A Diffusion-Based Generative Prior Approach to Sparse-view Computed Tomography
AI 摘要
该论文提出了一种基于扩散模型的生成先验方法,用于解决稀疏视图CT重建问题。
主要贡献
- 结合扩散模型和迭代优化算法
- 改进图像生成、模型和迭代算法
- 在稀疏几何下获得有希望的结果
方法论
使用深度生成先验框架,结合扩散模型和迭代优化算法,对稀疏几何下的CT图像进行重建。
原文摘要
The reconstruction of X-rays CT images from sparse or limited-angle geometries is a highly challenging task. The lack of data typically results in artifacts in the reconstructed image and may even lead to object distortions. For this reason, the use of deep generative models in this context has great interest and potential success. In the Deep Generative Prior (DGP) framework, the use of diffusion-based generative models is combined with an iterative optimization algorithm for the reconstruction of CT images from sinograms acquired under sparse geometries, to maintain the explainability of a model-based approach while introducing the generative power of a neural network. There are therefore several aspects that can be further investigated within these frameworks to improve reconstruction quality, such as image generation, the model, and the iterative algorithm used to solve the minimization problem, for which we propose modifications with respect to existing approaches. The results obtained even under highly sparse geometries are very promising, although further research is clearly needed in this direction.