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Normalization of a spatially variant image reconstruction problem in electrical impedance tomography using system blurring properties

机译:使用系统模糊属性归一化电阻抗层析成像中空间变异图像重建问题

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摘要

The electrical impedance tomography (EIT) image reconstruction problem is ill posed and spatially variant. Because of the problem’s ill-posed nature, small amounts of measurement noise can corrupt reconstructed images. The problem must be regularized to reduce image artifacts. In this paper, we focus on the spatially variant characteristics of the problem. Correcting errors due to spatial variance should improve reconstruction accuracy. In this paper, we present methods to normalize the spatially variant image reconstruction problem by equalizing the point spread function (PSF). In order to equalize the PSF, we used the reconstruction blurring properties obtained from the sensitivity matrix. We compared three mathematical normalization schemes: pixel-wise scaling (PWS), weighted pseudo-inversion (WPI) and weighted minimum norm method (WMNM) to equalize images. The quantity index (QI), defined as the integral of pixel values of an EIT conductivity image, was considered in investigating spatial variance. The QI values along with reconstructed images are presented for cases of two-dimensional full array and hemiarray electrode topologies. We found that a spatially invariant QI could be obtained by applying normalization methods based on equalization of the PSF using conventional regularized reconstruction methods such as truncated singular value decomposition (TSVD) and WMNM. We found that WMNM normalization applied to WMNM regularized reconstruction was the best of the methods tested overall, for both hemiarray and full array electrode topologies.
机译:电阻抗断层扫描(EIT)图像重建问题不适当,而且存在空间差异。由于问题的不适定性,少量的测量噪声会破坏重建的图像。必须对问题进行正规化处理,以减少图像伪影。在本文中,我们关注问题的空间变异特征。由于空间差异而导致的校正误差应提高重建精度。在本文中,我们提出了通过均衡点扩散函数(PSF)来规范化空间变异图像重建问题的方法。为了使PSF相等,我们使用了从灵敏度矩阵获得的重建模糊特性。我们比较了三种数学归一化方案:逐像素缩放(PWS),加权伪反演(WPI)和加权最小范数方法(WMNM)以均衡图像。在研究空间方差时,考虑了定义为EIT电导率图像像素值积分的数量指数(QI)。针对二维全阵列和半阵列电极拓扑的情况,显示了QI值以及重建的图像。我们发现,通过使用基于常规正则化重构方法(例如,截断奇异值分解(TSVD)和WMNM)的PSF均衡化应用归一化方法,可以获得空间不变的QI。我们发现,对于半阵列和全阵列电极拓扑,应用于WMNM规范化重建的WMNM归一化方法是整体测试中最好的方法。

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