Sinogram Inpainting with Generative Adversarial Networks and Shape Priors

Tomography. 2023 Jun 13;9(3):1137-1152. doi: 10.3390/tomography9030094.

Abstract

X-ray computed tomography is a widely used, non-destructive imaging technique that computes cross-sectional images of an object from a set of X-ray absorption profiles (the so-called sinogram). The computation of the image from the sinogram is an ill-posed inverse problem, which becomes underdetermined when we are only able to collect insufficiently many X-ray measurements. We are here interested in solving X-ray tomography image reconstruction problems where we are unable to scan the object from all directions, but where we have prior information about the object's shape. We thus propose a method that reduces image artefacts due to limited tomographic measurements by inferring missing measurements using shape priors. Our method uses a Generative Adversarial Network that combines limited acquisition data and shape information. While most existing methods focus on evenly spaced missing scanning angles, we propose an approach that infers a substantial number of consecutive missing acquisitions. We show that our method consistently improves image quality compared to images reconstructed using the previous state-of-the-art sinogram-inpainting techniques. In particular, we demonstrate a 7 dB Peak Signal-to-Noise Ratio improvement compared to other methods.

Keywords: Generative Adversarial Network; X-ray computed tomography; computer assisted design data; machine-learning.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Artifacts
  • Image Processing, Computer-Assisted* / methods
  • Signal-To-Noise Ratio
  • Tomography, X-Ray Computed* / methods

Grants and funding

This research was funded by Anglo-French DSTL-AID Joint-PhD program.