
2002 / xvi + 183 pages / Softcover / ISBN: 9780898715507 / List Price $78.50 / SIAM Member Price $54.95 / Order Code FR23
Inverse problems arise in a number of important practical applications, ranging from biomedical imaging to seismic prospecting. This book provides the reader with a basic understanding of both the underlying mathematics and the computational methods used to solve inverse problems. It also addresses specialized topics like image reconstruction, parameter identification, total variation methods, nonnegativity constraints, and regularization parameter selection methods.
Because inverse problems typically involve the estimation of certain quantities based on indirect measurements, the estimation process is often illposed. Regularization methods, which have been developed to deal with this illposedness, are carefully explained in the early chapters of Computational Methods for Inverse Problems. The book also integrates mathematical and statistical theory with applications and practical computational methods, including topics like maximum likelihood estimation and Bayesian estimation.
Several webbased resources are available to make this monograph interactive, including a collection of MATLAB mfiles used to generate many of the examples and figures. These resources enable readers to conduct their own computational experiments in order to gain insight. They also provide templates for the implementation of regularization methods and numerical solution techniques for other inverse problems. Moreover, they include some realistic test problems to be used to further develop and test various numerical methods.
Audience
Computational Methods for Inverse Problems is intended for graduate students and researchers in applied mathematics, engineering, and the physical sciences who may encounter inverse problems in their work.
Contents
Preface; Chapter 1: Introduction; Chapter 2: Analytical Tools; Chapter 3: Numerical Optimization Tools; Chapter 4: Statistical Estimation Theory; Chapter 5: Image Deblurring; Chapter 6: Parameter Identification; Chapter 7: Regularization Parameter Selection Methods; Chapter 8: Total Variation Regularization; Chapter 9: Nonnegativity Constraints; Bibliography; Index.
ISBN: 9780898715507