Reduction of truncation artifacts in CT images via a discriminative dictionary representation method

Yang Chen, Ke Li, Yinsheng Li, J. Hsieh, Guang-Hong Chen
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引用次数: 3

Abstract

When the scan field of view (SFOV) of a CT system is not large enough to enclose the entire cross-section of a patient, or the patient needs to be intentionally positioned partially outside the SFOV for certain clinical CT scans, truncation artifacts are often observed in the reconstructed CT images. Conventional wisdom to reduce truncation artifacts is to complete the truncated projection data via data extrapolation with different a priori assumptions. This paper presents a novel truncation artifact reduction method that directly works in the CT image domain. Specifically, a discriminative dictionary that includes a sub-dictionary of truncation artifacts and a sub-dictionary of non-artifact image information was used to separate a truncation artifact-contaminated image into two sub-images, one with reduced truncation artifacts, and the other one containing only the truncation artifacts. Both experimental phantom and retrospective human subject studies have been performed to characterize the performance of the proposed truncation artifact reduction method.
基于判别字典表示方法的CT图像截断伪影减少
当CT系统的扫描视场(SFOV)不足以包围患者的整个横截面时,或者某些临床CT扫描需要将患者部分定位在SFOV之外时,在重建的CT图像中经常观察到截断伪影。减少截断伪影的传统方法是通过不同先验假设的数据外推来完成截断投影数据。本文提出了一种直接作用于CT图像域的截断伪影消减方法。具体来说,使用包含截断伪影子字典和非伪影图像信息子字典的判别字典将截断伪影污染的图像分离为两个子图像,一个包含减少的截断伪影,另一个只包含截断伪影。实验幻影和回顾性人体受试者研究已经进行了表征所提出的截断伪影减少方法的性能。
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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