Statistical Interior Tomography via L1 Norm Dictionary Learning without Assuming an Object Support

Tomography. 2022 Sep 2;8(5):2218-2231. doi: 10.3390/tomography8050186.

Abstract

Interior tomography of X-ray computed tomography (CT) has many advantages, such as a lower radiation dose and lower detector hardware cost compared to traditional CT. However, this imaging technique only uses the projection data passing through the region of interest (ROI) for imaging; accordingly, the projection data are truncated at both ends of the detector, so the traditional analytical reconstruction algorithm cannot satisfy the demand of clinical diagnosis. To solve the above limitations, in this paper we propose a high-quality statistical iterative reconstruction algorithm that uses the zeroth-order image moment as novel prior knowledge; the zeroth-order image moment can be estimated in the projection domain using the Helgason-Ludwig consistency condition. Then, the L1norm of sparse representation, in terms of dictionary learning, and the zeroth-order image moment constraints are incorporated into the statistical iterative reconstruction framework to construct an objective function. Finally, the objective function is minimized using an alternating minimization iterative algorithm. The chest CT image simulated and CT real data experimental results demonstrate that the proposed approach can remove shift artifacts effectively and has superior performance in removing noise and persevering fine structures than the total variation (TV)-based approach.

Keywords: dictionary learning; direct current component; interior tomography; statistical iterative reconstruction.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Artifacts
  • Image Processing, Computer-Assisted* / methods
  • Phantoms, Imaging
  • Tomography, X-Ray Computed* / methods

Grants and funding

This work was supported by Natural Science Foundation of China Grant Number 61976176 and Natural Science Basic Research Program of Shaanxi Grant Number 2022JM-017.