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总变差-斯多克斯策略用于稀疏视角 X 射线 CT 图像重建。

Total variation-stokes strategy for sparse-view X-ray CT image reconstruction.

出版信息

IEEE Trans Med Imaging. 2014 Mar;33(3):749-63. doi: 10.1109/TMI.2013.2295738.

Abstract

Previous studies have shown that by minimizing the total variation (TV) of the to-be-estimated image with some data and/or other constraints, a piecewise-smooth X-ray computed tomography image can be reconstructed from sparse-view projection data. However, due to the piecewise constant assumption for the TV model, the reconstructed images are frequently reported to suffer from the blocky or patchy artifacts. To eliminate this drawback, we present a total variation-stokes-projection onto convex sets (TVS-POCS) reconstruction method in this paper. The TVS model is derived by introducing isophote directions for the purpose of recovering possible missing information in the sparse-view data situation. Thus the desired consistencies along both the normal and the tangent directions are preserved in the resulting images. Compared to the previous TV-based image reconstruction algorithms, the preserved consistencies by the TVS-POCS method are expected to generate noticeable gains in terms of eliminating the patchy artifacts and preserving subtle structures. To evaluate the presented TVS-POCS method, both qualitative and quantitative studies were performed using digital phantom, physical phantom and clinical data experiments. The results reveal that the presented method can yield images with several noticeable gains, measured by the universal quality index and the full-width-at-half-maximum merit, as compared to its corresponding TV-based algorithms. In addition, the results further indicate that the TVS-POCS method approaches to the gold standard result of the filtered back-projection reconstruction in the full-view data case as theoretically expected, while most previous iterative methods may fail in the full-view case because of their artificial textures in the results.

摘要

先前的研究表明,通过最小化待估计图像的总变差(TV),同时考虑一些数据和/或其他约束条件,可以从稀疏视角投影数据中重建出分片平滑的 X 射线计算机断层扫描图像。然而,由于 TV 模型的分片常数假设,重建图像经常会出现块状或片状伪影。为了消除这一缺点,我们在本文中提出了一种总变差-斯托克斯投影到凸集(TVS-POCS)重建方法。TVS 模型是通过引入等照度方向来恢复稀疏视角数据情况下可能丢失的信息而得到的。因此,在得到的图像中,沿法向和切向的期望一致性得以保留。与之前基于 TV 的图像重建算法相比,TVS-POCS 方法通过保留一致性,可以显著减少块状伪影并保留细微结构。为了评估所提出的 TVS-POCS 方法,我们使用数字体模、物理体模和临床数据实验进行了定性和定量研究。结果表明,与相应的基于 TV 的算法相比,所提出的方法可以产生具有几个显著优势的图像,这可以通过通用质量指数和半高全宽值来衡量。此外,结果进一步表明,TVS-POCS 方法在全视角数据情况下接近滤波反投影重建的黄金标准结果,而大多数先前的迭代方法可能会在全视角情况下失败,因为它们的结果中存在人为纹理。

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