This book describes the classical smoothing, filtering and prediction techniques together with some more recently developed embellishments for improving performance within applications. It aims to present the subject in an accessible way, so that it can serve as a practical guide for undergraduates and newcomers to the field. The material is organised as a ten-lecture course. The foundations are laid in Chapters 1 and 2, which explain minimum-mean-square-error solution construction and asymptotic behaviour. Chapters 3 and 4 introduce continuous-time and discrete-time minimum-variance filtering. Generalisations for missing data, deterministic inputs, correlated noises, direct feedthrough terms, output estimation and equalisation are describe...
Filtering and prediction is about observing moving objects when the observations are corrupted by ra...
This chapter provides an introduction to smoothing methods in time series analysis, namely local pol...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
Cover title.Includes bibliographical references.Supported in part by the National Science Foundation...
The book deals extensively with polynomial filters, namely, fixed-memory, expanding-memory and fadin...
The algorithm is developed for generating the optimal smoothed estimate xˆ(t|t+T) of the state x(t) ...
We present a general probabilistic perspective on Gaussian filtering and smoothing. This allows us t...
A new approach to robust filtering, prediction and smoothing of discretetime signal vectors is prese...
This tutorial is dedicated to our long-suffering 442 students, and to the excellent authors from who...
State-space smoothing has found many applications in science and engineering. Under linear and Gauss...
The minimum-variance smoother solution for input estimation is described and it is shown that the re...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
This thesis considers optimal linear least-squares filtering smoothing prediction and regulation for...
The purpose of this book is to provide graduate students and practitioners with traditional methods ...
Filtering and prediction is about observing moving objects when the observations are corrupted by ra...
This chapter provides an introduction to smoothing methods in time series analysis, namely local pol...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
Cover title.Includes bibliographical references.Supported in part by the National Science Foundation...
The book deals extensively with polynomial filters, namely, fixed-memory, expanding-memory and fadin...
The algorithm is developed for generating the optimal smoothed estimate xˆ(t|t+T) of the state x(t) ...
We present a general probabilistic perspective on Gaussian filtering and smoothing. This allows us t...
A new approach to robust filtering, prediction and smoothing of discretetime signal vectors is prese...
This tutorial is dedicated to our long-suffering 442 students, and to the excellent authors from who...
State-space smoothing has found many applications in science and engineering. Under linear and Gauss...
The minimum-variance smoother solution for input estimation is described and it is shown that the re...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
Many problems in science and engineering involve estimating a dynamic signal from indirect measureme...
This thesis considers optimal linear least-squares filtering smoothing prediction and regulation for...
The purpose of this book is to provide graduate students and practitioners with traditional methods ...
Filtering and prediction is about observing moving objects when the observations are corrupted by ra...
This chapter provides an introduction to smoothing methods in time series analysis, namely local pol...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...