ResPF: Residual Poisson Flow for Efficient and Physically Consistent Sparse-View CT Reconstruction
Changsheng Fang, Yongtong Liu, Bahareh Morovati, Shuo Han, Yu Shi, Li Zhou, Shuyi Fan, Hengyong Yu

TL;DR
ResPF introduces a novel Poisson flow-based generative model for efficient, accurate, and physically consistent sparse-view CT reconstruction, significantly reducing sampling costs while maintaining high image quality.
Contribution
This work is the first to apply Poisson flow models to sparse-view CT, integrating data consistency and residual fusion to improve reconstruction fidelity and efficiency.
Findings
ResPF outperforms existing methods in reconstruction quality.
ResPF achieves faster inference times.
ResPF demonstrates robustness on synthetic and clinical datasets.
Abstract
Sparse-view computed tomography (CT) is a practical solution to reduce radiation dose, but the resulting ill-posed inverse problem poses significant challenges for accurate image reconstruction. Although deep learning and diffusion-based methods have shown promising results, they often lack physical interpretability or suffer from high computational costs due to iterative sampling starting from random noise. Recent advances in generative modeling, particularly Poisson Flow Generative Models (PFGM), enable high-fidelity image synthesis by modeling the full data distribution. In this work, we propose Residual Poisson Flow (ResPF) Generative Models for efficient and accurate sparse-view CT reconstruction. Based on PFGM++, ResPF integrates conditional guidance from sparse measurements and employs a hijacking strategy to significantly reduce sampling cost by skipping redundant initial steps.…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Generative Adversarial Networks and Image Synthesis · Model Reduction and Neural Networks
MethodsDiffusion · Poisson Flow Generative Models
