FreeSeed: Frequency-band-aware and Self-guided Network for Sparse-view CT Reconstruction
Chenglong Ma, Zilong Li, Junping Zhang, Yi Zhang, Hongming Shan

TL;DR
FreeSeed is a novel deep learning framework that effectively removes streak artifacts from sparse-view CT images by modeling frequency-band artifacts and using self-guided refinement, outperforming existing methods.
Contribution
The paper introduces FreeSeed, a frequency-band-aware and self-guided network that improves artifact removal and detail recovery in sparse-view CT reconstruction.
Findings
Outperforms state-of-the-art methods in artifact removal.
Effectively models artifacts in Fourier domain.
Enhances image detail preservation.
Abstract
Sparse-view computed tomography (CT) is a promising solution for expediting the scanning process and mitigating radiation exposure to patients, the reconstructed images, however, contain severe streak artifacts, compromising subsequent screening and diagnosis. Recently, deep learning-based image post-processing methods along with their dual-domain counterparts have shown promising results. However, existing methods usually produce over-smoothed images with loss of details due to (1) the difficulty in accurately modeling the artifact patterns in the image domain, and (2) the equal treatment of each pixel in the loss function. To address these issues, we concentrate on the image post-processing and propose a simple yet effective FREquency-band-awarE and SElf-guidED network, termed FreeSeed, which can effectively remove artifact and recover missing detail from the contaminated sparse-view…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Radiation Dose and Imaging
