Image-Based Bolt-Loosening Detection Using a Checkerboard Perspective Correction Method
Abstract
:1. Introduction
2. Limitations of Rectangular Spacer Method for Correcting Camera Position Deviation
3. Checkerboard-Based Bolt Image-Correction Method and Bolt-Loosening Diagnosis
3.1. Checkerboard-Based Bolt Image-Correction Method
3.2. Checkerboard-Based Bolt Image-Correction Method Process
4. Method Test Verification
4.1. Test Verification
4.2. Experimental Comparison of Checkerboard-Based and Rectangular-Spacer-Based Bolt Image-Correction Methods
5. Analysis of Influencing Factors
5.1. Effect of Different Numbers of Correction Points
5.2. The Influence of Different Camera Shooting Heights
5.3. Effect of Different Light Intensities
6. Conclusions
- (1)
- The proposed method can correct camera position angle deviations from 0° to 180°.
- (2)
- When the maximum perspective correction is limited to 45°, the accuracy and stability of the bolt-loosening detection results of the bolt image corrected based on the checkerboard are significantly improved compared with the uncorrected bolt image. Additionally, the average value error of the corrected bolt looseness test results is within 1.5°, and the maximum average value error of the uncorrected bolt looseness test results reaches 5.9°.
- (3)
- The overall average value errors of the loosening diagnosis with 24, 16, 12, and 9 correction points were all less than 1.5°. This method exhibits excellent correction performance when the checkerboard has four rows, four columns, and nine correction points.
- (4)
- When the shooting height of the camera is 30 cm to 40 cm, the overall average value error and the standard deviation are the smallest, and the angle of the bolt-loosening recognition result is more accurate and stable. When the shooting height of the camera is lower than 30 cm, the overall average value error and standard deviation gradually increase. However, when the shooting height of the camera is 10 cm, the average value error is less than 2°. When the shooting height of the camera is higher than 50 cm, although the overall average value error does not increase significantly, the standard deviation gradually increases. This indicates that data stability begins to decrease.
- (5)
- The correction test error of the bolt image shot on a sunny day is slightly larger than that on a cloudy day. The maximum angle detected under the vertical perspective is 1.5° on a sunny day and 1° on a cloudy day. The average values of the two light intensity test results differ by 0.1° under the horizontal perspective and 0.05° under the vertical perspective. This shows that the method is less affected by light intensity and has good stability.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Angle of Damage (°) | Perspective Direction | Perspective Angle (°) | Number of Pictures |
---|---|---|---|
10 | None | None | 20 |
Horizontal perspective | 10 | 20 | |
20 | 20 | ||
30 | 20 | ||
45 | 20 | ||
Vertical perspective | 10 | 20 | |
20 | 20 | ||
30 | 20 | ||
45 | 20 | ||
Horizontal–vertical perspective | 10–10 | 20 | |
10–30 | 20 | ||
30–10 | 20 | ||
45–45 | 20 |
Correction Method | Damage Angle (°) | Camera Position Deviation Angle (°) | Number of Pictures |
---|---|---|---|
10 | 0 | 0 | 1 |
Checkerboard-based | 10 | 0 | 20 |
90 | 20 | ||
Rectangular-spacer-based | 10 | 0 | 20 |
90 | 20 |
Angle of Damage(°) | Correction Points | Perspective Direction | Perspective Angle (°) | Number of Pictures |
---|---|---|---|---|
10 | 9, 12, 16 | Horizontal perspective | 10 | 20 |
20 | 20 | |||
30 | 20 | |||
45 | 20 | |||
Vertical perspective | 10 | 20 | ||
20 | 20 | |||
30 | 20 | |||
45 | 20 | |||
Horizontal–vertical perspective | 10–10 | 20 | ||
10–30 | 20 | |||
30–10 | 20 | |||
45–45 | 20 |
Angle of Damage (°) | Perspective Direction | Perspective Angle (°) | Camera Height (cm) | Number of Pictures |
---|---|---|---|---|
10 | Horizontal perspective | 45 | 10, 20, 30, 40, 50, 60 | 20 |
Vertical perspective | 45 | 10, 20, 30, 40, 50, 60 | 20 |
Light Intensity | Perspective Direction | Perspective Angle (°) | Camera Height (cm) | Number of Pictures |
---|---|---|---|---|
Sunny day | Horizontal perspective | 45 | 55 | 20 |
Vertical perspective | 45 | 55 | 20 | |
Cloudy day | Horizontal perspective | 45 | 55 | 20 |
Vertical perspective | 45 | 55 | 20 |
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Xie, C.; Luo, J.; Li, K.; Yan, Z.; Li, F.; Jia, X.; Wang, Y. Image-Based Bolt-Loosening Detection Using a Checkerboard Perspective Correction Method. Sensors 2024, 24, 3271. https://doi.org/10.3390/s24113271
Xie C, Luo J, Li K, Yan Z, Li F, Jia X, Wang Y. Image-Based Bolt-Loosening Detection Using a Checkerboard Perspective Correction Method. Sensors. 2024; 24(11):3271. https://doi.org/10.3390/s24113271
Chicago/Turabian StyleXie, Chengqian, Jun Luo, Kaili Li, Zhitao Yan, Feng Li, Xiaogang Jia, and Yuanlai Wang. 2024. "Image-Based Bolt-Loosening Detection Using a Checkerboard Perspective Correction Method" Sensors 24, no. 11: 3271. https://doi.org/10.3390/s24113271
APA StyleXie, C., Luo, J., Li, K., Yan, Z., Li, F., Jia, X., & Wang, Y. (2024). Image-Based Bolt-Loosening Detection Using a Checkerboard Perspective Correction Method. Sensors, 24(11), 3271. https://doi.org/10.3390/s24113271