High-Precision Visual Monitoring Method for Bridge Displacement Based on Computer Vision and Its Engineering Application
Abstract
1. Introduction
- An adaptive binarization threshold adjustment mechanism is introduced, which significantly improves the algorithm’s adaptability and robustness under complex lighting conditions. In addition, by integrating the Super Resolution Convolutional Neural Network (SRCNN) model, the method achieves sub-pixel identification accuracy, thereby enabling sub-millimeter precision in displacement measurement.
- A complete validation framework is established, where the proposed method is first verified through scaled model testing and subsequently applied to real bridge displacement monitoring and structural damping ratio identification. This not only demonstrates the method’s reliability under practical conditions but also highlights its potential for broader applications in structural health monitoring.
2. Bridge Displacement Monitoring Based on Computer Vision
2.1. Characteristics and Principles of the Bridge Displacement Visual Monitoring Method
2.2. High Precision Vision Based Bridge Displacement Identification Using Connected Domain Segmentation and Matching Algorithm
2.2.1. Principles of Connected Region Segmentation and Matching Method
- Extract the first frame image and acquire the minimum bounding rectangle information of the target object’s connected region;
- Perform binarization processing on the current frame image and construct minimum bounding rectangles for all connected regions;
- Conduct similarity matching between each rectangle and the target object’s minimum bounding rectangle from the previous frame to determine the target’s position in the current frame;
- Segment the region containing the target object, apply SRCNN-based super-resolution processing to the segmented image, and obtain the target’s pixel coordinates within the segmented sub-image;
- Map the target coordinates to the global image coordinate system and derive the physical coordinates of the marker in 3D space through coordinate transformation.
2.2.2. Camera Calibration
3. Experimental Validation
4. Application Case Study
4.1. Monitoring of Actual Bridge Displacement
4.2. Structural Damping Ratio Identification
5. Discussion
5.1. Limitations Under Operational Dynamic Loading
5.2. Validation and Method Comparison
6. Conclusions
- The proposed vision-based displacement monitoring method, grounded in the connected domain segmentation and matching algorithm, achieves high precision and robust performance, delivering sub-millimeter accuracy in bridge displacement measurement.
- Damping identification experiments based on the vision-based method reveal that system damping adheres to a linear viscous damping mechanism across varying fluid viscosities. At a viscosity of 3.05 Pa·s, the system damping ratio attains 1.50%, significantly exceeding the 0.10–0.14% range observed in the damping-free structure. Damper installation location critically influences damping performance, with higher damping ratios achieved at positions of greater modal displacement. Additionally, system damping exhibits insensitivity to structural natural frequencies but increases slightly with vibration amplitude.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Span Length L (m) | Damping Fluid Viscosity (Pa·s) | Tube Type | Mass (kg) | |
---|---|---|---|---|
2.5, 2.6, 2.7, 2.8, 2.9 | 0.02, 0.28, 1.45, 3.05 | Single-tube Double-tube Triple-tube | 0.5 | 4, 5, 6, 7 |
2.9 | 0.02, 0.28, 1.45, 3.05 | Single-tube | 0.17, 0.25, 0.33, 0.5 | 4 |
Span (m) | 4 kg | 5 kg | 6 kg | 7 kg | ||||
---|---|---|---|---|---|---|---|---|
fn (Hz) | ξ (%) | fn (Hz) | ξ (%) | fn (Hz) | ξ (%) | fn (Hz) | ξ (%) | |
2.5 | 7.22 | 0.12 | 7.22 | 0.12 | 7.22 | 0.13 | 7.22 | 0.13 |
7.22 | 0.12 | 7.22 | 0.12 | 7.22 | 0.14 | 7.22 | 0.14 | |
2.6 | 6.78 | 0.11 | 6.78 | 0.11 | 6.78 | 0.12 | 6.78 | 0.12 |
6.78 | 0.10 | 6.78 | 0.11 | 6.78 | 0.12 | 6.78 | 0.12 | |
2.7 | 6.28 | 0.10 | 6.28 | 0.11 | 6.28 | 0.11 | 6.28 | 0.12 |
6.28 | 0.10 | 6.28 | 0.11 | 6.28 | 0.12 | 6.28 | 0.11 | |
2.8 | 5.89 | 0.11 | 5.89 | 0.11 | 5.89 | 0.12 | 5.89 | 0.12 |
5.89 | 0.11 | 5.89 | 0.11 | 5.89 | 0.12 | 5.89 | 0.12 | |
2.9 | 5.49 | 0.10 | 5.49 | 0.11 | 5.49 | 0.11 | 5.49 | 0.11 |
5.49 | 0.11 | 5.49 | 0.11 | 5.49 | 0.11 | 5.49 | 0.11 |
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Sun, C.; He, W.; Zou, C. High-Precision Visual Monitoring Method for Bridge Displacement Based on Computer Vision and Its Engineering Application. Appl. Sci. 2025, 15, 10023. https://doi.org/10.3390/app151810023
Sun C, He W, Zou C. High-Precision Visual Monitoring Method for Bridge Displacement Based on Computer Vision and Its Engineering Application. Applied Sciences. 2025; 15(18):10023. https://doi.org/10.3390/app151810023
Chicago/Turabian StyleSun, Congbo, Wei He, and Chao Zou. 2025. "High-Precision Visual Monitoring Method for Bridge Displacement Based on Computer Vision and Its Engineering Application" Applied Sciences 15, no. 18: 10023. https://doi.org/10.3390/app151810023
APA StyleSun, C., He, W., & Zou, C. (2025). High-Precision Visual Monitoring Method for Bridge Displacement Based on Computer Vision and Its Engineering Application. Applied Sciences, 15(18), 10023. https://doi.org/10.3390/app151810023