Hierarchical Decomposed Dual-domain Deep Learning for Sparse-View CT Reconstruction
Yoseob Han

TL;DR
This paper introduces a theoretically grounded dual-domain deep learning framework for sparse-view CT reconstruction, leveraging hierarchical measurement decomposition and deep convolutional framelets to improve image quality and reduce artifacts.
Contribution
It proposes a novel dual-domain deep learning approach based on hierarchical measurement decomposition, addressing the limitations of existing methods with a solid theoretical foundation.
Findings
Enhanced reconstruction performance over traditional methods
Utilization of low-rank properties for improved accuracy
Theoretically justified deep learning framework
Abstract
Objective: X-ray computed tomography employing sparse projection views has emerged as a contemporary technique to mitigate radiation dose. However, due to the inadequate number of projection views, an analytic reconstruction method utilizing filtered backprojection results in severe streaking artifacts. Recently, deep learning strategies employing image-domain networks have demonstrated remarkable performance in eliminating the streaking artifact caused by analytic reconstruction methods with sparse projection views. Nevertheless, it is difficult to clarify the theoretical justification for applying deep learning to sparse view CT reconstruction, and it has been understood as restoration by removing image artifacts, not reconstruction. Approach: By leveraging the theory of deep convolutional framelets and the hierarchical decomposition of measurement, this research reveals the…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Digital Radiography and Breast Imaging
