Date

2025-Jan-30

High-dimensional Bayesian Astronomical Imaging and Inverse Problems with Machine Learning

Abstract:

Recent progress in machine learning and generative modeling has opened new avenues to tackle previously insoluble high-dimensional inverse problems in astronomy and astrophysics, particularly in Bayesian image reconstruction. While these methodologies show great promise in a range of applications from field-level cosmology to differentiable optics systems, multiple open problems stand in the way of groundbreaking discoveries. This session will explore recent applications and proposals addressing the development of computationally tractable methodologies to reconstruct posterior samples in imaging problems. We will also discuss assessing their accuracy in real-world settings and addressing the problem of robustness to distributional shifts, which remains a key focus of current research.

Organiser & chair: Laurence Perreault Levasseur

Session Schedule

17:30 - 17:50
Invited talk - Data-Driven High-Dimensional Inverse Problems: A Journey through Strong Lensing Data Analysis and Other Imaging Problems
Laurence Perreault-Levasseur
17:50 - 18:10
Invited talk - Towards Multi-modal Data-driven Regularization for Inverse Problems
François Lanusse
18:10 - 18:30
Invited talk - Complex Galaxy Models with Conditional Diffusion Models
Peter Melchior
18:30 - 18:50
Invited talk - Probabilistic Reconstructions of the Cosmic Web's and Its Formation History: Current State and Bottlenecks
Carolina Cuesta-Lazarro
18:50 - 19:10
Invited talk - Differentiable Optics with JWST and Machine Learning for Direct Imaging of Exoplanets
Peter Tuthill
19:10 - 20:30
Invited poster - Scalable Simulation-based Inference for Cosmology
Noemi Montel
19:10 - 20:30
Invited poster - Score Based Models for Bayesian Image Reconstruction in Strong Lensing and Astronomy
Alexandre Adam
19:10 - 20:30
Contributed poster - TBC
TBC
19:10 - 20:30
Contributed poster - TBC
TBC
19:10 - 20:30
Contributed poster - TBC
TBC