论文标题

低排放平面校正,以减少光谱计算机断层扫描的伪影

Low-rank flat-field correction for artifact reduction in spectral computed tomography

论文作者

Bangsgaard, Katrine O, Burca, Genoveva, Ametova, Evelina, Andersen, Martin S, Jørgensen, Jakob S

论文摘要

近年来,近年来,光谱计算机断层扫描引起了极大的兴趣,因为光谱测量包含有关感兴趣对象的更多信息。 In spectral computed tomography, we are interested in the energy channel-wise reconstructions of the object.然而,这种重建遭受信噪比低的比例,并分享了常规低剂量计算机断层扫描(例如环形伪像)的挑战。 Ring artifacts arise from errors in the flat-field correction and can significantly degrade the quality of the reconstruction.我们提出了一个扩展的平面模型,该模型利用光谱平板中的高相关性,以减少沿通道重建中的环形伪像。 The extended model relies on the assumption that the spectral flat-fields can be well-approximated by a low-rank matrix.我们提出的模型直接在光谱平板上工作,并且可以与任何现有的重建模型(例如过滤后的投影和迭代方法和迭代方法)结合使用。 The proposed model is validated on a neutron data set. The results show that our method successfully diminishes ring artifacts and improves the quality of the reconstructions. Moreover, the results indicate that our method is robust;它只需要单光谱平面图像,而现有方法需要多个光谱平面图像才能达到相似的降低环。

Spectral computed tomography has received considerable interest in recent years since spectral measurements contain much richer information about the object of interest. In spectral computed tomography, we are interested in the energy channel-wise reconstructions of the object. However, such reconstructions suffer from low signal-to-noise ratio and share the challenges of conventional low-dose computed tomography such as ring artifacts. Ring artifacts arise from errors in the flat-field correction and can significantly degrade the quality of the reconstruction. We propose an extended flat-field model that exploits high correlation in the spectral flat-fields to reduce ring artifacts in the channel-wise reconstructions. The extended model relies on the assumption that the spectral flat-fields can be well-approximated by a low-rank matrix. Our proposed model works directly on the spectral flat-fields and can be combined with any existing reconstruction model, e.g., filtered back projection and iterative methods. The proposed model is validated on a neutron data set. The results show that our method successfully diminishes ring artifacts and improves the quality of the reconstructions. Moreover, the results indicate that our method is robust; it only needs a single spectral flat-field image, whereas existing methods need multiple spectral flat-field images to reach a similar level of ring reduction.

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