论文标题
稀疏视图CT重建的轻巧双域注意框架
A Lightweight Dual-Domain Attention Framework for Sparse-View CT Reconstruction
论文作者
论文摘要
计算机断层扫描(CT)在临床诊断中起着至关重要的作用。由于辐射对患者的不利影响,预计辐射剂量将尽可能低。稀疏采样是一种有效的方法,但它将导致重建的CT图像上的严重伪像,因此稀疏视图CT图像重建是一个盛行且具有挑战性的研究领域。随着移动设备的普及,对轻质和实时网络的要求正在迅速增加。在本文中,我们设计了一个名为Cagan的新型轻型网络,并为平行梁稀疏视图CT提出了双域重建管道。 Cagan是一种对抗性自动编码器,结合了坐标注意单元,可保留特征的空间信息。此外,混乱块的应用将参数减少了四分之一,而不会牺牲其性能。在ra域中,Cagan了解了插值数据和无附带的投影数据之间的映射。在将恢复的rad数据重建为图像之后,将图像发送到第二个Cagan培训以恢复细节的训练,以便获得高质量的图像。实验表明,Cagan在模型复杂性和性能之间取得了极好的平衡,我们的管道表现优于DD-NET和DUDONET。
Computed Tomography (CT) plays an essential role in clinical diagnosis. Due to the adverse effects of radiation on patients, the radiation dose is expected to be reduced as low as possible. Sparse sampling is an effective way, but it will lead to severe artifacts on the reconstructed CT image, thus sparse-view CT image reconstruction has been a prevailing and challenging research area. With the popularity of mobile devices, the requirements for lightweight and real-time networks are increasing rapidly. In this paper, we design a novel lightweight network called CAGAN, and propose a dual-domain reconstruction pipeline for parallel beam sparse-view CT. CAGAN is an adversarial auto-encoder, combining the Coordinate Attention unit, which preserves the spatial information of features. Also, the application of Shuffle Blocks reduces the parameters by a quarter without sacrificing its performance. In the Radon domain, the CAGAN learns the mapping between the interpolated data and fringe-free projection data. After the restored Radon data is reconstructed to an image, the image is sent into the second CAGAN trained for recovering the details, so that a high-quality image is obtained. Experiments indicate that the CAGAN strikes an excellent balance between model complexity and performance, and our pipeline outperforms the DD-Net and the DuDoNet.