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Regularizing INR with diffusion prior self-supervised 3D reconstruction of neutron computed tomography data

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Recently, generative diffusion priors have made huge strides as inverse problem solvers, including the ability to be adapted for inference on out-of-distribution data. Concurrently, implicit neural representations (INRs) have emerged as fast and lightweight inverse imaging solvers that are amenable to hybrid approaches that combine learned priors with traditional inverse problem formulations. In this paper, we present a diffusive computed tomography (CT) inversion framework for regularizing INRs called Diffusive INR (DINR), designed to enable high-quality reconstruction from sparse-view neutron CT. Pretrained purely on synthetic data, DINR is evaluated on simulated and experimentally obtained observations of concrete microstructures, where traditional reconstruction methods suffer substantial degradation when the number of views is reduced. Our approach delivers superior performance, reduces reconstruction artifacts, and achieves gains in PSNR and SSIM, enabling accurate micro-structural characterization even under extreme data limitations compared to state-of-the-art sparse-view reconstruction techniques.

Maliha Hossain, Haley Duba-Sullivan, Amirkoushyar Ziabari• 2026

Related benchmarks

TaskDatasetResultRank
3D ReconstructionReal experimental neutron CT scanner dataset
PSNR31.37
20
CT Image ReconstructionSimulated Concrete Cylinder Phantom 4 views
PSNR26.27
4
CT Image ReconstructionSimulated Concrete Cylinder Phantom 8 views
PSNR28.56
4
CT Image ReconstructionSimulated Concrete Cylinder Phantom 16 views
PSNR31.3
4
CT Image ReconstructionSimulated Concrete Cylinder Phantom 32 views
PSNR33.43
4
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