Computer Vision-Based Structural Displacement Measurement Robust to Light-Induced Image Degradation for In-Service Bridges
Abstract
:1. Introduction
2. Computer Vision-Based Displacement Measurement
2.1. Overview
2.2. Light-Induced Image Degradation
3. Displacement Measurement Using an Adaptive ROI
3.1. Adaptive ROI Algorithm
3.2. Uncertainty Analysis
4. Experimental Validation: Laboratory-Scale
5. Field Validation
6. Conclusions
Conflicts of Interests
Acknowledgments
Author Contributions
References
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Parts | Model | Features |
---|---|---|
Marker | User-defined | - Four white circles in a black background |
- Horizontal interval: 150 mm | ||
- Vertical interval: 100 mm | ||
- Radius of the circles: 10 mm | ||
Camera | CNB-A1263NL | - NTSC output interface 1 |
- ×22 optical zoom | ||
Computer | LG-A510 | - 1.73 GHz Intel Core i7 CPU |
- 4 GB DDR3 RAM | ||
LDV | RSV-150 | - Displacement resolution: 0.3 μm |
Cases | Feature Detection | Emax | Esd |
---|---|---|---|
Case 1 | without adaptive ROI | 0.0549 mm | 0.0185 |
with adaptive ROI | 0.0433 mm | 0.0126 | |
Case 2 | without adaptive ROI | 0.2518 mm | 0.1736 |
with adaptive ROI | 0.0314 mm | 0.0127 | |
Case 3 | without adaptive ROI | 0.7110 mm | 0.4081 |
with adaptive ROI | 0.0565 mm | 0.0439 |
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Lee, J.; Lee, K.-C.; Cho, S.; Sim, S.-H. Computer Vision-Based Structural Displacement Measurement Robust to Light-Induced Image Degradation for In-Service Bridges. Sensors 2017, 17, 2317. https://doi.org/10.3390/s17102317
Lee J, Lee K-C, Cho S, Sim S-H. Computer Vision-Based Structural Displacement Measurement Robust to Light-Induced Image Degradation for In-Service Bridges. Sensors. 2017; 17(10):2317. https://doi.org/10.3390/s17102317
Chicago/Turabian StyleLee, Junhwa, Kyoung-Chan Lee, Soojin Cho, and Sung-Han Sim. 2017. "Computer Vision-Based Structural Displacement Measurement Robust to Light-Induced Image Degradation for In-Service Bridges" Sensors 17, no. 10: 2317. https://doi.org/10.3390/s17102317