Normalizing Flows for Bayesian Experimental Design in Imaging Applications
Title | Normalizing Flows for Bayesian Experimental Design in Imaging Applications |
Publication Type | Conference |
Year of Publication | 2024 |
Authors | Rafael Orozco, Abhinav Prakash Gahlot, Peng Chen, Mathias Louboutin, Felix J. Herrmann |
Conference Name | SIAM Conference on Uncertainty Quantification |
Month | 03 |
Keywords | expected information gain, Normalizing flows, optimal experimental design, SIAM |
Abstract | Neural density estimators such as normalizing flows have shown promise for estimation of the Bayesian posterior in a variety of imaging problems. Few works have explored how to practically exploit the probabilistic information contained in the full Bayesian solution of the inverse problem. Here we explore a simple modification to conditional normalizing flow training that enables Bayesian experimental design without modifying existing architectures. Based on a relationship between the expected information gain and maximum-likelihood training of normalizing flows, we show that experimental design can be achieved with the same training objective. We first verify that our method maximizes the expected information gain using a stylized problem. Then, we demonstrate our method can solve imaging problems in large scale medical and seismic applications. |
Notes | (SIAM UQ, Trieste) |
URL | https://slim.gatech.edu/Publications/Public/Conferences/SIAMUQ/2024/orozco2024SIAMUQboed |
DOI | 10.48550/arXiv.2402.18337 |
URL2 | |
Citation Key | orozco2024SIAMboed |