Image reconstruction for electrical impedance tomography based on spatial invariant feature maps and convolutional neural network

D. Hu, K. Lu, Yunjie Yang
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引用次数: 15

Abstract

Data-driven methods are attracting more and more attention in the field of electrical impedance tomography. Many learning-based tomographic algorithms have been presented and investigated in the past few years. However, few related studies pay attention to the symmetrical geometrical structure of tomographic sensors and the possible benefits it may bring to learning-based image reconstruction. Aiming to this, we propose the concept of electrical impedance maps, which can better reflect the nature of geometry of tomographic sensors and have similar properties to images. Then we design a fully convolutional network to build the relationship between electrical impedance maps and conductivity distribution images. The effectiveness and performance of our method is evaluated by both simulation and experimental datasets with different conductivity distribution patterns.
基于空间不变特征映射和卷积神经网络的电阻抗断层成像图像重建
数据驱动方法在电阻抗层析成像领域受到越来越多的关注。在过去的几年中,许多基于学习的层析成像算法已经被提出和研究。然而,很少有相关研究关注层析传感器的对称几何结构及其对基于学习的图像重建可能带来的好处。针对这一点,我们提出了电阻抗图的概念,它可以更好地反映层析传感器的几何性质,并具有与图像相似的性质。然后,我们设计了一个全卷积网络来建立电阻抗图和电导率分布图像之间的关系。通过不同电导率分布模式的模拟数据集和实验数据集对该方法的有效性和性能进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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