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1
Introduction
2
Basic Inverse Problem
3
Optimization
4
Constraint Qualification
5
Variation Analysis Tools
6
Normal Cone
7
Optimality System
8
Directional Differentiability
9
Boolean Subdifferential
10
Theorem
11
The boolean subdifferential
12
Example
13
NonLocal Models
14
NonLocal Means
15
Comparison
16
Ylevel
17
Functional Analysis
18
Kernel Estimation
19
Implementation Details
20
Reconstruction Results
21
Questions
Description:
Explore nonlinear spectral decompositions in imaging and inverse problems in this SIAM-IS Virtual Seminar Series talk. Delve into a variational theory that generalizes classical spectral decompositions in linear filters and singular value decomposition of linear inverse problems to a nonlinear regularization setting in Banach spaces. Examine applications in imaging and data science, and learn about computing nonlinear eigenfunctions using gradient flows and power iterations. Cover topics such as basic inverse problems, optimization, constraint qualification, variation analysis tools, normal cones, optimality systems, directional differentiability, boolean subdifferential theorem, nonlocal models, functional analysis, kernel estimation, and implementation details. Gain insights from speaker Martin Burger of FAU as he presents "Nonlinear spectral decompositions in imaging and inverse problems" in this 59-minute seminar.

Nonlinear Spectral Decompositions in Imaging and Inverse Problems

Society for Industrial and Applied Mathematics
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