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首页> 外文期刊>IEEE Transactions on Antennas and Propagation >An Improved Deep Learning Scheme for Solving 2-D and 3-D Inverse Scattering Problems
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An Improved Deep Learning Scheme for Solving 2-D and 3-D Inverse Scattering Problems

机译:一种改进的求解2-D和3-D逆散射问题的深度学习方案

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Reconstructing the exact electromagnetic property of unknown targets from the measured scattered field is challenging due to the intrinsic nonlinearity and ill-posedness. In this article, a new scheme, named the modified contrast scheme (MCS), is proposed to tackle nonlinear inverse scattering problems (ISPs). A local-wave amplifier coefficient is used to form the modified contrast, which is able to alleviate the global nonlinearity in original ISPs without decreasing the accuracy of the problem formulation. Moreover, the modified contrast is more suitable to be the input of the deep learning scheme, due to the unity bound of the modified contrast. The numerical results show that MCS with the modified contrast input performs well in both 2-D and 3-D testing examples in real time after offline training process, even in high-relative-permittivity cases. Compared with the dominant current scheme, a significant improvement is achieved in reconstructing high-contrast scatterers.
机译:由于内在的非线性和未呈现,重建从测量的散射场重建未知目标的确切电磁特性是挑战性。 在本文中,提出了一种命名为修改的对比度方案(MCS)的新方案来解决非线性逆散射问题(ISP)。 局部波放大器系数用于形成修改的对比度,其能够缓解原始ISP中的全局非线性而不会降低问题配方的准确性。 此外,由于修改对比度的统一界限,修改的对比度更适合于深度学习方案的输入。 数值结果表明,即使在高相对介绍情况下,在离线训练过程之后,MCS在二维和3-D测试示例中实时地执行良好的2-D和3-D测试示例。 与主要的电流方案相比,重建高对比度散射体来实现显着的改善。

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