Date

2025-Jan-26

On the Interface of Optimization and Deep Learning for Computational Imaging

Abstract:

This session focuses on computational imaging methods at the interface of optimization and deep learning. Recent advances aiming at pairing these two areas has led to significant advancements in image reconstruction and enhancement. Optimization techniques traditionally provided mathematically rigorous solutions for imaging problems, but they often struggled with high-dimensional data and non-linearities. Deep learning, particularly neural networks, has transformed this landscape by learning complex mappings from data, enabling faster and higher expressivity in image solutions. When combined, these approaches harness optimization algorithms to refine and guide the training of deep networks, resulting in robust models that are highly efficient for performing computational imaging tasks.

Organiser & chair: Audrey Repetti

Session Schedule

17:30 - 17:50
Invited talk - An Optimization View of Deep Learning Methods: Advantages and Challenges
Audrey Repetti
17:50 - 18:10
Invited talk - Restoration Deep Networks as Image Priors
Ulugbek Kamilov
18:10 - 18:30
Invited talk - Iteratively Refined Image Reconstruction with Learned Attentive Regularizers
Sebastian Neumayer
18:30 - 18:50
Invited talk - Some Results on the Stability of Unrolled Algorithms
Jean-Christophe Pesquet
18:50 - 19:10
Invited talk - Deep-PACO: Combining Multi-spectral Data with Statistical and Deep-learning Models for Improved Exoplanet Detection in Direct Imaging at High Contrast
Julien Mairal
19:10 - 20:30
Invited poster - Self-supervised Learning of Spatio-temporal Parameter Maps via Algorithmic Unrolling in Medical/biological Imaging
Luca Calatroni
19:10 - 20:30
Invited poster - Minimal Conditions on Deep Denoisers for Convergent Plug-and-Play Optimization and Sampling
Samuel Hurault
19:10 - 20:30
Contributed poster - TBC
TBC
19:10 - 20:30
Contributed poster - TBC
TBC
19:10 - 20:30
Contributed poster - TBC
TBC