Litcius/Paper detail

RCE-GAN: A Rebar Clutter Elimination Network to Improve Tunnel Lining Void Detection from GPR Images

Yuanzheng Wang, Hui Qin, Yu Tang, Donghao Zhang, Dong‐Hui Yang, Chunxu Qu, Tiesuo Geng

2022Remote Sensing66 citationsDOIOpen Access PDF

Abstract

Ground penetrating radar (GPR) is one of the most recommended tools for routine inspection of tunnel linings. However, the rebars in the reinforced concrete produce a strong shielding effect on the electromagnetic waves, which may hinder the interpretation of GPR data. In this work, we proposed a method to improve the identification of tunnel lining voids by designing a generative adversarial network-based rebar clutter elimination network (RCE-GAN). The designed network has two sets of generators and discriminators, and by introducing the cycle-consistency loss, the network is capable of learning high-level features between unpaired GPR images. In addition, an attention module and a dilation center part were designed in the network to improve the network performance. Validation of the proposed method was conducted on both synthetic and real-world GPR images, collected from the implementation of finite-difference time-domain (FDTD) simulations and a controlled physical model experiment, respectively. The results demonstrate that the proposed method is promising for its lower demand on the training dataset and the improvement in the identification of tunnel lining voids.

Topics & Concepts

Ground-penetrating radarRebarClutterComputer scienceFinite-difference time-domain methodGenerative adversarial networkElectromagnetic shieldingIdentification (biology)RadarGeologyArtificial intelligenceDeep learningMaterials scienceStructural engineeringEngineeringTelecommunicationsOpticsBotanyBiologyPhysicsComposite materialGeophysical Methods and ApplicationsInfrastructure Maintenance and MonitoringSeismic Waves and Analysis
RCE-GAN: A Rebar Clutter Elimination Network to Improve Tunnel Lining Void Detection from GPR Images | Litcius