A wavelet frame constrained total generalized variation model for imaging conductivity distribution

IF 1.2 4区 数学 Q2 MATHEMATICS, APPLIED Inverse Problems and Imaging Pub Date : 2021-01-01 DOI:10.3934/ipi.2021074
Yanyan Shi, Zhiwei Tian, Meng Wang, Xiaolong Kong, Lei Li, F. Fu
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Abstract

Electrical impedance tomography (EIT) is a sensing technique with which conductivity distribution can be reconstructed. It should be mentioned that the reconstruction is a highly ill-posed inverse problem. Currently, the regularization method has been an effective approach to deal with this problem. Especially, total variation regularization method is advantageous over Tikhonov method as the edge information can be well preserved. Nevertheless, the reconstructed image shows severe staircase effect. In this work, to enhance the quality of reconstruction, a novel hybrid regularization model which combines a total generalized variation method with a wavelet frame approach (TGV-WF) is proposed. An efficient mean doubly augmented Lagrangian algorithm has been developed to solve the TGV-WF model. To demonstrate the effectiveness of the proposed method, numerical simulation and experimental validation are conducted for imaging conductivity distribution. Furthermore, some comparisons are made with typical regularization methods. From the results, it can be found that the proposed method shows better performance in the reconstruction since the edge of the inclusion can be well preserved and the staircase effect is effectively relieved.
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成像电导率分布的小波框架约束全广义变分模型
电阻抗层析成像(EIT)是一种可以重建电导率分布的传感技术。需要指出的是,重构是一个高度不适定的逆问题。目前,正则化方法已成为处理这一问题的有效途径。与Tikhonov方法相比,全变分正则化方法可以很好地保留边缘信息。然而,重建图像显示出严重的阶梯效应。为了提高重构质量,本文提出了一种结合全广义变分法和小波框架方法的混合正则化模型(TGV-WF)。提出了一种求解TGV-WF模型的有效平均双增广拉格朗日算法。为了验证该方法的有效性,对成像电导率分布进行了数值模拟和实验验证。并与典型正则化方法进行了比较。结果表明,该方法能较好地保留夹杂物的边缘,有效地缓解了阶梯效应,具有较好的重建效果。
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来源期刊
Inverse Problems and Imaging
Inverse Problems and Imaging 数学-物理:数学物理
CiteScore
2.50
自引率
0.00%
发文量
55
审稿时长
>12 weeks
期刊介绍: Inverse Problems and Imaging publishes research articles of the highest quality that employ innovative mathematical and modeling techniques to study inverse and imaging problems arising in engineering and other sciences. Every published paper has a strong mathematical orientation employing methods from such areas as control theory, discrete mathematics, differential geometry, harmonic analysis, functional analysis, integral geometry, mathematical physics, numerical analysis, optimization, partial differential equations, and stochastic and statistical methods. The field of applications includes medical and other imaging, nondestructive testing, geophysical prospection and remote sensing as well as image analysis and image processing. This journal is committed to recording important new results in its field and will maintain the highest standards of innovation and quality. To be published in this journal, a paper must be correct, novel, nontrivial and of interest to a substantial number of researchers and readers.
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