3D-GPR-RM: A Method for Underground Pipeline Recognition Using 3-Dimensional GPR Images

Author:

Bai Xu1,Yang Yu1,Wen Zhitao1,Wei Shouming1,Zhang Jiayan1,Liu Jinlong1,Li Hongrui1,Tian Haoxiang1,Liu Guanting1

Affiliation:

1. School of Electronics and Information Engineering, Harbin Institute of Technology, Harbin 150006, China

Abstract

Ground penetrating radar (GPR), as a non-destructive and rapid detection instrument, has been widely used for underground pipeline detection. However, as the interpretation of 3-dimensional GPR images is still manually performed, the process is inefficient. Aiming at solving the challenges of automatic recognition for underground pipelines, we propose a recognition method based on a deep learning algorithm, which uses 3-dimensional GPR images and the improved 3D depth-wise separable convolution block. In order to expand the number of samples in the dataset, we propose a data augmentation method based on three-dimensional matrix rotation and use a wavelet-based denoising method to filter out the direct wave interference. To prove the effectiveness and efficiency of our method, we compared the classification performance of the improved 3D depth-wise separable convolutional block with the traditional 3D convolutional block and the ordinary 3D depth-wise separable convolutional block under the same conditions. According to the experiment’s results, the number of parameters of the method we proposed is 66.9% less than that of the traditional 3D convolution method, while the classification performance is similar. Furthermore, compared with ordinary 3D depth-wise separable convolution, our method can significantly improve the classification and recognition ability of the neural network, while the number of calculations and the number of parameters remain almost the same. This study demonstrates the effectiveness of 3D-CNN in the field of GPR image interpretation. An improved 3D depth-wise separable convolutional block is also proposed. It greatly reduces the amount of calculation and parameters while ensuring classification performance. It is better than the existing algorithms in performance. At the same time, to obtain the position and direction of the pipeline, in this study, a conic fitting method using the Canny operator is proposed to locate the vertices of B-Scan images and record their horizontal and vertical coordinates. This method can estimate the direction of the pipeline and it lays the foundation for future work such as measuring the pipeline depth.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference32 articles.

1. Estimating Features of Underground Utilities: Hybrid GPR/GPS Approach;Li;J. Comput. Civ. Eng.,2016

2. Research on the application of underground pipeline detection technology;Liao;Intell. City,2020

3. Concrete bridge deck deterioration assessment using ground penetrating radar (GPR);Nectaria;Environ. Eng. Geosci.,2017

4. Lance, E.B. (2016). Detection and Sensing of Mines, Explosive Objects, and Obscured Targets XXI, SPIE.

5. Experiments and Applications of Ground Penetrating Radar in the Investigation of Subsurface Archaeological Interest;Xin;J. Earth Inf. Sci.,2016

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