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Published: Građevinar 77 (2025) 1
Paper type: Original scientific paper
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Non-contact intelligent detection technology for railway arch bridge performance degradation based on UAV Image recognition

Shifu Wang, Shaopeng Yang, Qi Wang, Lingfeng Luo, Feng Wang

Abstract

Bridges are crucial components of high-speed railway projects, and their structural integrity significantly impacts the operational safety of high-speed railways. This paper introduces a non-contact intelligent detection technology for assessing the deterioration of high-speed railway bridges using unmanned aerial vehicle (UAV) image recognition. The methodology involves collecting image data using a UAV and digital camera and processing them technically to generate consistent point-cloud data. Subsequently, these data are integrated into a unified point-cloud model through point-cloud alignment. Finally, a refined three-dimensional (3D) model of a high-speed railway bridge was developed by fusing heterogeneous data through live 3D reconstruction. The method has the advantages of high detection speed and fewer personnel requirements; this technology can be used for daily monitoring of the technical basis and can arrange a small number of personnel to complete the daily inspection. The empirical results demonstrate that this inspection method is not constrained by skylight points and provides a real-time and highly efficient reflection of the conditions of the bridge. The recognition accuracy and image acquisition range satisfy the inspection requirements for the operation and maintenance of high-speed railway bridges.

Keywords
high-speed railway bridge, bridge faults, non-contact measurement, UAV

HOW TO CITE THIS ARTICLE:

Wang, S., Yang, S., Wang, Q., Luo, L., Wang, . F.: Non-contact intelligent detection technology for railway arch bridge performance degradation based on UAV Image recognition, GRAĐEVINAR, 77 (2025) 1, pp. 1-11, doi: https://doi.org/10.14256/JCE.3925.2023

OR:

Wang, S., Yang, S., Wang, Q., Luo, L., Wang, . F. (2025). Non-contact intelligent detection technology for railway arch bridge performance degradation based on UAV Image recognition, GRAĐEVINAR, 77 (1), 1-11, doi: https://doi.org/10.14256/JCE.3925.2023

LICENCE:

Creative Commons License
This paper is licensed under a Creative Commons Attribution 4.0 International License.
Authors:
3925 A1 Shifu Wang WEB
Shifu Wang
Nanning Railway Bureau, China
Guilin High-Speed Rail Infrastructure Division
3925 A2 Shaopeng Yang WEB
Shaopeng Yang
Southwest Jiaotong University, China
School of Civil Engineering
3925 A3 Qi Wang WEB
Qi Wang
Southwest Jiaotong University, China
School of Civil Engineering
3925 A4 Lingfeng Luo WEB
Lingfeng Luo
Chongqing Wukang Technology Co., Ltd
3925 A5 Feng Wang WEB
Feng Wang
Southwest Jiaotong University, China
School of Civil Engineering