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首页> 外文期刊>IEEE Transactions on Medical Imaging >Induced-Current Learning Method for Nonlinear Reconstructions in Electrical Impedance Tomography
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Induced-Current Learning Method for Nonlinear Reconstructions in Electrical Impedance Tomography

机译:电阻抗断层扫描中非线性重建的诱导电流学习方法

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摘要

Electrical impedance tomography (EIT) is an attractive technique that aims to reconstruct the unknown electrical property in a domain from the surface electrical measurements. In this work, the induced-current learning method (ICLM) is proposed to solve nonlinear electrical impedance tomography (EIT) problems. Specifically, the cascaded end-to-end convolutional neural network (CEE-CNN) architecture is designed to implement the ICLM. The CEE-CNN greatly decreases the nonlinearities in EIT problems by designing a combined objective function and introducing multiple labels. A noticeable characteristic of the proposed CNN scheme is that the input parameters are chosen as both induced contrast current (ICC) and the updated electrical field from a spectral analysis and the output is chosen as ICC, which is fundamentally different from prevailing CNN schemes. Further, several skip connections are introduced to focus on learning only the unknown part of ICC. ICLM is verified with both numerical and experimental tests on typical EIT problems, and it is found that ICLM is able to solve typical EIT problems in less than 1 second with high image qualities. More importantly, it is also highly robust to measurement noises and modeling errors, such as inaccurate boundary data.
机译:电阻抗断层扫描(EIT)是一种有吸引力的技术,旨在在从表面电测量中重建域中的未知电特性。在这项工作中,提出了诱导电流学习方法(ICLM)来解决非线性电阻断层扫描(EIT)问题。具体地,级联端到端卷积神经网络(CEE-CNN)架构旨在实现ICLM。 CEE-CNN通过设计组合的目标函数和引入多个标签,大大降低了EIT问题中的非线性。所提出的CNN方案的明显特性是选择输入参数作为诱导对比电流(ICC)和来自光谱分析的更新的电场,并且作为ICC选择的输出基本上不同于普遍的CNN方案。此外,引入了几种跳过连接以专注于仅学习ICC的未知部分。在典型的EIT问题上使用数值和实验测试进行了验证了ICLM,并且发现ICLM能够在不到1秒的情况下解决典型的EIT问题,具有高图像质量。更重要的是,对测量噪声和建模误差进行高度强大,例如不准确的边界数据。

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