3D Measurement Method for Saturated Highlight Characteristics on Surface of Fuel Nozzle
Abstract
:1. Introduction
2. Measuring Principle of Fuel Nozzle
3. Proposed Method
3.1. Highlight Removal in Sequence Images
- Step 1:
- According to the texture information of sequence images of the fuel nozzle, it can be segmented into two main regions as shown in Figure 4a: area A of inlet hole A and area B of the entrance annular.
- Step 2:
- The patch size is important for the inpainting method based on MRF. It will directly affect the inpainting effect. The patch size is too small to maintain the consistency of texture information, and it is too large to maintain the fine texture information. According to the RSS value [33], which is used to adaptively select the patch size, and considering the window size of sharpness evaluation operator, the patch size of inpainting is assigned as 12 × 12, which can better maintain the texture characteristics and obtain a shorter calculation time. A suitable patch size can optimize the patch offset in each segmented area and constrain the initialization offset map of sequence images with highlights in focus.
- Step 3:
- After initialization, the offset of the best matching patch in each subregion is as follows:
- Step 4:
- After obtaining the optimized image offset map, the histogram statistics are used on the offset map of the image, and the approximate offset value is calculated by using the Nearest-Neighbor Field (NNF) algorithm [29] based on Kd-tree and propagated iteratively to obtain the best matching patch and offset map [34]. The 2D histogram statistics for all offsets are given in Equation (2):
- Step 5:
- The image inpainting method is based on MRF (Markov Random Field), and the Graph-cut algorithm is proposed to solve the global energy based on the sample patch:
3.2. Sharpness Evaluation Function
3.3. Hough Transform for Circle Detection
4. Experimental Verification
4.1. Highlight Removal and Topography Reconstruction
4.2. Diameter Measurement
4.3. Conical Degree of Fuel Nozzle
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Fuel Nozzle | Specular | Specular-Free | Keyence | Specular Error | Specular-Free Error |
---|---|---|---|---|---|
No. 1 | 5233.00 | 5142.00 | 5063.05 | 170.00 | 78.95 |
No. 2 | none | 5161.00 | 5082.03 | none | 78.97 |
No. 3 | 5325.00 | 5175.00 | 5088.78 | 236.22 | 86.22 |
No. 4 | 5311.00 | 5154.00 | 5069.98 | 241.02 | 84.02 |
No. 5 | 5265.00 | 5160.00 | 5076.53 | 188.47 | 83.47 |
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Li, Y.; Hou, L.; Chen, Y. 3D Measurement Method for Saturated Highlight Characteristics on Surface of Fuel Nozzle. Sensors 2022, 22, 5661. https://doi.org/10.3390/s22155661
Li Y, Hou L, Chen Y. 3D Measurement Method for Saturated Highlight Characteristics on Surface of Fuel Nozzle. Sensors. 2022; 22(15):5661. https://doi.org/10.3390/s22155661
Chicago/Turabian StyleLi, Yeni, Liang Hou, and Yun Chen. 2022. "3D Measurement Method for Saturated Highlight Characteristics on Surface of Fuel Nozzle" Sensors 22, no. 15: 5661. https://doi.org/10.3390/s22155661