Li Hongxiao, Chen Xiaodong, Wang Yi, Zhou Zhongxing, Zhu Qingzhen, Yu Daoyin
College of Precision Instrument and Opto-Electronics Engineering, Tianjin University, Tianjin 300072, People's Republic of China.
Biomed Eng Online. 2014 Jul 4;13:92. doi: 10.1186/1475-925X-13-92.
The sparse CT (Computed Tomography), inspired by compressed sensing, means to introduce a prior information of image sparsity into CT reconstruction to reduce the input projections so as to reduce the potential threat of incremental X-ray dose to patients' health. Recently, many remarkable works were concentrated on the sparse CT reconstruction from sparse (limited-angle or few-view style) projections. In this paper we would like to incorporate more prior information into the sparse CT reconstruction for improvement of performance. It is known decades ago that the given projection directions can provide information about the directions of edges in the restored CT image. ATV (Anisotropic Total Variation), a TV (Total Variation) norm based regularization, could use the prior information of image sparsity and edge direction simultaneously. But ATV can only represent the edge information in few directions and lose much prior information of image edges in other directions.
To sufficiently use the prior information of edge directions, a novel MDATV (Multi-Direction Anisotropic Total Variation) is proposed. In this paper we introduce the 2D-IGS (Two Dimensional Image Gradient Space), and combined the coordinate rotation transform with 2D-IGS to represent edge information in multiple directions. Then by incorporating this multi-direction representation into ATV norm we get the MDATV regularization. To solve the optimization problem based on the MDATV regularization, a novel ART (algebraic reconstruction technique) + MDATV scheme is outlined. And NESTA (NESTerov's Algorithm) is proposed to replace GD (Gradient Descent) for minimizing the TV-based regularization.
The numerical and real data experiments demonstrate that MDATV based iterative reconstruction improved the quality of restored image. NESTA is more suitable than GD for minimization of TV-based regularization.
MDATV regularization can sufficiently use the prior information of image sparsity and edge information simultaneously. By incorporating more prior information, MDATV based approach could reconstruct the image more exactly.
受压缩感知启发的稀疏CT(计算机断层扫描),旨在将图像稀疏性的先验信息引入CT重建中,以减少输入投影,从而降低增量X射线剂量对患者健康的潜在威胁。最近,许多出色的工作都集中在从稀疏(有限角度或少视图样式)投影进行稀疏CT重建上。在本文中,我们希望将更多的先验信息纳入稀疏CT重建中,以提高性能。几十年前就已知道,给定的投影方向可以提供有关恢复的CT图像中边缘方向的信息。ATV(各向异性总变分)是一种基于TV(总变分)范数的正则化方法,它可以同时使用图像稀疏性和边缘方向的先验信息。但是ATV只能表示少数方向上的边缘信息,而在其他方向上会丢失很多图像边缘的先验信息。
为了充分利用边缘方向的先验信息,提出了一种新颖的MDATV(多方向各向异性总变分)。在本文中,我们引入了二维图像梯度空间(2D-IGS),并将坐标旋转变换与2D-IGS相结合,以表示多个方向上的边缘信息。然后,通过将这种多方向表示纳入ATV范数,我们得到了MDATV正则化。为了解决基于MDATV正则化的优化问题,概述了一种新颖的ART(代数重建技术)+ MDATV方案。并且提出了NESTA(涅斯捷罗夫算法)来代替GD(梯度下降),以最小化基于TV的正则化。
数值和实际数据实验表明,基于MDATV的迭代重建提高了恢复图像的质量。NESTA比GD更适合用于最小化基于TV的正则化。
MDATV正则化可以同时充分利用图像稀疏性和边缘信息的先验信息。通过纳入更多的先验信息,基于MDATV的方法可以更准确地重建图像。