Gao Hao, Yu Hengyong, Osher Stanley, Wang Ge
Department of Mathematics, University of California, Los Angeles, CA 90095, USA.
Inverse Probl. 2011 Nov 1;27(11). doi: 10.1088/0266-5611/27/11/115012.
We propose a compressive sensing approach for multi-energy computed tomography (CT), namely the prior rank, intensity and sparsity model (PRISM). To further compress the multi-energy image for allowing the reconstruction with fewer CT data and less radiation dose, the PRISM models a multi-energy image as the superposition of a low-rank matrix and a sparse matrix (with row dimension in space and column dimension in energy), where the low-rank matrix corresponds to the stationary background over energy that has a low matrix rank, and the sparse matrix represents the rest of distinct spectral features that are often sparse. Distinct from previous methods, the PRISM utilizes the generalized rank, e.g., the matrix rank of tight-frame transform of a multi-energy image, which offers a way to characterize the multi-level and multi-filtered image coherence across the energy spectrum. Besides, the energy-dependent intensity information can be incorporated into the PRISM in terms of the spectral curves for base materials, with which the restoration of the multi-energy image becomes the reconstruction of the energy-independent material composition matrix. In other words, the PRISM utilizes prior knowledge on the generalized rank and sparsity of a multi-energy image, and intensity/spectral characteristics of base materials. Furthermore, we develop an accurate and fast split Bregman method for the PRISM and demonstrate the superior performance of the PRISM relative to several competing methods in simulations.
我们提出了一种用于多能量计算机断层扫描(CT)的压缩感知方法,即先验秩、强度和稀疏性模型(PRISM)。为了进一步压缩多能量图像,以便能用更少的CT数据和更低的辐射剂量进行重建,PRISM将多能量图像建模为一个低秩矩阵和一个稀疏矩阵(行维度为空间,列维度为能量)的叠加,其中低秩矩阵对应于能量上的静止背景,其矩阵秩较低,而稀疏矩阵表示其余不同的光谱特征,这些特征通常是稀疏的。与先前的方法不同,PRISM利用广义秩,例如多能量图像的紧框架变换的矩阵秩,这提供了一种表征跨能谱的多层次和多滤波图像相干性的方法。此外,能量相关的强度信息可以根据基础材料的光谱曲线纳入PRISM,利用这些信息,多能量图像的恢复就变成了与能量无关的材料成分矩阵的重建。换句话说,PRISM利用了关于多能量图像的广义秩和稀疏性以及基础材料的强度/光谱特征的先验知识。此外,我们为PRISM开发了一种准确且快速的分裂Bregman方法,并在模拟中证明了PRISM相对于几种竞争方法的优越性能。