Weikun Liu;Fengyuan Sun;Hang Zhao
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引用次数: 0

摘要

探地雷达(GPR)是进行无损地下勘探的重要工具。然而,电磁波在地下环境中的传播会受到严重衰减,从而导致重要地质信息的丢失,并限制了地下成像的分辨率。为了应对这一挑战,我们提出了一种用于 GPR 信号衰减补偿的注意力增强 U-Net (AEU-Net)模型。该模型以一维 U-Net 架构为基础,集成了一个特征融合注意力模块 (FFAB),可有效捕捉局部和全局特征,从而增强其处理复杂数据集的能力。此外,为了克服数据集获取方面的挑战,我们使用 GprMax 软件根据电导率与电磁波衰减之间的关系模拟现实地质结构,从而生成训练数据集。合成数据和实地数据的实验结果表明,所提出的方法显著提高了噪声鲁棒性,还原了精细的地下细节,并有效补偿了 GPR 信号衰减,从而显示了其在高分辨率地下成像方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep-Learning-Based Method for Attenuation Compensation in Ground-Penetrating Radar
Ground-penetrating radar (GPR) is an essential tool for nondestructive subsurface exploration. However, electromagnetic wave propagation in underground environments is severely attenuated, leading to the loss of important geological information and limiting the resolution of underground imaging. To address this challenge, we propose an attention-enhanced U-Net (AEU-Net) model for GPR signal attenuation compensation. This model builds upon the 1-D U-Net architecture and integrates a feature fusion attention block (FFAB) to effectively capture both local and global features, thereby enhancing its capability to process complex datasets. In addition, to overcome dataset acquisition challenges, we use GprMax software to simulate realistic geological structures based on the relationship between conductivity and electromagnetic wave attenuation, thereby generating the training dataset. Experimental results with synthetic and field data demonstrate that the proposed method significantly improves noise robustness, restores fine subsurface details, and effectively compensates for GPR signal attenuation, thereby showing its potential for high-resolution underground imaging.
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