探地雷达数据采样与图像重建的优化

Motoyuki Sato, Kazunori Takahashi, Li Yi
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引用次数: 5

摘要

本文的研究重点是利用探地雷达数据进行三维图像重建。传统的方法是获取具有较细间隔的探地雷达网格数据集,满足天线的奈奎斯特空间采样准则。但是,数据采集时间较长。在本研究中,我们尝试了两种不同的方法来重建违反Nyquist空间采样准则的稀疏数据图像:一种非网格三维迁移方法和一种基于凸集投影(POCS)和频率波数(f-k)滤波的新插值方法。并利用3DGPR系统采集的沙坑实验数据和现场实验数据对两种方法进行了验证。结果表明,非网格三维偏移法和插值法均能较好地重建主目标(0.8 m深的金属管),平均空间间隔为半波长。但是非网格化的迁移结果(特别是在浅深度)受到迁移伪影的影响。并对插值后的迁移结果进行了验证,减少了迁移伪影。这些结果表明,降低数据密度是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of data sampling and image reconstruction by GPR
This paper focuses on 3-dimensional (3D) image reconstruction by ground penetrating radar (GPR) data. Conventionally, we acquired a GPR gridded dataset with a fine interval, which satisfies the Nyquist spatial sampling criterion for an antenna. However, it takes long time for data acquisition. In this study, we tried two different approaches to reconstruct the image with sparse data that violated the Nyquist spatial sampling criterion: A non-gridded 3D migration method and a new interpolation method based on Projection onto convex sets (POCS) and frequency-wave number (f-k) filtering. Both methods are demonstrated with sand pit experiment datasets and a field experiment data that is acquired by our 3DGPR system. The results shows that both the non-gridded 3D migration method and the interpolation method can reconstruct the main target (a metal pipe at 0.8 m depth) well with the average spatial interval that equals to half wave length. But the non-gridded migration results (especially in shallow depth) suffer from the migration artifacts. The migrated result after interpolation is also demonstrated, and the migration artifacts can be reduced. These results indicate that it is possible to reduce the data density.
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