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Multi-energy computed tomography reconstruction using an average image induced low-rank tensor decomposition with spatial-spectral total variation regularization

机译:使用平均图像诱导具有空间谱总变化正则化的低级张量分解的多能量计算断层扫描重建

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With an advanced photon counting detector, multi-energy computed tomography (MECT) can classify the photons according to the presetting thresholds and then acquire CT measurements from multiple energy bins. However, the number of the photons at one energy bin is limited compared with that in the conventional polychromatic spectrum. Therefore, the MECT images could suffer from noise-induced artifacts. To address this issue, in this work, we present a MECT reconstruction scheme which incorporates a low-rank tensor decomposition with spatial-spectral total variation (LRTD_SSTV) regularization. Additionally, the prior information from the whole energy, i.e., the average image from the MECT images, is introduced to the LRTDSSTV regularization to further improve reconstruction performance. This reconstruction scheme is termed as "LRTD_SSTVavi". Experimental results with a digital phantom demonstrate that the presented method produces better MECT images and more accurate basis images compared with the RPCA, TDL and LRTD_STTV methods.
机译:利用先进的光子计数检测器,多能量计算断层扫描(MECT)可以根据预设阈值对光子分类,然后从多个能量箱获取CT测量。然而,与传统多色光谱中的一个能量箱中的光子的数量有限。因此,MEC图像可能遭受噪声引起的伪影。为了解决这个问题,在这项工作中,我们介绍了一个Mect重建方案,该方案包含低级张量分解,具有空间频谱总变化(LRTD_SSTV)正则化。另外,从整个能量,即来自MEC图像的平均图像的先前信息被引入到LRTDSSTV正则化,以进一步提高重建性能。此重建方案被称为“LRTD_SSTVAVI”。与数字幻影的实验结果表明,与RPCA,TDL和LRTD_STTV方法相比,所提出的方法产生更好的MECT图像和更准确的基础图像。

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