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Compressive imaging: structure, sampling, learning. With contributions by Vegard Antun. (English) Zbl 1468.68001

Cambridge: Cambridge University Press (ISBN 978-1-108-42161-4/hbk; 978-1-108-37744-7/ebook). xvi, 602 p. (2021).
Publisher’s description: Accurate, robust and fast image reconstruction is a critical task in many scientific, industrial and medical applications. Over the last decade, image reconstruction has been revolutionized by the rise of compressive imaging. It has fundamentally changed the way modern image reconstruction is performed. This in-depth treatment of the subject commences with a practical introduction to compressive imaging, supplemented with examples and downloadable code, intended for readers without extensive background in the subject. Next, it introduces core topics in compressive imaging – including compressed sensing, wavelets and optimization – in a concise yet rigorous way, before providing a detailed treatment of the mathematics of compressive imaging. The final part is devoted to recent trends in compressive imaging: deep learning and neural networks. With an eye to the next decade of imaging research, and using both empirical and mathematical insights, it examines the potential benefits and the pitfalls of these latest approaches.

MSC:

68-01 Introductory exposition (textbooks, tutorial papers, etc.) pertaining to computer science
68T07 Artificial neural networks and deep learning
68U10 Computing methodologies for image processing
94A08 Image processing (compression, reconstruction, etc.) in information and communication theory
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