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A spatially adaptive total variation regularization method for electrical resistance tomography

机译:电阻层析成像的空间自适应总变化正则化方法

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摘要

The total variation (TV) regularization method has been used to solve the ill-posed inverse problem of electrical resistance tomography (ERT), owing to its good ability to preserve edges. However, the quality of the reconstructed images, especially in the flat region, is often degraded by noise. To optimize the regularization term and the regularization factor according to the spatial feature and to improve the resolution of reconstructed images, a spatially adaptive total variation (SATV) regularization method is proposed. A kind of effective spatial feature indicator named difference curvature is used to identify which region is a flat or edge region. According to different spatial features, the SATV regularization method can automatically adjust both the regularization term and regularization factor. At edge regions, the regularization term is approximate to the TV functional to preserve the edges; in flat regions, it is approximate to the first-order Tikhonov (FOT) functional to make the solution stable. Meanwhile, the adaptive regularization factor determined by the spatial feature is used to constrain the regularization strength of the SATV regularization method for different regions. Besides, a numerical scheme is adopted for the implementation of the second derivatives of difference curvature to improve the numerical stability. Several reconstruction image metrics are used to quantitatively evaluate the performance of the reconstructed results. Both simulation and experimental results indicate that, compared with the TV (mean relative error 0.288, mean correlation coefficient 0.627) and FOT (mean relative error 0.295, mean correlation coefficient 0.638) regularization methods, the proposed SATV (mean relative error 0.259, mean correlation coefficient 0.738) regularization method can endure a relatively high level of noise and improve the resolution of reconstructed images.
机译:由于其具有良好的边缘保留能力,总变异数(TV)正则化方法已用于解决电阻层析成像(ERT)的不适定逆问题。但是,重建图像的质量,特别是在平坦区域中,通常会因噪声而降低。为了根据空间特征优化正则项和正则化因子,提高重构图像的分辨率,提出了一种空间自适应总变化(SATV)正则化方法。一种有效的空间特征指示器,称为差异曲率,用于识别哪个区域是平坦区域或边缘区域。根据不同的空间特征,SATV正则化方法可以自动调整正则项和正则因子。在边缘区域,正规化项近似于保留边缘的电视功能;在平坦区域中,近似一阶Tikhonov(FOT)函数可以使解决方案稳定。同时,利用空间特征确定的自适应正则化因子来约束SATV正则化方法针对不同区域的正则化强度。此外,采用数值方案来实现差曲率的二阶导数,以提高数值稳定性。几个重建图像指标用于定量评估重建结果的性能。仿真和实验结果均表明,与TV(平均相对误差0.288,平均相关系数0.627)和FOT(平均相对误差0.295,平均相关系数0.638)正则化方法相比,建议的SATV(平均相对误差0.259,平均相关度)系数0.738)的正则化方法可以承受较高水平的噪声并提高重建图像的分辨率。

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