Seminario del 2025
Giugno
09
2025
Julián Tachella (CNRS, ENS de Lyon Laboratoire de physique)
Seminario di analisi numerica
This seminar will cover some concepts and recent advances in the emerging field of self-supervised learning methods for solving imaging inverse problems with deep neural networks. Self-supervised learning is a fundamental tool deploying deep learning solutions in scientific and medical imaging applications where obtaining a large dataset of ground-truth images is very expensive or impossible. The seminar will present different self-supervised methods, discuss their theoretical underpinnings and present practical self-supervised imaging applications. Finally, I will discuss my experience developing and collaborating on open-source software for science (https://deepinv.github.io/), and some of the lessons learned along the way.