Modern Regularisation
Abstract:
The availability of expressive regularizers is a very important component in solving ill-posed inverse problems in imaging. In recent years, hand-designed regularizers have been gradually replaced by data-driven ones. Provided sufficient training data is available, it is nowadays possible to learn tailored regularizers for a certain problem class. This usually leads to a huge increase in reconstruction quality, but the learned regularizers are usually much harder to analyse and it is much harder to give guarantees on convergence behaviour, generalisation ability, or reconstruction error. In this session, we will present and discuss the latest methods, techniques and applications in this cutting-edge field of research.
Organisers: Thomas Pock (Chair) & Philip Schniter (Committee member)
Session Schedule
- 17:30 - 17:50 Invited talk -
- An Introduction to Modern Regularisation
- Thomas Pock
- 17:50 - 18:10 Invited talk -
- Solving inverse problems in imaging via learned regularizers and learned image features
- Stancey Levine
- 18:10 - 18:30 Invited talk -
- Risk Control for Online Learning Models
- Yaniv Romano
- 18:30 - 18:50 Invited talk -
- Generative regularization approaches in imaging – a function space perspective
- Martin Holler
- 18:50 - 19:10 Invited talk -
- Critical point regularization with non-convex regularizers
- Markus Haltmeier
- 19:10 - 20:30 Invited poster -
- Adaptive Sparse Phase Recovery for Efficient Reconstruction of Holographic Lens-Free Images
- René Vidal
- 19:10 - 20:30 Contributed poster -
- Statistical Sparsity, Non-Convexity, and Smoothness, All in One Place: The Cauchy Penalty
- Alin Achim
- 19:10 - 20:30 Contributed poster -
- Modified Loss Functions for Improved Plug-and-Play Methods
- Danica B. Fliss*
- 19:10 - 20:30 Committee member poster -
- Deep regularization via bi-level optimization with adversarial regularization
- Philip Schniter
- 19:10 - 20:30 Committee member poster -
- Deep network series for large-scale high-dynamic range imaging
- Yves Wiaux