English

3D Photon Counting CT Image Super-Resolution Using Conditional Diffusion Model

Computer Vision and Pattern Recognition 2024-08-29 v1 Signal Processing

Abstract

This study aims to improve photon counting CT (PCCT) image resolution using denoising diffusion probabilistic models (DDPM). Although DDPMs have shown superior performance when applied to various computer vision tasks, their effectiveness has yet to be translated to high dimensional CT super-resolution. To train DDPMs in a conditional sampling manner, we first leverage CatSim to simulate realistic lower resolution PCCT images from high-resolution CT scans. Since maximizing DDPM performance is time-consuming for both inference and training, especially on high-dimensional PCCT data, we explore both 2D and 3D networks for conditional DDPM and apply methods to accelerate training. In particular, we decompose the 3D task into efficient 2D DDPMs and design a joint 2D inference in the reverse diffusion process that synergizes 2D results of all three dimensions to make the final 3D prediction. Experimental results show that our DDPM achieves improved results versus baseline reference models in recovering high-frequency structures, suggesting that a framework based on realistic simulation and DDPM shows promise for improving PCCT resolution.

Keywords

Cite

@article{arxiv.2408.15283,
  title  = {3D Photon Counting CT Image Super-Resolution Using Conditional Diffusion Model},
  author = {Chuang Niu and Christopher Wiedeman and Mengzhou Li and Jonathan S Maltz and Ge Wang},
  journal= {arXiv preprint arXiv:2408.15283},
  year   = {2024}
}

Comments

17th International Meeting on Fully 3D Image Reconstruction in Radiology and Nuclear Medicine, Stony Brook, NY, USA, 2023 [arXiv:2310.16846]

R2 v1 2026-06-28T18:25:47.842Z