基于压缩感知的地下成像中未知速度和目标离网问题分析

A. Gurbuz
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引用次数: 5

摘要

在压缩感知(CS)理论框架下,近年来有文献将目标空间的稀疏性应用于地下成像问题中,以减少实际系统中的数据采集负荷。开发的基于CS的成像方法基于两个重要假设;即在介质中的传播速度是已知的,潜在目标是位于离散空间点的点状目标。然而,在大多数地下成像问题中,这些假设并不总是有效的。传播速度可能只是近似已知的,目标通常不会精确地落在网格上。针对上述问题,本文分析了基于CS的地下成像方法的性能,并讨论了可能的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of unknown velocity and target off the grid problems in compressive sensing based subsurface imaging
Sparsity of target space in subsurface imaging problem is used within the framework of the compressive sensing (CS) theory in recent publications to decrease the data acquisition load in practical systems. The developed CS based imaging methods are based on two important assumptions; namely, that the speed of propagation in the medium is known and that potential targets are point like targets positioned at discrete spatial points. However, in most subsurface imaging problems these assumptions are not always valid. The propagation velocity may only be known approximately, and targets will generally not fall on the grid exactly. In this work, the performance of the CS based subsurface imaging methods are analyzed for the above defined problems and possible solutions are discussed.
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