Invertible Neural Networks versus MCMC for Posterior Reconstruction in
Grazing Incidence X-Ray Fluorescence
Scale Space and Variational Methods in Computer Vision (SSVM), 2021
Abstract
Grazing incidence X-ray fluorescence is a non-destructive technique for analyzing the geometry and compositional parameters of nanostructures appearing e.g. in computer chips. In this paper, we propose to reconstruct the posterior parameter distribution given a noisy measurement generated by the forward model by an appropriately learned invertible neural network. This network resembles the transport map from a reference distribution to the posterior. We demonstrate by numerical comparisons that our method can compete with established Markov Chain Monte Carlo approaches, while being more efficient and flexible in applications.
View on arXivComments on this paper
