Deep regularization networks for inverse problems with noisy operators
Journal:
arXiv
Published Date:
Jun 8, 2025
Abstract
A supervised learning approach is proposed for regularization of large
inverse problems where the main operator is built from noisy data. This is
germane to superresolution imaging via the sampling indicators of the inverse
scattering theory. We aim to accelerate the spatiotemporal regularization
process for this class of inverse problems to enable real-time imaging. In this
approach, a neural operator maps each pattern on the right-hand side of the
scattering equation to its affiliated regularization parameter. The network is
trained in two steps which entails: (1) training on low-resolution
regularization maps furnished by the Morozov discrepancy principle with
nonoptimal thresholds, and (2) optimizing network predictions through
minimization of the Tikhonov loss function regulated by the validation loss.
Step 2 allows for tailoring of the approximate maps of Step 1 toward
construction of higher quality images. This approach enables direct learning
from test data and dispenses with the need for a-priori knowledge of the
optimal regularization maps. The network, trained on low-resolution data,
quickly generates dense regularization maps for high-resolution imaging. We
highlight the importance of the training loss function on the network's
generalizability. In particular, we demonstrate that networks informed by the
logic of discrepancy principle lead to images of higher contrast. In this case,
the training process involves many-objective optimization. We propose a new
method to adaptively select the appropriate loss weights during training
without requiring an additional optimization process. The proposed approach is
synthetically examined for imaging damage evolution in an elastic plate. The
results indicate that the discrepancy-informed regularization networks not only
accelerate the imaging process, but also remarkably enhance the image quality
in complex environments.