Tatiana Bubba - Deeply learned regularization for limited angle computed tomography, with a little help from microlocal analysis
|16 November 2022
|15:00 - 16:00
|What is it:
|Department of Mathematics
|Who is it for:
|University staff, External researchers, Current University students
|Dr Tatiana Bubba
Join us for this research seminar, part of the SQUIDS (Statistics, quantification of uncertainty, inverse problems and data science) seminar series.
Abstract: In recent years, limited angle CT has become a challenging testing ground for several theoretical and numerical studies, where both variational regularization and data-driven techniques have been investigated extensively. In this talk, I will present hybrid reconstruction frameworks that combine model-based regularization with data-driven deep learning by relaying on the interplay between sparse regularization theory, harmonic analysis and microlocal analysis. The underlying idea is to only learn the part that can provably not be handled by model-based methods, while applying the theoretically controllable sparse regularization technique to the remaining parts. The numerical results show that these approaches significantly surpasses both pure model- and more data-based reconstruction methods.
Dr Tatiana Bubba
Organisation: University of Bath
Travel and Contact Information
Frank Adams 2
Alan Turing Building