IVCVMED-PHJan 17, 2025

Physics-informed DeepCT: Sinogram Wavelet Decomposition Meets Masked Diffusion

arXiv:2501.09935v31 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses generalization issues in medical imaging for sparse-view CT, offering an incremental improvement over prior diffusion-based methods.

The paper tackles sparse-view CT reconstruction by proposing SWARM, a method combining sinogram wavelet decomposition with masked diffusion, which outperforms existing approaches in quantitative and qualitative metrics across multiple datasets.

Diffusion model shows remarkable potential on sparse-view computed tomography (SVCT) reconstruction. However, when a network is trained on a limited sample space, its generalization capability may be constrained, which degrades performance on unfamiliar data. For image generation tasks, this can lead to issues such as blurry details and inconsistencies between regions. To alleviate this problem, we propose a Sinogram-based Wavelet random decomposition And Random mask diffusion Model (SWARM) for SVCT reconstruction. Specifically, introducing a random mask strategy in the sinogram effectively expands the limited training sample space. This enables the model to learn a broader range of data distributions, enhancing its understanding and generalization of data uncertainty. In addition, applying a random training strategy to the high-frequency components of the sinogram wavelet enhances feature representation and improves the ability to capture details in different frequency bands, thereby improving performance and robustness. Two-stage iterative reconstruction method is adopted to ensure the global consistency of the reconstructed image while refining its details. Experimental results demonstrate that SWARM outperforms competing approaches in both quantitative and qualitative performance across various datasets.

Code Implementations1 repo
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