Sparse Image and Signal Processing
This thoroughly updated new edition presents state-of-the-art sparse and multiscale image and signal processing. It covers linear multiscale geometric transforms, such as wavelet, ridgelet, or curvelet transforms, and non-linear multiscale transforms based on the median and mathematical morphology operators. Along with an up-to-the-minute description of required computation, it covers the latest results in inverse problem solving and regularization, sparse signal decomposition, blind source separation, in-painting, and compressed sensing. New chapters and sections cover multiscale geometric transforms for three-dimensional data (data cubes), data on the sphere (geo-located data), dictionary learning, and nonnegative matrix factorization. The authors wed theory and practice in examining applications in areas such as astronomy, including recent results from the European Space Agency's Herschel mission, biology, fusion physics, cold dark matter simulation, medical MRI, digital media, and forensics. MATLAB® and IDL code, available online at www.SparseSignalRecipes.info, accompany these methods and all applications.
- Allows the reader to approach the subject through the motivation of examples, or hands-on using software available for download, or through theory
- Information is topical, engaging and relevant for readers who are scientists, researchers and learners, in academia and in commercial settings
- Features cutting-edge themes such as compressed sensing
Reviews & endorsements
Review of previous edition: 'One of the main virtues of this book is the expert insight that the authors provide into several design and algorithmic choices that one can face when solving practical problems. The authors give some guidance into understanding how sparsity helps in signal and image processing, what some benefits of overcomplete representations are, when to use isotropic wavelets for image processing, why morphological diversity can be helpful, and how to choose between analysis and synthesis priors for regularization in inverse problems.' Michael B. Wakin, IEEE Signal Processing Magazine
Review of previous edition: 'The book's contents are well prepared for graduate-level students or advanced undergraduates who work in the field of image and signal processing or computer science. The book is also an indispensable resource for professionals looking to adopt innovative concepts for improving the performance of image processing.' Yan Gao, Optics and Photonics News
Review of previous edition: 'This is an excellent book devoted to an important domain of contemporary science.' D. Stanomir, Mathematical Reviews
Review of previous edition: 'A welcome addition to the image processing library.' T. Kubota, Computing Reviews
Product details
October 2015Hardback
9781107088061
428 pages
261 × 186 × 28 mm
1kg
194 b/w illus. 109 colour illus. 8 tables
Temporarily unavailable - available from TBC
Table of Contents
- 1. Introduction to the world of sparsity
- 2. The wavelet transform
- 3. Redundant wavelet transform
- 4. Nonlinear multiscale transforms
- 5. Multiscale geometric transforms
- 6. Sparsity and noise removal
- 7. Linear inverse problems
- 8. Morphological diversity
- 9. Sparse blind source separation
- 10. Dictionary learning
- 11. Three-dimensional sparse representations
- 12. Multiscale geometric analysis on the sphere
- 13. Compressed sensing
- 14. This book's take-home message.