch95anintroduction,
    author = {Greg Welch and Gary Bishop},
    title = {An Introduction to the Kalman Filter},
    year = {1995}
}

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Abstract

In 1960, R.E. Kalman published his famous paper describing a recursive solution to the discrete-data linear filtering problem. Since that time, due in large part to advances in digital computing, the Kalman filter has been the subject of extensive research and application, particularly in the area of autonomous or assisted navigation. The Kalman filter is a set of mathematical equations that provides an efficient computational (recursive) means to estimate the state of a process, in a way that minimizes the mean of the squared error. The filter is very powerful in several aspects: it supports estimations of past, present, and even future states, and it can do so even when the precise nature of the modeled system is unknown. The purpose of this paper is to provide a practical introduction to the discrete Kalman filter. This introduction includes a description and some discussion of the basic discrete Kalman filter, a derivation, description and some discussion of the extended Kalman filter, and a relatively simple (tangible) example with real numbers & results.

Citations

1446 A new approach to linear filtering and prediction problems - Kalman - 1960
576 Applied Optimal Estimation - Gelb - 1974
135 1979]: Stochastic Models - MAYBECK
90 Filtering: Theory and Practice - Grewal, Andrew - 2001
87 A general method for approximating nonlinear transformations of probability distributions - Julier, Uhlmann
58 Least-squares estimation: From gauss to kalman - Sorenson - 1970
55 Optimal Estimation with an Introduction to Stochastic Control Theory - Lewis - 1986
11 Introduction to Control Theory, 2nd Edition - Jacobs - 1993
2 Also see: “A New Approach for Filtering Nonlinear Systems” by - Julier, Uhlmann, et al.
1 Also see: "A New Approach for Filtering Nonlinear Systems" by - Julier, Uhlmann, et al.
1 A General Method of Approximating Nonlinear - Julier, Simon, et al. - 1995
The National Science Foundation
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