DiffNR: Diffusion-Enhanced Neural Representation Optimization for Sparse-View 3D Tomographic Reconstruction
arXiv cs.CV / 4/24/2026
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Key Points
- DiffNR is a new framework that improves neural representation optimization for sparse-view 3D CT reconstruction by incorporating diffusion-based priors to reduce severe reconstruction artifacts.
- The method centers on SliceFixer, a single-step diffusion model that corrects artifacts in degraded slices, supported by specialized conditioning layers and carefully designed data curation for fine-tuning.
- During inference, SliceFixer periodically produces pseudo-reference volumes and uses auxiliary 3D perceptual supervision to better fix underconstrained regions in sparse-view reconstructions.
- Compared with approaches that repeatedly embed CT solvers into iterative denoising loops, DiffNR’s “repair-and-augment” strategy avoids frequent diffusion-model queries and improves runtime performance.
- Experiments on multiple settings show an average PSNR gain of 3.99 dB, strong cross-domain generalization, and efficient optimization.
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