基于飞焦点CT数据的压缩感知图像重建研究。

D Xia, J Bian, X Han, E Y Sidky, X Pan
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引用次数: 1

摘要

飞行焦斑(Flying-focal-spot, FFS)技术通过在每个“投影视图”中采集多个不同位置的焦斑锥束数据集,改善了高级临床CT的采样条件。研究表明,提高FFS扫描的采样率可以大大减少重建图像中的混叠现象。然而,通过在每个视图上进行多次照明来增加采样密度会导致被成像主体的辐射剂量增加。在这项工作中,我们应用了一种基于压缩感知(CS)的算法,从FFS扫描中获得的数据中进行图像重建。研究结果表明,使用分析算法重建的图像中观察到的混叠伪影在使用基于cs的算法重建的图像中可以有效地抑制,这些图像仅来自一次FFS扫描获取的数据。
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An Investigation of Compressive-sensing Image Reconstruction from Flying-focal-spot CT Data.

Flying-focal-spot (FFS) technique has been used for improving the sampling condition in advanced clinical CT by collecting multiple cone-beam data sets with the focal-spot at different locations at each "projection view". It has been demonstrated that the increased sampling rate in FFS scans can substantially reduce aliasing artifacts in reconstructed images. However, the increase of the sampling density through multiple illuminations at each view can result in the increase of radiation dose to the imaged subject. In this work, we have applied a compressive-sensing (CS)-based algorithm to image reconstruction from data acquired in FFS scans. The results of the study demonstrate that aliasing artifacts observed images reconstructed by use of analytic algorithms can be suppressed effectively in images reconstructed with this CS-based algorithm from only data acquired at one FFS scan.

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