A neural network-based local decomposition approach for image reconstruction in Electrical Impedance Tomography

Zainab Husain, P. Liatsis
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引用次数: 4

Abstract

Electrical Impedance Tomography (EIT) is a method of imaging the impedance distribution inside a non-homogeneous medium based on current or voltage measurements on its surface. Being a non-invasive and non-ionizing image modality, its application can be extended to a multitude of areas, including robotics and specifically, tactile sensing. The use of EIT, however, is limited by the complexity of the inverse image reconstruction problem, which is non-linear and ill-posed. In this contribution, we propose a data-driven approach to image reconstruction, using Neural Networks. Specifically, the image containing the target object is divided into partially overlapping sub-images, where each sub-image is modelled with a bi-variate polynomial. The forward problem is solved using the EIDORS toolbox in MATLAB, thus resulting to a set of voltage measurements. A set of feedforward neural networks, one for each sub-image, are then trained using the voltage inputs and the target polynomial coefficients to perform image reconstruction. The simulation experiments demonstrate promising performance for the case of a 2D square object in a noisy background.
基于神经网络的电阻抗断层成像局部分解方法
电阻抗层析成像(EIT)是一种基于对非均匀介质表面的电流或电压测量来成像其内部阻抗分布的方法。作为一种非侵入性和非电离的图像方式,它的应用可以扩展到许多领域,包括机器人技术,特别是触觉传感。然而,EIT的使用受到逆图像重建问题的复杂性的限制,该问题是非线性和不适定的。在这篇文章中,我们提出了一种数据驱动的图像重建方法,使用神经网络。具体来说,将包含目标物体的图像分成部分重叠的子图像,其中每个子图像用双变量多项式建模。利用MATLAB中的EIDORS工具箱求解正演问题,从而得到一组电压测量值。然后使用电压输入和目标多项式系数训练一组前馈神经网络,每个子图像一个,以执行图像重建。仿真实验表明,该算法在噪声背景下对二维正方形目标具有良好的处理效果。
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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