1. Super-resolution reconstruction of 4D-CT lung data via patch-based low-rank matrix reconstruction.
- Author
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Shiting Fang, Huafeng Wang, Yueliang Liu, Minghui Zhang, Wei Yang, Qianjin Feng, Wufan Chen, and Yu Zhang
- Subjects
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HIGH resolution imaging , *COMPUTED tomography , *LUNG disease diagnosis - Abstract
Lung 4D computed tomography (4D-CT), which is a time-resolved CT data acquisition, performs an important role in explicitly including respiratory motion in treatment planning and delivery. However, the radiation dose is usually reduced at the expense of inter-slice spatial resolution to minimize radiation-related health risk. Therefore, resolution enhancement along the superior–inferior direction is necessary. In this paper, a super-resolution (SR) reconstruction method based on a patch low-rank matrix reconstruction is proposed to improve the resolution of lung 4D-CT images. Specifically, a low-rank matrix related to every patch is constructed by using a patch searching strategy. Thereafter, the singular value shrinkage is employed to recover the high-resolution patch under the constraints of the image degradation model. The output high-resolution patches are finally assembled to output the entire image. This method is extensively evaluated using two public data sets. Quantitative analysis shows that the proposed algorithm decreases the root mean square error by 9.7%–33.4% and the edge width by 11.4%–24.3%, relative to linear interpolation, back projection (BP) and Zhang et al’s algorithm. A new algorithm has been developed to improve the resolution of 4D-CT. In all experiments, the proposed method outperforms various interpolation methods, as well as BP and Zhang et al’s method, thus indicating the effectivity and competitiveness of the proposed algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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