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首页> 外文期刊>Applied Computational Electromagnetics Society journal >A Qualitative Deep Learning Method for Inverse Scattering Problems
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A Qualitative Deep Learning Method for Inverse Scattering Problems

机译:反散射问题的定性深度学习方法

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摘要

In this paper, we propose a novel deep convolutional neural network (CNN) based qualitative learning method for solving the inverse scattering problem, which is notoriously difficult due to its highly nonlinearity and ill-posedness. The trained deep CNN accurately approximates the nonlinear mapping from the noisy far-field pattern (from measurements) to a disk that fits the location and size of the unknown scatterer. The used training data is derived from the simulated noisy-free far-field patterns of a large number of disks with different randomly generated centers and radii within the domain of interest. The reconstructed fitting disk is also very useful as a good initial guess for other established nonlinear optimization algorithms. Numerical results are presented to illustrate the promising reconstruction accuracy and efficiency of our proposed qualitative deep learning method.
机译:在本文中,我们提出了一种新的基于深度卷积神经网络(CNN)的定性学习方法来解决反散射问题,由于其高度的非线性和不适定性,这是非常困难的。经过训练的深层CNN可以精确地将非线性映射从嘈杂的远场模式(从测量值)映射到适合未知散射体位置和大小的磁盘。所使用的训练数据是从大量磁盘的模拟无噪声远场模式得出的,这些磁盘在目标域内具有不同的随机生成的中心和半径。对于其他已建立的非线性优化算法,重建的拟合盘​​也非常有用,可以作为一个很好的初步猜测。数值结果表明了我们提出的定性深度学习方法的有希望的重建精度和效率。

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