Podcast cover for "Single-View Tomographic Reconstruction Using Learned Primal Dual" by Sean Breckling et al.
Episode

Single-View Tomographic Reconstruction Using Learned Primal Dual

Dec 18, 20258:54
eess.IV
No ratings yet

Abstract

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.

Links & Resources

Authors

Cite This Paper

Year:2025
Category:eess.IV
APA

Breckling, S., Swan, M., Tan, K. D., Wingard, D., Baldonado, B., Kim, Y., Jo, J., Scott, E., Pillow, J. (2025). Single-View Tomographic Reconstruction Using Learned Primal Dual. arXiv preprint arXiv:2512.16065.

MLA

Sean Breckling, Matthew Swan, Keith D. Tan, Derek Wingard, Brandon Baldonado, Yoohwan Kim, Ju-Yeon Jo, Evan Scott, and Jordan Pillow. "Single-View Tomographic Reconstruction Using Learned Primal Dual." arXiv preprint arXiv:2512.16065 (2025).