论文标题

光谱CT通过低级别表示和结构保存正则化的重建

Spectral CT Reconstruction via Low-rank Representation and Structure Preserving Regularization

论文作者

He, Yuanwei, Zeng, Li, Xu, Qiong, Wang, Zhe, Yu, Haijun, Shen, Zhaoqiang, Yang, Zhaojun, Zhou, Rifeng

论文摘要

随着计算机断层扫描(CT)成像技术的开发,可以通过光谱CT获取多能数据。与常规CT不同,光谱CT的X射线能谱正在切成几个狭窄的仓中,这导致结果是只能在每个单个能量通道中收集一部分光子,从而导致图像质量被噪声和工件严重降解。为了解决这个问题,我们提出了基于本文低级别表示和结构的频谱CT重建算法。为了充分利用有关通道间相关性和内部通道数据梯度域中的稀疏性的先验知识,本文将低级相关描述符与结构提取算子作为光谱CT重建的先验正规化项相结合。此外,开发了一种基于bregman的迭代算法来解决重建模型。最后,我们根据每个单个能量通道的CT值提出了多通道自适应参数的生成策略。 Experimental results on numerical simulations and real mouse data indicate that the proposed algorithm achieves higher accuracy on both reconstruction and material decomposition than the methods based on simultaneous algebraic reconstruction technique (SART), total variation minimization (TVM), total variation with low-rank (LRTV), and spatial-spectral cube matching frame (SSCMF).与SART相比,我们的算法平均将特征相似性(FSIM)提高了40.4%,而TVM,LRTV和SSCMF分别对应于26.1%,28.2%和29.5%。

With the development of computed tomography (CT) imaging technology, it is possible to acquire multi-energy data by spectral CT. Being different from conventional CT, the X-ray energy spectrum of spectral CT is cutting into several narrow bins which leads to the result that only a part of photon can be collected in each individual energy channel, which cause the image qualities to be severely degraded by noise and artifacts. To address this problem, we propose a spectral CT reconstruction algorithm based on low-rank representation and structure preserving regularization in this paper. To make full use of the prior knowledge about both the inter-channel correlation and the sparsity in gradient domain of inner-channel data, this paper combines a low-rank correlation descriptor with a structure extraction operator as priori regularization terms for spectral CT reconstruction. Furthermore, a split-Bregman based iterative algorithm is developed to solve the reconstruction model. Finally, we propose a multi-channel adaptive parameters generation strategy according to CT values of each individual energy channel. Experimental results on numerical simulations and real mouse data indicate that the proposed algorithm achieves higher accuracy on both reconstruction and material decomposition than the methods based on simultaneous algebraic reconstruction technique (SART), total variation minimization (TVM), total variation with low-rank (LRTV), and spatial-spectral cube matching frame (SSCMF). Compared with SART, our algorithm improves the feature similarity (FSIM) by 40.4% on average for numerical simulation reconstruction, whereas TVM, LRTV, and SSCMF correspond to 26.1%, 28.2%, and 29.5%, respectively.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源