Level-Set Method for Limited-Data Reconstruction in CT using Dictionary-Based Compressed Sensing

Haytham A. Ali, H. Kudo
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Abstract

Compressed sensing using a dictionary is known to be effective for reconstructing CT images from incomplete projection data (eg. limited-angle CT and sparse-view CT) and its practical applications are increasing. However, when the measurement conditions are insufficient, its performance in image quality is still insufficient and the computational time is long. In this paper, to overcome these limitations, we propose a new method that can dramatically improve the performance by using a priori knowledge about the gray levels of the image to be reconstructed. But, the main problem with using prior information is that a standard formulation leads to a non-convex optimization problem that is difficult to solve. In this study, we succeeded in overcoming this problem based on deep theoretical consideration. Specifically, we formulate a convex optimization problem that can be stably and successfully solved based on an image model that expresses the boundary of the images as a level-set function consisting of linear combinations of the dictionary elements. We create the dictionary that determines the performance by preparing a small number of basic shapes followed by applying the geometric transformations to each shape to construct the dictionary elements. The simulation results for synthetic images and real data shown that the proposed method compared favorably to Total Variation, DART and Dual problem.
基于字典压缩感知的CT有限数据重建水平集方法
已知使用字典的压缩感知对于从不完整投影数据(例如:CT图像)重建CT图像是有效的。有限角度CT和稀疏视图CT)及其实际应用日益增多。然而,当测量条件不充分时,其在图像质量方面的性能仍然不足,且计算时间较长。在本文中,为了克服这些限制,我们提出了一种新的方法,通过使用关于待重建图像的灰度等级的先验知识,可以显着提高性能。但是,使用先验信息的主要问题是标准公式导致难以解决的非凸优化问题。在本研究中,我们通过深入的理论思考,成功地克服了这一问题。具体来说,我们提出了一个凸优化问题,该问题可以基于图像模型稳定且成功地解决,该模型将图像的边界表示为由字典元素的线性组合组成的水平集函数。我们通过准备少量基本形状,然后对每个形状应用几何变换来构造字典元素,从而创建决定性能的字典。对合成图像和实际数据的仿真结果表明,该方法优于全变分问题、DART问题和对偶问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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