Computed Tomography (CT) technology reduces radiation haz-ards to the human body through sparse sampling, but fewer sampling angles pose challenges for image reconstruction. Score-based generative models are widely used in sparse-view CT re-construction, performance diminishes significantly with a sharp reduction in projection angles. Therefore, we propose an ultra-sparse view CT reconstruction method utilizing multi-scale dif-fusion models (MSDiff), designed to concentrate on the global distribution of information and facilitate the reconstruction of sparse views with local image characteristics. Specifically, the proposed model ingeniously integrates information from both comprehensive sampling and selectively sparse sampling tech-niques. Through precise adjustments in diffusion model, it is capable of extracting diverse noise distribution, furthering the understanding of the overall structure of images, and aiding the fully sampled model in recovering image information more effec-tively. By leveraging the inherent correlations within the projec-tion data, we have designed an equidistant mask, enabling the model to focus its attention more effectively. Experimental re-sults demonstrated that the multi-scale model approach signifi-cantly improved the quality of image reconstruction under ultra-sparse angles, with good generalization across various datasets.
翻译:计算机断层扫描(CT)技术通过稀疏采样减少对人体的辐射危害,但采样角度的减少给图像重建带来了挑战。基于分数的生成模型在稀疏视角CT重建中得到了广泛应用,然而在投影角度急剧减少时,其性能会显著下降。因此,我们提出了一种利用多尺度扩散模型(MSDiff)的超稀疏视角CT重建方法,该方法旨在聚焦信息的全局分布,并促进具有局部图像特征的稀疏视角重建。具体而言,所提出的模型巧妙地整合了全面采样和选择性稀疏采样技术的信息。通过对扩散模型进行精确调整,该方法能够提取多样化的噪声分布,从而深化对图像整体结构的理解,并辅助全采样模型更有效地恢复图像信息。通过利用投影数据中固有的相关性,我们设计了一种等距掩码,使模型能够更有效地集中注意力。实验结果表明,多尺度模型方法显著提高了超稀疏角度下图像重建的质量,并在不同数据集上具有良好的泛化能力。