Advances in multi-resolution approaches for computational inverse scattering — On the integration of sparse retrieval within the multi-resolution inversion

L. Poli, G. Oliveri, A. Massa
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Abstract

In this paper, an innovate approach which combines a customized sparseness-regularized solver with a multi-scaling procedure for the reconstruction of sparse two-dimensional (2D) dielectric profiles is presented. A customized fast Relevant Vector Machine (RVM), constrained to estimate the sparse unknown coefficients only within a restricted research space defined according to the information progressively acquired during the multi-scaling procedure, is used to solve the inverse problem formulated as a Bayesian Compressive Sensing (BCS) one. Selected numerical results are presented in order to numerically validate the proposed method also in a comparative assessment with the bare approach.
计算反散射的多分辨率方法研究进展——多分辨率反演中稀疏检索的集成
本文提出了一种将自定义稀疏正则化求解器与多尺度过程相结合的方法,用于稀疏二维介质剖面的重建。使用自定义的快速相关向量机(RVM)来求解贝叶斯压缩感知(BCS)反问题,RVM只能在根据多尺度过程中逐步获得的信息定义的有限研究空间内估计稀疏未知系数。为了在数值上验证所提出的方法,并与裸方法进行了比较评估,给出了一些数值结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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