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Learning-Assisted Inversion for Solving Nonlinear Inverse Scattering Problem

机译:求解非线性逆散射问题的学习辅助反演

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Solving inverse scattering problems (ISPs) is challenging because of its intrinsic ill-posedness and the nonlinearity. When dealing with highly nonlinear ISPs, i.e., those scatterers with high contrast and/or electrically large size, the traditional iterative nonlinear inversion methods converge slowly and take lots of computation time, even maybe trapped into local wrong solution. To alleviate the above challenges, a learning-assisted (LA) inversion approach termed as the LA inversion method (LAIM) with advanced generative adversarial network (GAN) in virtue of a new recently established contraction integral equation for inversion (CIE-I) is proposed to achieve a good balance between the computational efficiency and the accuracy of solving highly nonlinear ISPs. The preliminary profiles composed of only small amount of low-frequency components can be got efficiently by the Fourier bases expansion of CIE-I inversion (FBE-CIE-I). The physically exacted information can be taken as the input of the neural network to recover super-resolution image with more high-frequency components. A weighted loss function composed of the adversarial loss, mean absolute percentage error (MAPE), and structural similarity (SSIM) is used under the pix2pix GAN framework. In addition, the self-attention module is used at the end of the generator network to capture the physical distance information between two pixels and enhance the inversion accuracy of the feature scatterers. To further improve the inversion efficiency, the data-driven method (DDM) is used to achieve real-time imaging by cascading U-net and pix2pix GAN, where U-net is used to replace FBE-CIE-I in the LAIM. Compared with other LA inversion, both the synthetic and experimental examples have validated the merits of the proposed LAIM and DDM.
机译:求解逆散射问题 (ISP) 具有挑战性,因为它具有固有的不合理性和非线性。在处理高度非线性ISP时,即那些具有高对比度和/或大尺寸的散射体,传统的迭代非线性反演方法收敛缓慢,需要大量的计算时间,甚至可能陷入局部错误解。为了缓解上述挑战,该文在最近建立的收缩积分反演方程(CIE-I)的基础上,提出了一种学习辅助(LA)反演方法(LAIM),即具有高级生成对抗网络(GAN)的学习辅助(LA)反演方法(LAIM),以在计算效率和求解高度非线性ISP的精度之间取得良好的平衡。通过CIE-I反演(FBE-CIE-I)的傅里叶基展开可以有效地得到仅由少量低频分量组成的初步剖面。物理精确的信息可以作为神经网络的输入,以恢复具有更多高频分量的超分辨率图像。在pix2pix GAN框架下,使用由对抗性损失、平均绝对百分比误差(MAPE)和结构相似性(SSIM)组成的加权损失函数。此外,在生成器网络末端使用自注意力模块来捕获两个像素之间的物理距离信息,增强特征散射体的反演精度。为了进一步提高反演效率,采用数据驱动方法(DDM)通过级联U-net和pix2pix GAN实现实时成像,其中U-net取代了LAIM中的FBE-CIE-I。与其他LA反演相比,合成算例和实验算例都验证了所提LAIM和DDM的优点。

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