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Underground Cylindrical Objects Detection and Diameter Identification in GPR B-Scans via the CNN-LSTM Framework

Wentai Lei, Jiabin Luo, Feifei Hou, Long Xu, Ruiqing Wang, Xinyue Jiang

2020Electronics58 citationsDOIOpen Access PDF

Abstract

Ground penetrating radar (GPR), as a non-invasive instrument, has been widely used in the civil field. The interpretation of GPR data plays a vital role in underground infrastructures to transfer raw data to the interested information, such as diameter. However, the diameter identification of objects in GPR B-scans is a tedious and labor-intensive task, which limits the further application in the field environment. The paper proposes a deep learning-based scheme to solve the issue. First, an adaptive target region detection (ATRD) algorithm is proposed to extract the regions from B-scans that contain hyperbolic signatures. Then, a Convolutional Neural Network-Long Short-Term Memory (CNN-LSTM) framework is developed that integrates Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) network to extract hyperbola region features. It transfers the task of diameter identification into a task of hyperbola region classification. Experimental results conducted on both simulated and field datasets demonstrate that the proposed scheme has a promising performance for diameter identification. The CNN-LSTM framework achieves an accuracy of 99.5% on simulated datasets and 92.5% on field datasets.

Topics & Concepts

Ground-penetrating radarConvolutional neural networkComputer scienceIdentification (biology)HyperbolaArtificial intelligenceTask (project management)Field (mathematics)Pattern recognition (psychology)Scheme (mathematics)Artificial neural networkTransfer of learningRadarComputer visionEngineeringMathematicsTelecommunicationsSystems engineeringBotanyMathematical analysisBiologyGeometryPure mathematicsGeophysical Methods and ApplicationsUnderwater Acoustics ResearchSeismic Waves and Analysis