Computed tomography (CT) reconstruction from X-ray projections acquired within a limited angle range is challenging, especially when the angle range is extremely small. Both analytical and iterative models need more projections for effective modeling. Deep learning methods have gained prevalence due to their excellent reconstruction performances, but such success is mainly limited within the same dataset and does not generalize across datasets with different distributions. Hereby we propose ExtraPolationNetwork for limited-angle CT reconstruction via the introduction of a sinogram extrapolation module, which is theoretically justified. The module complements extra sinogram information and boots model generalizability. Extensive experimental results show that our reconstruction model achieves state-of-the-art performance on NIH-AAPM dataset, similar to existing approaches. More importantly, we show that using such a sinogram extrapolation module significantly improves the generalization capability of the model on unseen datasets (e.g., COVID-19 and LIDC datasets) when compared to existing approaches.
翻译:分析模型和迭代模型都需要为有效的建模作更多的预测。深层学习方法由于其出色的重建性能而获得了普及性,但这种成功主要限于同一数据集,而且没有以不同分布方式对各数据集进行概括化。我们在此建议通过引入一种理论上合理的罪证图外推法模块为有限角X射线的重建建立外推网。该模块补充了额外的罪证资料和靴子模型的通用性。广泛的实验结果显示,我们的重建模型在NIH-APM数据集上取得了与现有方法类似的最先进的性能。更重要的是,我们表明,与现有方法相比,使用这种罪证外推法模块可大大提高了隐形数据集模型(例如COVID-19和LIDDC数据集)的通用能力。