论文标题
学习++:用于压缩传感CT的复发双域重建网络
LEARN++: Recurrent Dual-Domain Reconstruction Network for Compressed Sensing CT
论文作者
论文摘要
被证明,压缩感测(CS)计算机断层扫描对于多种临床应用很重要,例如稀疏视图计算机断层扫描(CT),数字间隔和内部断层扫描。传统的压缩感要着重于手工制作的先前正规化器的设计,这些正规化器通常与图像有关且耗时。受最近提出的基于深度学习的CT重建模型的启发,我们将最新的学习模型扩展到了双域版本,称为Learn ++。与现有的迭代展开方法不同,该方法仅涉及数据一致性层中的投影数据,拟议的Learn ++模型集成了两个并行和交互式子网,以同时对图像和图像和投影域进行图像恢复和辛克图上的介绍操作,从而可以充分探索投影数据和重新构造的图像之间的潜在关系。实验结果表明,与几种最先进的方法相比,就伪影降低和细节保存而言,与几种最新方法相比,所提出的学习++模型可实现竞争性的定性和定量结果。
Compressed sensing (CS) computed tomography has been proven to be important for several clinical applications, such as sparse-view computed tomography (CT), digital tomosynthesis and interior tomography. Traditional compressed sensing focuses on the design of handcrafted prior regularizers, which are usually image-dependent and time-consuming. Inspired by recently proposed deep learning-based CT reconstruction models, we extend the state-of-the-art LEARN model to a dual-domain version, dubbed LEARN++. Different from existing iteration unrolling methods, which only involve projection data in the data consistency layer, the proposed LEARN++ model integrates two parallel and interactive subnetworks to perform image restoration and sinogram inpainting operations on both the image and projection domains simultaneously, which can fully explore the latent relations between projection data and reconstructed images. The experimental results demonstrate that the proposed LEARN++ model achieves competitive qualitative and quantitative results compared to several state-of-the-art methods in terms of both artifact reduction and detail preservation.