Projection-Based Correction for Enhancing Deep Inverse Networks
Abstract
Deep learning-based models have demonstrated remarkable success in solving illposed inverse problems; however, many fail to strictly adhere to the physical constraints imposed by the measurement process. In this work, we introduce a projection-based correction method to enhance the inference of deep inverse networks by ensuring consistency with the forward model. Specifically, given an initial estimate from a learned reconstruction network, we apply a projection step that constrains the solution to lie within the valid solution space of the inverse problem. We theoretically demonstrate that if the recovery model is a well-trained deep inverse network, the solution can be decomposed into range-space and null-space components, where the projection-based correction reduces to an identity transformation. Extensive simulations and experiments validate the proposed method, demonstrating improved reconstruction accuracy across diverse inverse problems and deep network architectures.
Cite
@article{arxiv.2505.15777,
title = {Projection-Based Correction for Enhancing Deep Inverse Networks},
author = {Jorge Bacca},
journal= {arXiv preprint arXiv:2505.15777},
year = {2025}
}