English

Low-Dose CT with Deep Learning Regularization via Proximal Forward Backward Splitting

Image and Video Processing 2020-08-26 v1

Abstract

Low dose X-ray computed tomography (LDCT) is desirable for reduced patient dose. This work develops image reconstruction methods with deep learning (DL) regularization for LDCT. Our methods are based on unrolling of proximal forward-backward splitting (PFBS) framework with data-driven image regularization via deep neural networks. In contrast with PFBS-IR that utilizes standard data fidelity updates via iterative reconstruction (IR) method, PFBS-AIR involves preconditioned data fidelity updates that fuse analytical reconstruction (AR) method and IR in a synergistic way, I.e. fused analytical and iterative reconstruction (AIR). The results suggest that DL-regularized methods (PFBS-IR and PFBS-AIR) provided better reconstruction quality from conventional wisdoms (AR or IR), and DL-based postprocessing method (FBPConvNet). In addition, owing to AIR, PFBS-AIR noticeably outperformed PFBS-IR.

Keywords

Cite

@article{arxiv.1909.09773,
  title  = {Low-Dose CT with Deep Learning Regularization via Proximal Forward Backward Splitting},
  author = {Qiaoqiao Ding and Gaoyu Chen and Xiaoqun Zhang and Qiu Huang and Hui Jiand Hao Gao},
  journal= {arXiv preprint arXiv:1909.09773},
  year   = {2020}
}

Comments

8pages 6 figures

R2 v1 2026-06-23T11:22:01.138Z