Automated Defect Detection Using Threshold Value Classification Based on Thermographic Inspection
Abstract
:1. Introduction
2. Theory
2.1. Image Processing
- Step 1: 2D thermal images were acquired using two halogen lamps for heat source excitation. Then, phase and amplitude images were acquired by applying the lock-in signal processing technique;
- Step 2: Contrast evaluation was performed to analyze the optimum frequency of phase and amplitude images at the excitation frequency set in this study;
- Step 3: Filtering (mean, median, NLmean, Gaussian) for the first de-noising was applied, and the signal-to-noise ratio (SNR) was calculated to perform comparative analysis with non-filtering images;
- Step 4: Utilizing a grayscale-based histogram to find the optimal threshold value that can be classified as ‘class 1’ and ‘class 2’ for the binary image;
- Step 5: There was still noise in the binary image; therefore, the second de-noising was performed. After tracing the boundary line of the defect in the image, the metric equation was introduced to analyze the automatic defect detection based on the threshold value.
2.2. Optimum Threshold Value
3. Experimental Configuration
3.1. STS304 Reference Specimen
3.2. Experimental Setup of LIT
4. Results and Discussion
4.1. Lock-In Signal Images
4.2. Filtering
4.3. Automatic Defect Detection
4.4. Detectability Comparative
5. Conclusions and Future Works
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Thermal Conductivity (k) | 16.2 |
Density | 8000 |
Heat Capacity | 500 |
Initial Temperature | 23 °C |
Hole | Amplitude | Phase | ||
---|---|---|---|---|
Filtering | Non-Filtering | Filtering | Non-Filtering | |
A1 | − | − | 88 | 79 |
A2 | − | − | − | − |
A3 | − | − | 80 | 85 |
A4 | − | − | 81 | 84 |
B1 | 87 | 84 | 86 | 85 |
B2 | − | − | − | − |
B3 | 81 | 79 | 82 | 77 |
B4 | 88 | 88 | 84 | 82 |
C1 | 81 | 84 | 88 | 85 |
C2 | − | − | − | − |
C3 | 79 | − | − | − |
C4 | 92 | 89 | 86 | 80 |
D1 | 86 | 85 | 88 | 84 |
D2 | − | − | − | − |
D3 | 83 | 86 | 84 | 84 |
D4 | 92 | 91 | 89 | 84 |
RMSE | 23.657 | 31.1469 | 23.6378 | 24.8919 |
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Lee, S.; Chung, Y.; Shrestha, R.; Kim, W. Automated Defect Detection Using Threshold Value Classification Based on Thermographic Inspection. Appl. Sci. 2021, 11, 7870. https://doi.org/10.3390/app11177870
Lee S, Chung Y, Shrestha R, Kim W. Automated Defect Detection Using Threshold Value Classification Based on Thermographic Inspection. Applied Sciences. 2021; 11(17):7870. https://doi.org/10.3390/app11177870
Chicago/Turabian StyleLee, Seungju, Yoonjae Chung, Ranjit Shrestha, and Wontae Kim. 2021. "Automated Defect Detection Using Threshold Value Classification Based on Thermographic Inspection" Applied Sciences 11, no. 17: 7870. https://doi.org/10.3390/app11177870
APA StyleLee, S., Chung, Y., Shrestha, R., & Kim, W. (2021). Automated Defect Detection Using Threshold Value Classification Based on Thermographic Inspection. Applied Sciences, 11(17), 7870. https://doi.org/10.3390/app11177870