地下成像射频层析成像中的稀疏重建方法

L. Monte, J. Parker
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引用次数: 15

摘要

涉及射频层析成像的地下成像通常是严重病态的。吉洪诺夫正则化可能是解决这种不适的最常用方法。所提出的方法是基于现实的假设,目标(如隧道)是稀疏的,聚集在场景中,并且具有已知的电学性质。因此,我们探索了利用信号的稀疏性及其空间梯度的替代正则化策略的使用,同时也施加了物理推导的振幅约束。通过利用这些先验知识,可以获得更清晰的场景重建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse reconstruction methods in RF Tomography for underground imaging
Underground imaging involving RF Tomography is generally severely ill-posed posed. Tikhonov Regularization is perhaps the most common method to address this ill-posedness. The proposed methods are based upon the realistic assumptions that targets (e.g. tunnels) are sparse and clustered in the scene, and have known electrical properties. Therefore, we explore the use of alternative regularization strategies leveraging sparsity of the signal and its spatial gradient, while also imposing physically-derived amplitude constraints. By leveraging this prior knowledge, cleaner scene reconstructions are obtained.
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