An Accelerated Level-Set Method for Inverse Scattering Problems

Lorenzo Audibert, H. Haddar, Xiaoli Liu
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引用次数: 3

Abstract

We propose a rapid and robust iterative algorithm to solve inverse acoustic scattering problems formulated as a PDE constrained shape optimization problem. We use a level-set method to represent the obstacle geometry and propose a new scheme for updating the geometry based on an adaptation of accelerated gradient descent methods. The resulting algorithm aims at reducing the number of iterations and improving the accuracy of reconstructions. To cope with regularization issues, we pro-pose a smoothing to the shape gradient using a single layer potential associated with ik where k is the wave number. Numerical experiments are given for several data types (full aperture, backscattering, phaseless, multiple frequencies) and show that our method outperforms a non accelerated approach in terms of convergence speed, accuracy and sensitivity to initial guesses.
逆散射问题的加速水平集方法
我们提出了一种快速和鲁棒的迭代算法来解决作为PDE约束形状优化问题的逆声散射问题。采用水平集方法对障碍物几何形状进行表征,提出了一种基于加速梯度下降法的障碍物几何形状更新方案。该算法旨在减少迭代次数,提高重建精度。为了处理正则化问题,我们提出使用与ik相关的单层势对形状梯度进行平滑处理,其中k是波数。对几种数据类型(全孔径、后向散射、无相位、多频率)进行了数值实验,结果表明,该方法在收敛速度、精度和对初始猜测的灵敏度方面优于非加速方法。
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