Division of Information Engineering, Faculty of Engineering, Information and Systems, University of Tsukuba, Tennoudai 1-1-1, Tsukuba 305-8573, Japan;
Quant Imaging Med Surg. 2013 Jun;3(3):147-61. doi: 10.3978/j.issn.2223-4292.2013.06.01.
New designs of future computed tomography (CT) scanners called sparse-view CT and interior CT have been considered in the CT community. Since these CTs measure only incomplete projection data, a key to put these CT scanners to practical use is a development of advanced image reconstruction methods. After 2000, there was a large progress in this research area briefly summarized as follows. In the sparse-view CT, various image reconstruction methods using the compressed sensing (CS) framework have been developed towards reconstructing clinically feasible images from a reduced number of projection data. In the interior CT, several novel theoretical results on solution uniqueness and solution stability have been obtained thanks to the discovery of a new class of reconstruction methods called differentiated backprojection (DBP). In this paper, we mainly review this progress including mathematical principles of the CS image reconstruction and the DBP image reconstruction for readers unfamiliar with this area. We also show some experimental results from our past research to demonstrate that this progress is not only theoretically elegant but also works in practical imaging situations.
新型未来计算机断层扫描(CT)扫描仪的设计,即稀疏视角 CT 和内部 CT,已在 CT 领域得到考虑。由于这些 CT 仅测量不完全的投影数据,将这些 CT 扫描仪实际应用的关键是开发先进的图像重建方法。自 2000 年以来,该研究领域取得了重大进展,简要总结如下。在稀疏视角 CT 中,已经开发了各种使用压缩感知(CS)框架的图像重建方法,旨在从较少的投影数据中重建出具有临床可行性的图像。在内部 CT 中,由于发现了一种称为差分反向投影(DBP)的新的重建方法类,因此在解的唯一性和解的稳定性方面取得了一些新的理论成果。本文主要为不熟悉该领域的读者综述了这一进展,包括 CS 图像重建的数学原理和 DBP 图像重建。我们还展示了我们过去研究的一些实验结果,以证明这一进展不仅在理论上优雅,而且在实际成像情况下也有效。