Our systems are now restored following recent technical disruption, and we’re working hard to catch up on publishing. We apologise for the inconvenience caused. Find out more

Recommended product

Popular links

Popular links


Bayesian Filtering and Smoothing

Bayesian Filtering and Smoothing

Bayesian Filtering and Smoothing

Simo Särkkä, Aalto University, Finland
No date available
Adobe eBook Reader
9781107439627

    Filtering and smoothing methods are used to produce an accurate estimate of the state of a time-varying system based on multiple observational inputs (data). Interest in these methods has exploded in recent years, with numerous applications emerging in fields such as navigation, aerospace engineering, telecommunications and medicine. This compact, informal introduction for graduate students and advanced undergraduates presents the current state-of-the-art filtering and smoothing methods in a unified Bayesian framework. Readers learn what non-linear Kalman filters and particle filters are, how they are related, and their relative advantages and disadvantages. They also discover how state-of-the-art Bayesian parameter estimation methods can be combined with state-of-the-art filtering and smoothing algorithms. The book's practical and algorithmic approach assumes only modest mathematical prerequisites. Examples include Matlab computations, and the numerous end-of-chapter exercises include computational assignments. Matlab code is available for download at www.cambridge.org/sarkka, promoting hands-on work with the methods.

    • The first book to draw together estimation, smoothing and Monte Carlo methods
    • Examples and exercises demonstrate practical use of the algorithms
    • Matlab code is available for download, allowing readers hands-on work with the methods

    Product details

    No date available
    Adobe eBook Reader
    9781107439627
    0 pages
    0kg
    55 b/w illus. 60 exercises
    This ISBN is for an eBook version which is distributed on our behalf by a third party.

    Table of Contents

    • Preface
    • Symbols and abbreviations
    • 1. What are Bayesian filtering and smoothing?
    • 2. Bayesian inference
    • 3. Batch and recursive Bayesian estimation
    • 4. Bayesian filtering equations and exact solutions
    • 5. Extended and unscented Kalman filtering
    • 6. General Gaussian filtering
    • 7. Particle filtering
    • 8. Bayesian smoothing equations and exact solutions
    • 9. Extended and unscented smoothing
    • 10. General Gaussian smoothing
    • 11. Particle smoothing
    • 12. Parameter estimation
    • 13. Epilogue
    • Appendix: additional material
    • References
    • Index.
    Resources for
    Type
    Estimate pendulum state with SLF and SLRTS as in Examples 5.2 and 9.2
    Size: 2.84 KB
    Type: application/octet-stream
    Simulate pendulum data for the examples
    Size: 1.3 KB
    Type: application/octet-stream
    Draws samples from a discrete distribution
    Size: 1.16 KB
    Type: application/octet-stream
    Estimate pendulum state with UKF and URTS as in Examples 5.3 and 9.3
    Size: 4.65 KB
    Type: application/octet-stream
    Estimate pendulum state with CKF and CRTS as in Examples 6.2 and 10.2
    Size: 4.08 KB
    Type: application/octet-stream
    Stratified resampling
    Size: 1.31 KB
    Type: application/octet-stream
    All m-files as a single zip-archive
    Size: 26.69 KB
    Type: application/zip
    Estimate pendulum state with GHKF and GHRTS as in Examples 6.1 and 10.1
    Size: 4.97 KB
    Type: application/octet-stream
    Download the EKF/UKF toolbox
    Supplementary Material for Exercise 4.6
    Size: 4.7 KB
    Type: application/octet-stream
    Pendulum parameter posterior estimation with GHKF and PMCMC as in Example 12.2
    Size: 5.6 KB
    Type: application/octet-stream
    Supplementary Material for Exercise 5.5
    Size: 4.98 KB
    Type: application/octet-stream