Advanced Course of Inverse Problems

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Lecturer
Amaya Kenji 
Place
Fri1-2(W832)  
Credits
Lecture1  Exercise0  Experiment0
Code
77006
Syllabus updated
2013/9/20
Lecture notes updated
2013/9/20
Semester
Fall Semester

Outline of lecture

In this course we will define inverse problems and discuss some general methodology for their solution. In particular we will focus on linear inverse problem. Using these tools, we will study some classic and modern inverse problems. About half of the course will be theoretical development and the other half will be application to specific problems.

Purpose of lecture

This course will provides full details on a vriety of inverse problem-solving techniques, includes examples and algorithms.

Plan of lecture

1. Introduction / Linear Algebra
2. Linear Inverse Problems
3. Probability
4. Singular value decomposition
5. Nonlinear inverse problems
6. Generalized Inverse
7. Least Squares (smoothness, weighting)
8. Maximum Liklihood and EM Algorithm
9. Baysian Estimation
10. Theory of the Computed Tomography

Textbook and reference

""Inverse engineering hand book"" K.A.Woodbury, CRC Press
""Computed Tomography,"" J.Hsieh, SPIE Press

Related and/or prerequisite courses

This class requires knowledge of fundamentals on the numerical analysis the signal processing in undergraduate levels.

Evaluation

Evaluation will be based on the term-end examination.

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