Statistical Image Processing and Multidimensional Modeling table of contents

The text is divided into three parts:

  •     Part I: Inverse Problems and Estimation
  •     Part II: Modelling of Random Fields
  •     Part III: Methods and Algorithms

The parts are designed to be complementary, respectively emphasizing mathematical theory, modeling, and algorithms. Click on the bold chapter headings below to expand / collapse details of the table of contents:

Part 0: Preamble and Introduction

Preamble and Introduction:

Part I: Inverse Problems and Estimation

Chapter 2: Inverse Problems

Chapter 3: Static Estimation and Sampling

Chapter 4: Dynamic Estimation and Sampling

Part II: Modelling of Random Fields

Chapter 5: Multidimensional Modelling

Chapter 6: Markov Random Fields

Chapter 7: Hidden Markov Models

Chapter 8: Changes of Basis

Part III: Methods and Algorithms

Chapter 9: Linear Systems Estimation

Chapter 10: Kalman Filtering and Domain Decomposition

Chapter 11: Sampling and Monte Carlo Methods

Appendices and Postmatter

Appendix A: Algebra

Appendix B: Statistics

Appendix C: Image Processing

Bibliography and Index