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Intelligent Upgrading and Application of Bridge Video Surveillance System Based on Computer Vision

 Intelligent Upgrading and Application of Bridge Video Surveillance System Based on Computer Vision
Author(s): , , ,
Presented at IABSE Congress: Bridges and Structures: Connection, Integration and Harmonisation, Nanjing, People's Republic of China, 21-23 September 2022, published in , pp. 1147-1153
DOI: 10.2749/nanjing.2022.1147
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The rapid development of computer vision provides a foundation for the intelligent upgrading of bridge video surveillance systems. In this paper, two intelligent upgrading methods were developed an...
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Bibliographic Details

Author(s): (CCCC Second Harbor Engineering Company LTD, Wuhan, China)
(CCCC Second Harbor Engineering Company LTD, Wuhan, China)
(CCCC Second Harbor Engineering Company LTD, Wuhan, China; Key Laboratory of Large-span Bridge Construction Technology, Wuhan, China)
(CCCC Second Harbor Engineering Company LTD, Wuhan, China; Key Laboratory of Large-span Bridge Construction Technology, Wuhan, China)
Medium: conference paper
Language(s): English
Conference: IABSE Congress: Bridges and Structures: Connection, Integration and Harmonisation, Nanjing, People's Republic of China, 21-23 September 2022
Published in:
Page(s): 1147-1153 Total no. of pages: 7
Page(s): 1147-1153
Total no. of pages: 7
DOI: 10.2749/nanjing.2022.1147
Abstract:

The rapid development of computer vision provides a foundation for the intelligent upgrading of bridge video surveillance systems. In this paper, two intelligent upgrading methods were developed and deployed. The first method uses edge computing equipment as the core, to quickly identify and locate vehicles across the large-span bridge by YOLOv5, which was trained by synthesized vehicle dataset, and then a large-span bridge vehicle digital twin system was built and deployed in Baijusi Yangtze River Bridge, which is suitable for scenarios with high real-time requirements. The another one is based on cloud computing, relying on ShuffleNetV2 to build a waterlogging recognition model and early warning system, which is suitable for scenarios with low real-time requirements. The results show that the constructed intelligent system upgrades the traditional passive access system to an early warning system with active recognition, which improves the intelligence of the system and meets the needs of engineering applications.

Keywords:
early warning deep learning video surveillance intelligent upgrading
Copyright: © 2022 International Association for Bridge and Structural Engineering (IABSE)
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