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Total Variation Regularization With Split Bregman-Based Method in Magnetic Induction Tomography Using Experimental Data

机译:基于分裂布雷格曼法的电磁感应层析成像中总变化正则化的实验数据

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摘要

Magnetic induction tomography (MIT) is an imaging modality with a wide range of potential applications due to its non-contact nature. MIT is a member of the electrical tomography family that faces the most difficult imaging challenges, due to its demanding measurement accuracy requirements and its difficult forward and inverse problems. This paper presents for the first time split Bregman total variation (TV) regularization to solve the MIT inverse problem. Comparative evaluations are presented between proposed TV algorithm and more commonly used Tikhonov regularization method. Tikhonov regularization, which is based on the l2-norm, is solved linearly, while TV is solved using the split Bregman formulation, which has been shown to be optimal for l1-norm regularization. Experimental results are quantified by a number of image quality measurements, which show the superiority of the proposed TV method both on low conductivity and high conductivity MIT data. Significant improvement in MIT imaging results will make the proposed TV method a great candidate for both types of MIT imaging.
机译:磁感应断层扫描(MIT)由于其非接触性,是一种具有广泛潜在应用范围的成像方式。麻省理工学院是电层析成像家族的一员,由于其对测量精度的要求以及正反两方面的难题,它们面临着最困难的成像挑战。本文首次提出了分裂Bregman总变异(TV)正则化方法来解决MIT逆问题。提出的电视算法与更常用的Tikhonov正则化方法之间进行了比较评估。基于l2-范数的Tikhonov正则化可线性求解,而电视采用拆分的Bregman公式求解,这已证明对于l1-范数正则化是最佳的。通过许多图像质量测量对实验结果进行了量化,这些结果表明了所提出的TV方法在低电导率和高电导率MIT数据上的优越性。 MIT成像结果的显着改善将使拟议的TV方法成为两种MIT成像的理想选择。

著录项

  • 来源
    《Sensors Journal, IEEE》 |2017年第4期|976-985|共10页
  • 作者单位

    Department of Electronic and Electrical Engineering, Engineering Tomography Laboratory, University of Bath, Bath, U.K.;

    Departamento de Bioingeniería e Ingeniería Aeroespacial, Universidad Carlos III de Madrid, Madrid, Spain;

    Departamento de Bioingeniería e Ingeniería Aeroespacial, Universidad Carlos III de Madrid, Madrid, Spain;

    Department of Electronic and Electrical Engineering, Engineering Tomography Laboratory, University of Bath, Bath, U.K.;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    TV; Conductivity; Mathematical model; Inverse problems; Tomography; Optimization;

    机译:电视;电导率;数学模型;反问题;层析成像;优化;

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