DPER: Diffusion Prior Driven Neural Representation for Limited Angle and Sparse View CT Reconstruction
Chenhe Du, Xiyue Lin, Qing Wu, Xuanyu Tian, Ying Su, Zhe Luo, Rui, Zheng, Yang Chen, Hongjiang Wei, S. Kevin Zhou, Jingyi Yu, Yuyao Zhang

TL;DR
DPER introduces a novel unsupervised neural framework combining implicit neural representations and diffusion models to improve limited-angle and sparse-view CT reconstructions, addressing ill-posed inverse problems.
Contribution
The paper proposes DPER, integrating INR and diffusion priors with HQS to enhance CT reconstruction quality, especially in challenging limited-angle and sparse-view scenarios.
Findings
Outperforms state-of-the-art methods on multiple datasets.
Achieves significant improvements on out-of-domain datasets.
Demonstrates stability and high precision in reconstructions.
Abstract
Limited-angle and sparse-view computed tomography (LACT and SVCT) are crucial for expanding the scope of X-ray CT applications. However, they face challenges due to incomplete data acquisition, resulting in diverse artifacts in the reconstructed CT images. Emerging implicit neural representation (INR) techniques, such as NeRF, NeAT, and NeRP, have shown promise in under-determined CT imaging reconstruction tasks. However, the unsupervised nature of INR architecture imposes limited constraints on the solution space, particularly for the highly ill-posed reconstruction task posed by LACT and ultra-SVCT. In this study, we introduce the Diffusion Prior Driven Neural Representation (DPER), an advanced unsupervised framework designed to address the exceptionally ill-posed CT reconstruction inverse problems. DPER adopts the Half Quadratic Splitting (HQS) algorithm to decompose the inverse…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Seismic Imaging and Inversion Techniques
MethodsDiffusion
