Litcius/Paper detail

A Study of Automatic Recognition and Localization of Pipeline for Ground Penetrating Radar Based on Deep Learning

Haobang Hu, Hongyuan Fang, Niannian Wang, Hai Liu, Jianwei Lei, Duo Ma, Jiaxiu Dong

2022IEEE Geoscience and Remote Sensing Letters30 citationsDOI

Abstract

This letter proposes a method based on deep learning for the automatic recognition and localization of underground pipelines using the ground penetrating radar (GPR). Firstly, an automatic recognition model with an average precision (AP) of 0.9256 is proposed and trained based on Faster R-CNN. The feature extraction is optimized by the Attention-guided Context Feature Pyramid Network (ACFPN), and the cascade structure is used to improve the detection frame regression accuracy. Moreover, using Tesseract OCR, a positioning model is developed based on recognition results to obtain the burial and horizontal position of the pipeline. Furthermore, on-site experiments were carried out on real embedded pipes to verify the feasibility and effectiveness of the developed method. The absolute error of the localization data is lower than 11 cm, and the average error ratio is smaller than 12%. Consequently, it is demonstrated that the proposed method is considerably automatic, efficient, and reliable for the recognition and localization of underground pipelines.

Topics & Concepts

Computer scienceArtificial intelligenceGround-penetrating radarPipeline (software)Feature extractionPipeline transportPyramid (geometry)Pattern recognition (psychology)Automatic target recognitionComputer visionFeature (linguistics)Deep learningFrame (networking)RadarSynthetic aperture radarEngineeringMathematicsEnvironmental engineeringProgramming languageGeometryTelecommunicationsPhilosophyLinguisticsGeophysical Methods and ApplicationsGeotechnical Engineering and Underground StructuresUnderwater Acoustics Research