Good Things Come in Pairs: Paired Autoencoders for Inverse Problems
Journal:
arXiv
Published Date:
May 10, 2025
Abstract
In this book chapter, we discuss recent advances in data-driven approaches
for inverse problems. In particular, we focus on the \emph{paired autoencoder}
framework, which has proven to be a powerful tool for solving inverse problems
in scientific computing. The paired autoencoder framework is a novel approach
that leverages the strengths of both data-driven and model-based methods by
projecting both the data and the quantity of interest into a latent space and
mapping these latent spaces to provide surrogate forward and inverse mappings.
We illustrate the advantages of this approach through numerical experiments,
including seismic imaging and classical inpainting: nonlinear and linear
inverse problems, respectively. Although the paired autoencoder framework is
likelihood-free, it generates multiple data- and model-based reconstruction
metrics that help assess whether examples are in or out of distribution. In
addition to direct model estimates from data, the paired autoencoder enables
latent-space refinement to fit the observed data accurately. Numerical
experiments show that this procedure, combined with the latent-space initial
guess, is essential for high-quality estimates, even when data noise exceeds
the training regime. We also introduce two novel variants that combine
variational and paired autoencoder ideas, maintaining the original benefits
while enabling sampling for uncertainty analysis.