Robotic Subsurface Pipeline Mapping with a Ground-penetrating Radar and a Camera

2018 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS)(2018)

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摘要
We propose a novel subsurface pipeline mapping method by fusing Ground Penetrating Radar (GPR) scans and camera images. To facilitate the simultaneous detection of multiple pipelines, we model the GPR sensing process and prove hyperbola response for general scanning with non-perpendicular angles. Furthermore, we fuse visual simultaneous localization and mapping outputs, encoder readings with GPR scans to classify hyperbolas into different pipeline groups. We extensively apply the J-Linkage method and maximum likelihood estimation to improve algorithm robustness and accuracy. As the result, we optimally estimate the radii and locations of all pipelines. We have implemented our method and tested it in physical experiments with representative pipeline configurations. The results show that our method successfully reconstructs all subsurface pipes. Moreover, the average localization error is 4.69cm.
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关键词
pipeline groups,hyperbola response,GPR sensing process,Ground Penetrating Radar scans,subsurface pipeline mapping method,robotic subsurface pipeline mapping,subsurface pipes,representative pipeline configurations,maximum likelihood estimation,J-Linkage method,hyperbolas,GPR scans,mapping outputs,visual simultaneous localization,nonperpendicular angles,general scanning,size 4.69 cm
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