Zhang Cheng, Zhang Tao, Li Ming, Peng Chengtao, Liu Zhaobang, Zheng Jian
Suzhou Institute of Biomedical Engineering and Technology of Chinese Academy of Sciences, Suzhou, 215163, China.
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun, 130033, China.
Biomed Eng Online. 2016 Jun 18;15(1):66. doi: 10.1186/s12938-016-0193-y.
In order to reduce the radiation dose of CT (computed tomography), compressed sensing theory has been a hot topic since it provides the possibility of a high quality recovery from the sparse sampling data. Recently, the algorithm based on DL (dictionary learning) was developed to deal with the sparse CT reconstruction problem. However, the existing DL algorithm focuses on the minimization problem with the L2-norm regularization term, which leads to reconstruction quality deteriorating while the sampling rate declines further. Therefore, it is essential to improve the DL method to meet the demand of more dose reduction.
In this paper, we replaced the L2-norm regularization term with the L1-norm one. It is expected that the proposed L1-DL method could alleviate the over-smoothing effect of the L2-minimization and reserve more image details. The proposed algorithm solves the L1-minimization problem by a weighting strategy, solving the new weighted L2-minimization problem based on IRLS (iteratively reweighted least squares).
Through the numerical simulation, the proposed algorithm is compared with the existing DL method (adaptive dictionary based statistical iterative reconstruction, ADSIR) and other two typical compressed sensing algorithms. It is revealed that the proposed algorithm is more accurate than the other algorithms especially when further reducing the sampling rate or increasing the noise.
The proposed L1-DL algorithm can utilize more prior information of image sparsity than ADSIR. By transforming the L2-norm regularization term of ADSIR with the L1-norm one and solving the L1-minimization problem by IRLS strategy, L1-DL could reconstruct the image more exactly.
为了降低计算机断层扫描(CT)的辐射剂量,压缩感知理论一直是热门话题,因为它为从稀疏采样数据中高质量恢复提供了可能性。最近,基于字典学习(DL)的算法被开发出来用于处理稀疏CT重建问题。然而,现有的DL算法侧重于带有L2范数正则化项的最小化问题,这导致在采样率进一步下降时重建质量恶化。因此,改进DL方法以满足更大剂量降低的需求至关重要。
在本文中,我们用L1范数正则化项取代了L2范数正则化项。期望所提出的L1-DL方法能够减轻L2最小化的过度平滑效应并保留更多图像细节。所提出的算法通过加权策略解决L1最小化问题,基于迭代重加权最小二乘法(IRLS)解决新的加权L2最小化问题。
通过数值模拟,将所提出的算法与现有的DL方法(基于自适应字典的统计迭代重建,ADSIR)以及其他两种典型的压缩感知算法进行比较。结果表明,所提出的算法比其他算法更准确,特别是在进一步降低采样率或增加噪声时。
所提出的L1-DL算法比ADSIR能利用更多图像稀疏性的先验信息。通过用L1范数正则化项替换ADSIR的L2范数正则化项并通过IRLS策略解决L1最小化问题,L1-DL能够更准确地重建图像。