2019
DOI: 10.3390/rs11212545
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3D GPR Image-based UcNet for Enhancing Underground Cavity Detectability

Abstract: This paper proposes a 3D ground penetrating radar (GPR) image-based underground cavity detection network (UcNet) for preventing sinkholes in complex urban roads. UcNet is developed based on convolutional neural network (CNN) incorporated with phase analysis of super-resolution (SR) GPR images. CNNs have been popularly used for automated GPR data classification, because expert-dependent data interpretation of massive GPR data obtained from urban roads is typically cumbersome and time consuming. However, the con… Show more

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Cited by 38 publications
(15 citation statements)
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References 23 publications
(25 reference statements)
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“…Существенно возросло число новаций и в камеральной обработке георадарных данных, прежде всего с реализацией трехмерных систем (M. Kang, N. Kim, S. Im, J. Lee, Y. An [245]).…”
Section: современные тенденции георадарных исследованийunclassified
“…Существенно возросло число новаций и в камеральной обработке георадарных данных, прежде всего с реализацией трехмерных систем (M. Kang, N. Kim, S. Im, J. Lee, Y. An [245]).…”
Section: современные тенденции георадарных исследованийunclassified
“…An open source software, "gprMax" [23], is a favorable option to generate GPR profiles. It numerically solves Maxwell's equations by the Finite-Difference Time-Domain method [24] and offers advanced subterranean modeling, succeeding in both academic and industrial applications [25][26][27]. In this research, we simulated a stochastic number (range: 0-16) of cylinder pipelines (random diameters ranging from 5 to 40 cm) buried randomly inside a 2 m × 1 m subsurface domain and then produced 40 such GPR profiles (a non-intensive dataset) with downsampled data resolution 400 × 448.…”
Section: Data Descriptionmentioning
confidence: 99%
“…After space, aeronautical, marine, and land-based applications, it is now the turn of the subsurface application. Kang et al [14] proposed a three-dimensional underground cavity detection network (UcNet) to prevent the collapse of furrows in complex urban roads based on radar images (GPR). UcNet is being developed based on a convulsive neural network (CNN) integrated with the phase analysis of super-resolution GPR images.…”
Section: Radar Imaging and Processingmentioning
confidence: 99%