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Deep learning-based automated underground cavity detection using three-dimensional ground penetrating radar

机译:基于深度学习的三维探地雷达自动探测地下洞

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摘要

Three-dimensional ground penetrating radar data are often ambiguous and complex to interpret when attempting to detect only underground cavities because ground penetrating radar reflections from various underground objects can appear like those from cavities. In this study, we tackle the issue of ambiguity by proposing a system based on deep convolutional neural networks, which is capable of autonomous underground cavity detection beneath urban roads using three-dimensional ground penetrating radar data. First, a basis pursuit-based background filtering algorithm is developed to enhance the visibility of underground objects. The deep convolutional neural network is then established and applied to automatically classify underground objects using the filtered three-dimensional ground penetrating radar data as represented by three types of images: A-, B-, and C-scans. In this study, we utilize a novel two-dimensional grid image consisting of several B- and C-scan images. Cavity, pipe, manhole, and intact features extracted from in situ three-dimensional ground penetrating radar data are used to train the convolutional neural network. The proposed technique is experimentally validated using real three-dimensional ground penetrating radar data obtained from urban roads in Seoul, South Korea.
机译:当试图仅检测地下空腔时,三维探地雷达数据通常是模棱两可且难以解释的,因为来自各种地下物体的探地雷达反射可能像来自空腔的那样出现。在这项研究中,我们通过提出一个基于深度卷积神经网络的系统来解决歧义性问题,该系统能够使用三维探地雷达数据在城市道路下方进行自主地下空腔检测。首先,开发了一种基于基本追踪的背景过滤算法,以增强地下物体的可见性。然后建立深度卷积神经网络,并将其应用到使用过滤的三维地面穿透雷达数据自动分类地下物体的过程中,该数据由三种类型的图像表示:A扫描,B扫描和C扫描。在这项研究中,我们利用了一个新颖的二维网格图像,该图像由几个B扫描和C扫描图像组成。从原位三维探地雷达数据中提取的腔体,管道,人孔和完整特征用于训练卷积神经网络。拟议的技术是使用从韩国首尔的城市道路获得的真实三维地面穿透雷达数据进行实验验证的。

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