Application of Self-Attention Generative Adversarial Network for Electromagnetic Imaging in Half-Space

Chien-Ching Chiu, Yang-Han Lee, Po-Hsiang Chen, Ying-Chen Shih, Jiang Hao
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Abstract

In this paper, we introduce a novel artificial intelligence technique with an attention mechanism for half-space electromagnetic imaging. A dielectric object in half-space is illuminated by TM (transverse magnetic) waves. Since measurements can only be made in the upper space, the measurement angle will be limited. As a result, we apply a back-propagation scheme (BPS) to generate an initial guessed image from the measured scattered fields for scatterer buried in the lower half-space. This process can effectively reduce the high nonlinearity of the inverse scattering problem. We further input the guessed images into the generative adversarial network (GAN) and the self-attention generative adversarial network (SAGAN), respectively, to compare the reconstruction performance. Numerical results prove that both SAGAN and GAN can reconstruct dielectric objects and the MNIST dataset under same measurement conditions. Our analysis also reveals that SAGAN is able to reconstruct electromagnetic images more accurately and efficiently than GAN.
自注意力生成对抗网络在半空间电磁成像中的应用
本文介绍了一种新颖的人工智能技术,该技术具有用于半空间电磁成像的注意力机制。半空间中的电介质物体受到 TM(横向磁)波的照射。由于只能在上部空间进行测量,测量角度将受到限制。因此,我们采用反向传播方案(BPS),根据测量到的散射场生成埋藏在下半空间的散射体的初始猜测图像。这一过程可有效降低反向散射问题的高非线性。我们进一步将猜测图像分别输入生成式对抗网络(GAN)和自注意生成式对抗网络(SAGAN),以比较重建性能。数值结果证明,在相同的测量条件下,SAGAN 和 GAN 都能重建介质物体和 MNIST 数据集。我们的分析还表明,与 GAN 相比,SAGAN 能够更准确、更高效地重建电磁图像。
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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