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Deep-Learning Schemes for Full-Wave Nonlinear Inverse Scattering Problems

机译:全波非线性逆散射问题的深度学习方案

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This paper is devoted to solving a full-wave inverse scattering problem (ISP), which is aimed at retrieving permittivities of dielectric scatterers from the knowledge of measured scattering data. ISPs are highly nonlinear due to multiple scattering, and iterative algorithms with regularizations are often used to solve such problems. However, they are associated with heavy computational cost, and consequently, they are often time-consuming. This paper proposes the convolutional neural network (CNN) technique to solve full-wave ISPs. We introduce and compare three training schemes based on U-Net CNN, including direct inversion, backpropagation, and dominant current schemes (DCS). Several representative tests are carried out, including both synthetic and experimental data, to evaluate the performances of the proposed methods. It is demonstrated that the proposed DCS outperforms the other two schemes in terms of accuracy and is able to solve typical ISPs quickly within 1 s. The proposed deep-learning inversion scheme is promising in providing quantitative images in real time.
机译:本文致力于解决全波逆散射问题(ISP),其旨在从测量的散射数据的知识中检索介电散射者的兴高率。由于多种散射,ISP是高度非线性的,并且通常用于解决这些问题的迭代算法。然而,它们与繁重的计算成本相关,因此,它们通常是耗时的。本文提出了解决全波ISP的卷积神经网络(CNN)技术。我们介绍并比较基于U-Net CNN的三种培训方案,包括直接反演,反向化和主导当前方案(DCS)。进行了几种代表性测试,包括合成和实验数据,以评估所提出的方法的性能。据证明,所提出的DCS在准确性方面优于其他两个方案,并且能够在1秒内快速解决典型的ISP。所提出的深度学习反演方案在很有希望实时提供定量图像。

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