论文标题
通过学识渊博的投影仪,通过迭代算法重建不均匀媒体的重建
Reconstruction of inhomogeneous media by an iteration algorithm with a learned projector
论文作者
论文摘要
本文涉及在固定频率二维的固定频率中重建不均匀介质的反问题。这个反问题是严重的(也是强烈的非线性),因此需要某些正则化策略。但是,很难选择适当的正则化策略,该策略应强制执行一些未知散点器的先验信息。为了解决这个问题,我们计划使用一种深度学习方法来从某些地面真实数据中学习一些未知散点子的先验信息,然后将其与传统的迭代方法结合使用,以解决逆问题。具体而言,我们基于深度神经网络的重复应用和迭代的正则化高斯 - 纽顿方法(IRGNM)的重复应用,为反问题提出了一种基于深度学习的迭代重建算法。我们的深度神经网络(本文称为学习的投影仪)主要集中于学习与训练过程中未知形状与正常化技术形成鲜明对比的先验信息,并且经过训练,可以像投影仪一样训练,这有助于将解决方案投射到一些可行的区域中。广泛的数值实验表明,即使对于高对比度的情况,我们的重建算法也能提供良好的重建结果,并且具有令人满意的概括能力。
This paper is concerned with the inverse problem of reconstructing an inhomogeneous medium from the acoustic far-field data at a fixed frequency in two dimensions. This inverse problem is severely ill-posed (and also strongly nonlinear), and certain regularization strategy is thus needed. However, it is difficult to select an appropriate regularization strategy which should enforce some a priori information of the unknown scatterer. To address this issue, we plan to use a deep learning approach to learn some a priori information of the unknown scatterer from certain ground truth data, which is then combined with a traditional iteration method to solve the inverse problem. Specifically, we propose a deep learning-based iterative reconstruction algorithm for the inverse problem, based on a repeated application of a deep neural network and the iteratively regularized Gauss-Newton method (IRGNM). Our deep neural network (called the learned projector in this paper) mainly focuses on learning the a priori information of the shape of the unknown contrast with a normalization technique in the training process and is trained to act like a projector which is helpful for projecting the solution into some feasible region. Extensive numerical experiments show that our reconstruction algorithm provides good reconstruction results even for the high contrast case and has a satisfactory generalization ability.