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首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >Approximation of continuous EIT data from electrode measurements with Bayesian methods
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Approximation of continuous EIT data from electrode measurements with Bayesian methods

机译:用贝叶斯方法从电极测量中的连续EIT数据近似

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摘要

The electrical impedance tomography (EIT) in its classical formulation seeks to estimate the electric conductivity distribution inside the body from the knowledge of the Dirichlet-to-Neumann (DtN) map of the conductivity equation at the boundary. Numerical methods for the solution of the EIT problem have been developed based on this formulation, most notably the d-bar method and the layer stripping algorithm. In practice, however, the EIT data (electrode data), collected by using a fixed number of contact electrodes, is tantamount to knowledge of the resistance matrix, a mapping between given current configuration and the corresponding vector of measured electrode voltages. Forward models corresponding to the DtN data and the electrode data differ in terms of the boundary values and no direct connection between them has been established. In this article, we analyze the relation between the two boundary data types, and propose to approximate the DtN data from the measured resistance matrix for solving the EIT inverse problem within the Bayesian framework, leveraging a sample based prior and a principal component model reduction.
机译:其经典配方中的电阻抗断层扫描(EIT)寻求从边界处的导电方程的Dirichlet-Neumann(DTN)地图的知识估计身体内的电导率分布。基于该配方开发了用于解决EIT问题的数值方法,最值得注意的是D-Bar方法和层剥离算法。然而,在实践中,通过使用固定数量的接触电极收集的EIE数据(电极数据)是对电阻矩阵的知识,给定电流配置和测量电极电压的相应向量之间的映射。对应于DTN数据的前进模型和电极数据的术语在边界值方面不同,并且已经建立了它们之间的直接连接。在本文中,我们分析了两个边界数据类型之间的关系,并建议近似于测量的电阻矩阵的DTN数据,以解决贝叶斯框架内的EIT逆问题,利用基于样本和主要成分模型减少。

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