Internal Detection of Ground-Penetrating Radar Images Using YOLOX-s with Modified Backbone

Author:

Zheng Xibin1ORCID,Fang Sinan1ORCID,Chen Haitao2,Peng Liang1,Ye Zhi3

Affiliation:

1. College of Geophysics and Petroleum Resources, Yangtze University, Wuhan 430102, China

2. China Railway Bridge Science Research Institute, Ltd., Wuhan 430034, China

3. School of Computer Science and Engineering, Wuhan Institute of Technology, Wuhan 430079, China

Abstract

Geological radar is an important method used for detecting internal defects in tunnels. Automatic interpretation techniques can effectively reduce the subjectivity of manual identification, improve recognition accuracy, and increase detection efficiency. This paper proposes an automatic recognition approach for geological radar images (GPR) based on YOLOX-s, aimed at accurately detecting defects and steel arches in any direction. The method utilizes the YOLOX-s neural network and improves the backbone with Swin Transformer to enhance the recognition capability for small targets in geological radar images. To address irregular voids commonly observed in radar images, the CBAM attention mechanism is incorporated to improve the accuracy of detection annotations. We construct a dataset using field detection data that includes targets of different sizes and orientations, representing “voids” and “steel arches”. Our model tackles the challenges of traditional GPR image interpretation and enhances the automatic recognition accuracy and efficiency of radar image detection. In comparative experiments, our improved model achieves a recognition accuracy of 92% for voids and 94% for steel arches, as evaluated on the constructed dataset. Compared to YOLOX-s, the average precision is improved by 6.51%. These results indicate the superiority of our model in geological radar image interpretation.

Funder

Hubei Provincial Department of Education Science and Technology Research Program for Young Talents

China Postdoctoral Science Foundation General Program

Chinese National Natural Science Foundation Youth Project

Open Fund Project of the Key Laboratory of Oil and Gas Resources and Exploration Technology, Ministry of Education

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

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