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Comparison of statistical inversion with iteratively regularized Gauss Newton method for image reconstruction in electrical impedance tomography

机译:电阻断层扫描图像重建迭代正规牛顿方法统计反演的比较

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In this paper, we investigate image reconstruction from the Electrical Impedance Tomography (EIT) problem using a statistical inversion method based on Bayes' theorem and an Iteratively Regularized Gauss Newton (IRGN) method. We compare the traditional IRGN method with a new Pilot Adaptive Metropolis algorithm that (i) enforces smoothing constraints and (ii) incorporates a sparse prior. The statistical algorithm reduces the reconstruction error in terms of l(2) and l(1) norm in comparison to the IRGN method for the synthetic EIT reconstructions presented here. However, there is a trade-off between the reduced computational cost of the deterministic method and the higher resolution of the statistical algorithm. We bridge the gap between these two approaches by using the IRGN method to provide a more informed initial guess to the statistical algorithm. Our coupling procedure improves convergence speed and image resolvability of the proposed statistical algorithm. (C) 2019 Elsevier Inc. All rights reserved.
机译:在本文中,我们使用基于贝叶斯定理的统计反转方法和迭代正则化高斯牛顿(IRGN)方法来研究从电阻抗断层扫描(EIT)问题的图像重建。我们将传统的IRGN方法与新的飞行员自适应Metropolis算法进行比较,(i)强制执行平滑约束和(ii)结合在稀疏的之前。与这里呈现的合成EIT重建的IRGN方法相比,统计算法在L(2)和L(1)规范方面降低了重建误差。然而,在确定性方法的计算成本降低和统计算法的较高分辨率之间存在权衡。通过使用IRGN方法向统计算法提供更明智的初始猜测,我们弥合这两种方法之间的差距。我们的耦合程序提高了所提出的统计算法的收敛速度和图像可解析性。 (c)2019 Elsevier Inc.保留所有权利。

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