
Compressed Sensing for Magnetic Resonance Image Reconstruction
Angshul Majumdar(Author)
Cambridge University Press
Published on 26. February 2015
Book
Hardback
224 pages
978-1-107-10376-4 (ISBN)
Article exhausted; check different version
Description
Expecting the reader to have some basic training in liner algebra and optimization, the book begins with a general discussion on CS techniques and algorithms. It moves on to discussing single channel static MRI, the most common modality in clinical studies. It then takes up multi-channel MRI and the interesting challenges consequently thrown up in signal reconstruction. Off-line and on-line techniques in dynamic MRI reconstruction are visited. Towards the end the book broadens the subject by discussing how CS is being applied to other areas of biomedical signal processing like X-ray, CT and EEG acquisition. The emphasis throughout is on qualitative understanding of the subject rather than on quantitative aspects of mathematical forms. The book is intended for MRI engineers interested in the brass tacks of image formation; medical physicists interested in advanced techniques in image reconstruction; and mathematicians or signal processing engineers.
More details
Language
English
Place of publication
Cambridge
United Kingdom
Target group
Professional and scholarly
Dimensions
Height: 247 mm
Width: 189 mm
Thickness: 17 mm
Weight
600 gr
ISBN-13
978-1-107-10376-4 (9781107103764)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Angshul Majumdar
Compressed Sensing for Magnetic Resonance Image Reconstruction
E-Book
06/2017
Cambridge University Press
€109.99
Available for download
Person
Angshul Majumdar completed his Master's and PhD at the University of British Columbia in 2009 and 2012 respectively. He is currently Assistant Professor at Indraprastha Institute of Information Technology, New Delhi. His primary research interests are optimization algorithms for sparse vector recovery and low-rank matrix completion. The application areas of his research spans across medical imaging, biomedical signal processing, radar signal processing and collaborative filtering recommender systems.
Content
List of figures; List of tables; Foreword; Preface; Acknowledgements; Color plates; 1. Mathematical techniques; 2. Single channel static MR image reconstruction; 3. Multi-coil parallel MRI reconstruction; 4. Dynamic MRI reconstruction; 5. Applications in other areas; 6. Some open problems; Index; About the author.