利用帕累托曲线的电阻抗断层成像中新的L1最小化算法的比较

J. N. Tehrani, A. McEwan
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引用次数: 1

摘要

电阻抗断层扫描(EIT)通过电接触测量来计算人体内部的电导率分布。传统的EIT重构方法通过正则化最小化最小二乘误差(即欧几里德范数或l2范数)来求解线性模型。近年来,全变分和L1正则化在医学图像重建中得到了广泛的应用。本文介绍了利用l1曲线(Pareto Frontier curve)求正则化参数的新方法。该方法跟踪残差的最小二乘拟合与解的l1范数之间的最优权衡。本文将该算法与两种l1范数正则化方法进行了比较。结果表明,该方法可以更好地控制解的滤波和稀疏性。它还表明,可视化l1曲线(帕累托曲线),以便理解残差规范和解决方案之间的权衡,在我们对噪声水平没有很好的估计的情况下是有帮助的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison between new L1 minimization algorithms in Electrical Impedance Tomography using the Pareto Curve
Electrical Impedance Tomography (EIT) calculates the internal conductivity distribution within a body using electrical contact measurements. Conventional EIT reconstruction methods solve a linear model by minimizing the least squares error, i.e., the Euclidian or L2-norm, with regularization. Recently, total variation and L1 regularization have become more popular in medical image reconstruction. Here, we introduce new method for evaluating and finding the regularization parameters by using the L1-curve (Pareto Frontier curve). This method traces the optimal trade-off between the least-squares fit of residual and the L1-norm of the solution. In this paper, we compare this algorithm with two L1-norm regularization methods. The results show that this method can help us to have more control on filtering and sparsity of the solution. It also shows that visualizing the L1-curve (Pareto Curve) in order to understand the trade-offs between the norms of the residual and the solution can be helpful in situation where we do not have a very good estimation about the level of the noise.
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