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Robust Statistics for Signal Processing
Cambridge University Press, 11/8/2018
EAN 9781107017412, ISBN10: 1107017416
Hardcover, 312 pages, 25.4 x 17.8 x 1.8 cm
Language: English
Understand the benefits of robust statistics for signal processing with this authoritative yet accessible text. The first ever book on the subject, it provides a comprehensive overview of the field, moving from fundamental theory through to important new results and recent advances. Topics covered include advanced robust methods for complex-valued data, robust covariance estimation, penalized regression models, dependent data, robust bootstrap, and tensors. Robustness issues are illustrated throughout using real-world examples and key algorithms are included in a MATLAB Robust Signal Processing Toolbox accompanying the book online, allowing the methods discussed to be easily applied and adapted to multiple practical situations. This unique resource provides a powerful tool for researchers and practitioners working in the field of signal processing.
1. Introduction and foundations
2. Robust estimation
the linear regression model
3. Robust penalized regression in the linear model
4. Robust estimation of location and scatter (covariance) matrix
5. Robustness in sensor array processing
6. Tensor models and robust statistics
7. Robust filtering
8. Robust methods for dependent data
9. Robust spectral estimation
10. Robust bootstrap methods
11. Real-life applications.