Image for An Introduction to Compressed Sensing

An Introduction to Compressed Sensing

Part of the Computational Science and Engineering 22 series
See all formats and editions

Compressed sensing is a relatively recent area of research that refers to the recovery of high-dimensional but low-complexity objects from a limited number of measurements.

The topic has applications to signal/image processing and computer algorithms, and it draws from a variety of mathematical techniques such as graph theory, probability theory, linear algebra, and optimization.

The author presents significant concepts never before discussed as well as new advances in the theory, providing an in-depth initiation to the field of compressed sensing. An Introduction to Compressed Sensing contains substantial material on graph theory and the design of binary measurement matrices, which is missing in recent texts despite being poised to play a key role in the future of compressed sensing theory.

It also covers several new developments in the field and is the only book to thoroughly study the problem of matrix recovery.

The book supplies relevant results alongside their proofs in a compact and streamlined presentation that is easy to navigate. The core audience for this book is engineers, computer scientists, and statisticians who are interested in compressed sensing.

Professionals working in image processing, speech processing, or seismic signal processing will also find the book of interest.

Read More
Special order line: only available to educational & business accounts. Sign In
£82.80 Save 10.00%
RRP £92.00
Product Details
1611976111 / 9781611976113
Paperback / softback
30/01/2020
United States
English
341 pages.
Professional & Vocational Learn More