Welcome!

Building MZH
The Research Training Group 2224 on Parameter Identification is happy to host an autumn school on the intersection of deep learning and inverse problems. It takes place at the University of Bremen, November 04 - 08, 2019.
The number of successful applications of deep learning in the context of inverse problems rapidly grows. In this autumn school we lay the foundations of both machine learning and inverse problems, as well as cover current research topics in their intersection. The autumn school targets advanced Master students, PhD students and PostDocs working on inverse problems, who are interested in the intersection of deep learning and inverse problems.

Lecturers

Carola-Bibiane Schönlieb (University of Cambridge)
Markus Haltmeier (University of Innsbruck)
Martin Benning (Queen Mary University of London)
Matthias Bethge (Max Planck Institute, Tübingen)
Michael Möller (University of Siegen)
Nihat Ay (Max Planck Institute, Leipzig)
Ozan Öktem (KTH Stockholm)
Simon Arridge (University College London)

Program

Registration will start on Monday at 8:15.

 

Monday 04.11.

Tuesday 05.11.

Wednesday 06.11.

Thursday 07.11.

Friday 08.11.

09:00 - 10:30

Nihat Ay

Matthias Bethge

Markus Haltmeier

Carola-Bibiane Schönlieb

Simon Arridge

10:30 - 11:00

Coffee 

Coffee 

Coffee 

Coffee 

Coffee 

11:00 - 12:30

Nihat Ay

Matthias Bethge

Ozan Öktem

Simon Arridge

Martin Benning

12:30 - 14:00

Lunch

Lunch

Lunch

Lunch

Lunch

14:00 - 15:30

Michael Möller

Markus Haltmeier

Ozan Öktem

 

Martin Benning

15:30 - 16:00

Coffee 

Coffee  +

Poster Session

Coffee 

Closing

16:00 - 17:30

Michael Möller

Carola-Bibiane Schönlieb

 

 

 

 

 

 

 

Evening

 

19:00 Night-watchman tour

19:30 Conference Dinner

 

 

Lectures

Speaker

Topic

Nihat Ay

Artificial Neural Networks and Machine Learning: Theoretical Foundations

Michael Möller

Optimization of Deep Neural Networks

Matthias Bethge

1) Robust Decision Making

2) Adversarial Robustness

Markus Haltmeier

1) Regularization of Inverse Problems and Null Space Networks

2) Data driven regularizers for Inverse Problems

Ozan Öktem

Bayesian Inversion and Deep Learning

Carola-Bibiane Schönlieb

Learning of regularization for Inverse Problems

Simon Arridge

1) Combining learned and model-based approaches for Inverse Problems

2) Learned PDE methods for forward and Inverse Problems

Martin Benning

1) Iterative methods in Inverse Problems and Machine Learning

2) Nonlinear spectral transformation in Inverse Problems and Machine Learning

Organization committee

Christian Etmann (University of Bremen, Germany)
Daniel Otero Baguer (University of Bremen, Germany)
Jens Behrmann (University of Bremen, Germany)
Sören Dittmer (University of Bremen, Germany)
Dr. Tobias Kluth (University of Bremen, Germany)
Prof. Dr. Dr. h.c. Peter Maass (University of Bremen, Germany)

Acknowledgments

We gratefully acknowledge the support of this summer school by the DFG Research Training Group 2224 on Parameter Identification at the Center for Industrial Mathematics, University of Bremen.
Thanks to Matthias Knauer for his help in setting up this website.