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Non-Linear Inverse Scattering via Sparsity Regularized Contrast Source Inversion

机译:通过稀疏正则化对比度源反演的非线性反散射

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摘要

Two compressive sensing inspired approaches for the solution of non-linear inverse scattering problems are introduced and discussed. Differently from the sparsity promoting approaches proposed in most of the papers published in the literature, the two methods here tackle the problem in its full non-linearity, by adopting a contrast source inversion scheme. In the first approach, the {ell _1} -norm of the unknown is added as a weighted penalty term to the contrast source cost functional. The second, and (to the best of our knowledge) completely original, approach enforces sparsity by constraining the solution of the non-linear problem into a convex set defined by the {ell _1}-norm of the unknown. A numerical assessment against a widely used benchmark example (the “Austria” profile) is given to assess the capabilities of the proposed approaches. Notably, the two approaches can be applied to any kind of basis functions and they can successfully tackle both reduced number of data (with respect to Nyquist sampling) and/or overcomplete dictionaries.
机译:介绍和讨论了两种压缩感测启发方法来解决非线性逆散射问题。与文献中大多数论文中提出的稀疏促进方法不同,这里的两种方法通过采用对比源反演方案来解决其完全非线性的问题。在第一种方法中,未知量的{ell _1}-范数作为加权惩罚项添加到对比源成本函数中。第二种方法(据我们所知)是完全原始的,它通过将非线性问题的解约束为未知量的{ell _1}范数定义的凸集来增强稀疏性。针对广泛使用的基准示例(“奥地利”配置文件)进行了数值评估,以评估所提出方法的功能。值得注意的是,这两种方法都可以应用于任何种类的基函数,并且它们可以成功处理数量减少的数据(相对于奈奎斯特采样)和/或字典不完整。

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