Noise suppressing and direct wave removal in GPR data based on shearlet transform

X. Wang, S. Liu
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引用次数: 2

Abstract

Ground penetrating radar (GPR) is often used to detect buried objects and evaluate structural condition. However, the direct wave and random noise often influence the arrival-time detection and the target-position location. We present a new application of Shearlet transform (ShT) to GPR data processing for direct wave removal and random noise suppression. ShT is a non-adaptive geometric-analysis technique, which has the properties of multi-directions and multi-scale, so it can show the optimal representations of signals in higher dimensions. The original GPR data is transformed to the ShT domain. The direct wave and the remaining GPR signal are effectively separated. While we eliminate the direct wave, the GPR signal is not damaged. The Shearlet coefficients of the GPR signal are relatively large, whereas random noises are relatively small. So we can use the threshold algorithm depending on different scales and directions in the ShT domain to suppress random noise. The GPR signal can be preserved very well and SNR is enhanced.
基于剪切波变换的探地雷达数据噪声抑制与直接去波
探地雷达(GPR)常用于探测地下目标和评估结构状况。然而,直接波和随机噪声经常影响到达时间检测和目标位置定位。本文提出了Shearlet变换(ShT)在探地雷达数据处理中的新应用,用于直接去波和抑制随机噪声。ShT是一种非自适应几何分析技术,它具有多方向、多尺度的特性,可以在高维空间中表现出信号的最优表示。将原始GPR数据转换为ShT域。直接波和剩余的探地雷达信号被有效地分离。当我们消除直接波时,探地雷达信号不会受到破坏。探地雷达信号的Shearlet系数较大,而随机噪声相对较小。因此我们可以在ShT域中根据不同的尺度和方向使用阈值算法来抑制随机噪声。该方法能很好地保留探地雷达信号,提高信噪比。
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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