GSNR: Graph Smooth Null-Space Representation for Inverse Problems
Romario Gualdr\'on-Hurtado, Roman Jacome, Rafael S. Suarez, Henry Arguello

TL;DR
GSNR introduces a graph-based null-space regularization method for inverse imaging problems, improving solution quality by constraining the null-space component with spectral graph modes.
Contribution
It proposes a novel null-space representation using spectral graph modes, enhancing inverse problem solvers with theoretical and practical benefits.
Findings
Up to 4.3 dB PSNR improvement over baseline methods.
Better null-space coverage and inference predictability.
Consistent performance gains across multiple inverse imaging tasks.
Abstract
Inverse problems in imaging are ill-posed, leading to infinitely many solutions consistent with the measurements due to the non-trivial null-space of the sensing matrix. Common image priors promote solutions on the general image manifold, such as sparsity, smoothness, or score function. However, as these priors do not constrain the null-space component, they can bias the reconstruction. Thus, we aim to incorporate meaningful null-space information in the reconstruction framework. Inspired by smooth image representation on graphs, we propose Graph-Smooth Null-Space Representation (GSNR), a mechanism that imposes structure only into the invisible component. Particularly, given a graph Laplacian, we construct a null-restricted Laplacian that encodes similarity between neighboring pixels in the null-space signal, and we design a low-dimensional projection matrix from the -smoothest…
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