Application of deep learning image-to-image transformation networks to GPR radargrams for sub-surface imaging in infrastructure monitoring

Jean Kyle Alvarez, S. Kodagoda
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引用次数: 23

Abstract

The corrosion of reinforced concrete sewer pipes in aging infrastructure is a serious ongoing issue and as such, research into technologies that allow for autonomous site assessments are of major priority to wastewater managing utilities. The use of Ground Penetrating Radar (GPR) is being investigated for providing sub-surface images of sewer crowns. Due to the nature of GPRs, the analysis of a radargram for identifying sub-surface features is non-intuitive and usually require the use of an expert. Traditional methods to help ease analysis involve the use of Synthetic Aperture Radar (SAR) and migration techniques. These techniques refocus dipping and point reflectors to be closer to their true shape but require an accurate velocity model to be effective. This is not always readily available and difficult to estimate especially in regards to sewer conditions. We instead provide an alternative and present a deep learning framework for transforming ground penetrating radargrams into sub-surface permittivity maps. An evaluation of various state-of-the-art deep learning architectures is also conducted, comparing the performance of different objective functions and identifying current limitations. This work provides the base for further exploration of the application of deep learning for use in infrastructure monitoring.
深度学习图像到图像转换网络在GPR雷达图中的应用,用于基础设施监测的地下成像
老化基础设施中钢筋混凝土下水管道的腐蚀是一个严重的持续问题,因此,研究允许自主现场评估的技术是废水管理公用事业的主要优先事项。正在研究使用探地雷达(GPR)提供下水道冠的地下图像。由于GPRs的性质,分析雷达图以识别地下特征是不直观的,通常需要使用专家。简化分析的传统方法包括使用合成孔径雷达(SAR)和偏移技术。这些技术重新聚焦倾斜和点反射器,使其更接近其真实形状,但需要精确的速度模型才能有效。这并不总是很容易得到,而且很难估计,特别是在下水道条件方面。相反,我们提供了一种替代方案,并提出了一个深度学习框架,用于将探地雷达图转换为地下介电常数图。还对各种最先进的深度学习架构进行了评估,比较了不同目标函数的性能并确定了当前的局限性。这项工作为进一步探索深度学习在基础设施监测中的应用提供了基础。
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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