National Digital Switching System Engineering & Technological Research Centre, Zhengzhou, China.
J Xray Sci Technol. 2017;25(6):959-980. doi: 10.3233/XST-16225.
Sparse-view imaging is a promising scanning approach which has fast scanning rate and low-radiation dose in X-ray computed tomography (CT). Conventional L1-norm based total variation (TV) has been widely used in image reconstruction since the advent of compressive sensing theory. However, with only the first order information of the image used, the TV often generates dissatisfactory image for some applications. As is widely known, image curvature is among the most important second order features of images and can potentially be applied in image reconstruction for quality improvement. This study incorporates the curvature in the optimization model and proposes a new total absolute curvature (TAC) based reconstruction method. The proposed model contains both total absolute curvature and total variation (TAC-TV), which are intended for better description of the featured complicated image. As for the practical algorithm development, the efficient alternating direction method of multipliers (ADMM) is utilized, which generates a practical and easy-coded algorithm. The TAC-TV iterations mainly contain FFTs, soft-thresholding and projection operations and can be launched on graphics processing unit, which leads to relatively high performance. To evaluate the presented algorithm, both qualitative and quantitative studies were performed using various few view datasets. The results illustrated that the proposed approach yielded better reconstruction quality and satisfied convergence property compared with TV-based methods.
稀疏视角成像是一种很有前途的扫描方法,在 X 射线计算机断层扫描(CT)中具有快速扫描速度和低辐射剂量的特点。自压缩感知理论问世以来,传统的基于 L1 范数的全变差(TV)已广泛应用于图像重建。然而,由于只使用了图像的一阶信息,TV 通常会为一些应用生成不理想的图像。众所周知,图像曲率是图像最重要的二阶特征之一,可潜在地应用于图像重建以提高质量。本研究将曲率纳入优化模型,并提出了一种基于全绝对曲率(TAC)的新重建方法。所提出的模型包含全绝对曲率和全变差(TAC-TV),旨在更好地描述具有特征的复杂图像。在实际算法开发方面,采用了高效的交替方向乘子法(ADMM),生成了一种实用且易于编码的算法。TAC-TV 迭代主要包含 FFT、软阈值和投影操作,可以在图形处理单元上运行,从而实现较高的性能。为了评估所提出的算法,使用各种少视角数据集进行了定性和定量研究。结果表明,与基于 TV 的方法相比,所提出的方法具有更好的重建质量和令人满意的收敛特性。