Variational Methods in Imaging

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This book is devoted to the study of variational methods in imaging. The presentation is mathematically rigorous and covers a detailed treatment of the approach from an inverse problems point of view.

Key Features:

- Introduces variational methods with motivation from the deterministic, geometric, and stochastic point of view

- Bridges the gap between regularization theory in image analysis and in inverse problems

- Presents case examples in imaging to illustrate the use of variational methods e.g. denoising, thermoacoustics, computerized tomography

- Discusses link between non-convex calculus of variations, morphological analysis, and level set methods

- Analyses variational methods containing classical analysis of variational methods, modern analysis such as G-norm properties, and non-convex calculus of variations

- Uses numerical examples to enhance the theory

This book is geared towards graduate students and researchers in applied mathematics. It can serve as a main text for graduate courses in image processing and inverse problems or as a supplemental text for courses on regularization. Researchers and computer scientists in the area of imaging science will also find this book useful.

Author(s): Otmar Scherzer, Markus Grasmair, Harald Grossauer, Markus Haltmeier, Frank Lenzen (auth.)
Series: Applied Mathematical Sciences 167
Edition: 1
Publisher: Springer-Verlag New York
Year: 2009

Language: English
Pages: 320
Tags: Calculus of Variations and Optimal Control; Optimization; Image Processing and Computer Vision; Signal, Image and Speech Processing; Numerical Analysis; Imaging / Radiology

Front Matter....Pages I-XIII
Front Matter....Pages 1-1
Case Examples of Imaging....Pages 3-25
Image and Noise Models....Pages 27-49
Front Matter....Pages 51-51
Variational Regularization Methods for the Solution of Inverse Problems....Pages 53-113
Convex Regularization Methods for Denoising....Pages 115-158
Variational Calculus for Non-convex Regularization....Pages 159-183
Semi-group Theory and Scale Spaces....Pages 185-203
Inverse Scale Spaces....Pages 205-218
Front Matter....Pages 219-219
Functional Analysis....Pages 221-238
Weakly Differentiable Functions....Pages 239-272
Convex Analysis and Calculus of Variations....Pages 273-286
Back Matter....Pages 287-320