Self-Supervised Coordinate Projection Network for Sparse-View Computed Tomography
Qing Wu, Ruimin Feng, Hongjiang Wei, Jingyi Yu, and Yuyao Zhang

TL;DR
This paper introduces SCOPE, a self-supervised neural network for sparse-view CT reconstruction that leverages a re-projection strategy and hash encoding to improve image quality and training speed, outperforming existing methods.
Contribution
The main novelty is a simple re-projection strategy combined with INR and hash encoding, enhancing reconstruction quality and training efficiency in sparse-view CT imaging.
Findings
Re-projection strategy improves PSNR by at least 3 dB.
SCOPE outperforms recent INR-based and supervised methods.
Hash encoding accelerates model training significantly.
Abstract
In the present work, we propose a Self-supervised COordinate Projection nEtwork (SCOPE) to reconstruct the artifacts-free CT image from a single SV sinogram by solving the inverse tomography imaging problem. Compared with recent related works that solve similar problems using implicit neural representation network (INR), our essential contribution is an effective and simple re-projection strategy that pushes the tomography image reconstruction quality over supervised deep learning CT reconstruction works. The proposed strategy is inspired by the simple relationship between linear algebra and inverse problems. To solve the under-determined linear equation system, we first introduce INR to constrain the solution space via image continuity prior and achieve a rough solution. And secondly, we propose to generate a dense view sinogram that improves the rank of the linear equation system and…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Medical Image Segmentation Techniques
