Single-View Tomographic Reconstruction Using Learned Primal Dual
About
The Learned Primal Dual (LPD) method has shown promising results in various tomographic reconstruction modalities, particularly under challenging acquisition restrictions such as limited viewing angles or a limited number of views. We investigate the performance of LPD in a more extreme case: single-view tomographic reconstructions of axially-symmetric targets. This study considers two modalities: the first assumes low-divergence or parallel X-rays. The second models a cone-beam X-ray imaging testbed. For both modalities, training data is generated using closed-form integral transforms, or physics-based ray-tracing software, then corrupted with blur and noise. Our results are then compared against common numerical inversion methodologies.
Sean Breckling, Matthew Swan, Keith D. Tan, Derek Wingard, Brandon Baldonado, Yoohwan Kim, Ju-Yeon Jo, Evan Scott, Jordan Pillow• 2025
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Tomographic reconstruction | Synthetic Evaluation Set (1000 reconstructions) | PSNR34.1 | 4 | |
| Tomographic reconstruction | Synthetic Scenes 500 x 128-pixel (evaluation) | PSNR44.1 | 4 |
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