Image-Processing-Based Subway Tunnel Crack Detection System

Author:

Liu Xiaofeng1,Hong Zenglin12,Shi Wei34,Guo Xiaodan2

Affiliation:

1. School of Land Engineering, Chang’an University, Xi’an 710054, China

2. Shaanxi Province Institute of Geological Survey, Xi’an 710054, China

3. Shaanxi Hydrogeology Engineering Geology and Environment Geology Survey Center, Xi’an 710068, China

4. Shaanxi Engineering Technology Research Center for Urban Geology and Underground Space, Xi’an 710068, China

Abstract

With the increase in urban rail transit construction, instances of tunnel disease are on the rise, and cracks have become the focus of tunnel maintenance and management. Therefore, it is essential to carry out crack detection in a timely and efficient manner to not only prolong the service life of the tunnel but also reduce the incidence of accidents. In this paper, the design and structure of a tunnel crack detection system are analyzed. On this basis, this paper proposes a new method for crack identification and feature detection using image processing technology. This method fully considers the characteristics of tunnel images and the combination of these characteristics with deep learning, while a deep convolutional network (Single-Shot MultiBox Detector (SSD)) is proposed based on deep learning for object detection in complex images. The experimental results show that the test set accuracy and training set accuracy of the support vector machine (SVM) in the classification comparison test are up to 88% and 87.8%, respectively; while the test accuracy of Alexnet’s deep convolutional neural network-based classification and identification is up to 96.7%, and the training set accuracy is up to 97.5%. It can be seen that this deep convolutional network recognition algorithm based on deep learning and image processing is better and more suitable for the detection of cracks in subway tunnels.

Funder

Shaanxi Provincial Key Laboratory of Land Consolidation

Shaanxi Provincial Key R&D Program

Shaanxi Provincial Public Welfare Geology Project

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference30 articles.

1. Fu, H., Deng, H., Zhao, Y., Chang, X., and Yi, H. (2023). Study on the Disturbance of Existing Subway Tunnels by Foundation Sloping Excavation. Appl. Sci., 13.

2. Subway Tunnel Disease Associations Mining Based on Fault Tree Analysis Algorithm;Ding;Math. Probl. Eng.,2017

3. Automatic Crack Detection and Classification Method for Subway Tunnel Safety Monitoring;Zhang;Sensors,2014

4. A crack detection system of subway tunnel based on image processing;Liu;Meas. Control.,2022

5. Lezwijn, S., Reitsma, T., and DeKok, P. (2010, January 14–16). Tunnel safety management in the Netherlands. Proceedings of the 11th International Conference on Underground Construction, Prague, Czech Republic.

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