用潜在面表示求解逆障碍物散射问题

Chen, Junqing, Jin, Bangti, Liu, Haibo
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摘要

本文提出了一种新的迭代数值方法来解决从远场测量中恢复障碍物形状的三维逆障碍物散射问题。为了解决逆问题固有的病态性质,我们提倡使用训练过的曲面潜在表示作为生成先验。该先验在给定的形状类别内具有良好的表达性,同时潜在维数低,极大地方便了计算。因此,曲面的可容许流形是真实的,得到的优化问题的病态性较小。通过最小化损失,我们使用形状导数来进化潜在表面表示,并且我们提供了梯度下降型算法到损失平稳点的局部收敛分析。我们给出了几个数值例子,包括背散射和无相数据,以展示所提出算法的有效性。
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Solving Inverse Obstacle Scattering Problem with Latent Surface Representations
We propose a novel iterative numerical method to solve the three-dimensional inverse obstacle scattering problem of recovering the shape of the obstacle from far-field measurements. To address the inherent ill-posed nature of the inverse problem, we advocate the use of a trained latent representation of surfaces as the generative prior. This prior enjoys excellent expressivity within the given class of shapes, and meanwhile, the latent dimensionality is low, which greatly facilitates the computation. Thus, the admissible manifold of surfaces is realistic and the resulting optimization problem is less ill-posed. We employ the shape derivative to evolve the latent surface representation, by minimizing the loss, and we provide a local convergence analysis of a gradient descent type algorithm to a stationary point of the loss. We present several numerical examples, including also backscattered and phaseless data, to showcase the effectiveness of the proposed algorithm.
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