4.7 Article

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

Journal

Publisher

SAGE PUBLICATIONS LTD
DOI: 10.1177/1475921719838081

Keywords

Ground penetrating radar; deep convolutional neural network; underground object detection; signal processing; basis pursuit

Funding

  1. Construction Technology Research Program - Ministry of Land, Infrastructure, and Transport of the Korean Government [18TLRP-C099510-04]

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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.

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