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Brune, Christoph: 4D imaging in tomography and optical nanoscopy. 2010
Inhalt
Introduction
Motivation and Contributions
Organization of the Work
Variational Methods
Motivation: Inverse Problems
Bayesian Modeling
Variational Calculus
Function Spaces and Total Variation
Differentiability and Optimality
Convex Analysis and Bregman Distances
Introduction
Subdifferential Calculus
Legendre-Fenchel Duality
Bregman distances
Algorithms and Error Estimation
Introduction
Primal Bregman Iteration
Dual Bregman Iteration
Bregman and Error Forgetting
Splitting Methods
Saddle Point Problems
Uzawa Methods
Augmented Lagrangian Methods
The Splitting Zoo
Forward-Backward Splitting and AMA
ADMM and DRS and Split Bregman
Bregmanized Operator Splitting and Inexact Uzawa
3D Imaging
Introduction
Modeling and EM Algorithm
Model for Data Acquisition
Statistical Problem Formulation of Image Reconstruction
Reconstruction Method: EM Algorithm
EM-TV Reconstruction Method
Algorithm FB-EM-TV
Forward-Backward-Splitting
Analysis
Assumptions, Definitions and Preliminary Results
Well-Posedness of the Minimization Problem
Positivity Preservation of FB-EM-TV
Convergence Results
Numerical Realization of weighted ROF
Dual Implementation
Contrast Enhancement via Bregman Iterations
Primal Bregman-EM-TV
Dual-Bregman-EM-TV
3D Reconstruction in Nanoscopy and PET
Applications
Optical Nanoscopy
Positron Emission Tomography (PET)
Results
2D Deconvolution in Optical Nanoscopy
2D PET Reconstruction in Nuclear Medicine
2D Primal and dual Bregman in Optical Nanoscopy
3D Deconvolution in Optical Nanoscopy
4D Imaging
Introduction
Optical Flow and Tracking
Optimal Transport and Mass Conservation
Full Joint 4D Model
Optical Flow and Tracking
Introduction
Model Derivation
Data Fidelities
Robustness
Regularization
Image-Driven Regularization
Flow-Driven Regularization
3D Optical Flow-TV
Model: Optical Flow-TV
Algorithm: Split Bregman Optical Flow-TV
Numerical Results
Results in Computed Tomography
Compressible versus Incompressible Flows
Optimal Transport
Continuum mechanics
Mass conservation
Monge´s Transport Problem
The Benamou-Brenier Formulation
4D Image Reconstruction in Nanoscopy and PET
4D Model - Reconstruction and Optimal Transport
4D Model - Space-Time L2 Regularization
4D Model - Space-Time TV regularization
Existence
Uniqueness
Numerical Realization: Newton-SQP for the L2 case
Optimality Conditions - KKT System
Newton-SQP Algorithm
Line-Search and Multigrid Preconditioning
Numerical Realization: Splitting Methods for the TV case
Inexact Uzawa & Bregmanized Operator Splitting
DCT and CUDA and Parallelization
Results - Denoising
Results - Deblurring
Results - Tomography
Summary and Open Questions
Bibliography