Quantifying Multi-Scale Performance of Geometric Features for Efficient Extraction of Insulators from Point Clouds
Abstract
:1. Introduction
- Applying multi-scale features to provide significant representations of shape and structure information, mitigating the impact of noise and similarity on extraction accuracy.
- Introducing the EWM to quantify the multi-scale performance of geometric features, producing robust results.
- Developing an automatic data-driven method to extract insulators from pylons with various shapes and sizes, where tension and suspension insulators can be distinguished as well.
2. Relate Works
2.1. Insulator Extraction
2.2. Multi-Scale Feature Fusion
3. Materials and Methods
3.1. Datasets
3.2. Methodology
3.2.1. Pylon Head Segmentation
3.2.2. Feature Construction
3.2.3. Quantification of Multi-Scale Feature
3.2.4. Optimize Extraction of Enlarged Perspective
4. Results and Analysis
4.1. Parameters Analysis
4.2. Pylon Head Segmentation
4.3. Insulator Extraction
5. Discussion
5.1. Influences Come from Possible Conditions
5.2. Advantages of Multi-Scale Neighborhood
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Pylon | Length (m) | Width (m) | Height (m) | Number of SIs | Number of TIs |
---|---|---|---|---|---|
a | 13.32 | 10.66 | 29.77 | 2 | 6 |
b | 14.48 | 10.10 | 44.59 | 3 | 12 |
c | 8.7 | 4.5 | 45.10 | 6 | 12 |
d | 23.43 | 14.48 | 53.87 | 6 | 6 |
e | 14.15 | 9.58 | 34.20 | 3 | 6 |
f | 13.41 | 5.09 | 24.41 | 2 | 6 |
g | 12.49 | 12.46 | 44.97 | 6 | / |
h | 9.56 | 6.30 | 37.25 | 3 | / |
i | 16.06 | 7.64 | 40.65 | 3 | / |
j | 1.28 | 13.85 | 23.24 | 3 | / |
Category | Feature | Equation | TIs | SIs |
---|---|---|---|---|
Eigenvalue features | Minimum eigenvalue (ME) | ✓ | ||
Planarity (PL) | ✓ | |||
Linearity (LI) | ✓ | |||
Surface variation (SV) | ✓ | |||
PCA1 | ✓ | |||
PCA2 | ✓ | ✓ | ||
Verticality (VE) | ✓ | |||
Density features | Point density (PD) | ✓ | ||
Projection features | Width (WI) | ✓ | ||
Length–width Sum (LS) | ✓ |
Pylon | Accuracy of SIs | Accuracy of TIs | Pylon | Accuracy of SIs | Accuracy of TIs | |
---|---|---|---|---|---|---|
Recall (%) | 79.48 | 86.99 | 98.68 | 94.41 | ||
Precision (%) | 98.39 | 96.56 | 60.01 | 97.30 | ||
F1-score (%) | 87.93 | 91.52 | 74.63 | 95.83 | ||
Recall (%) | 79.47 | 86.98 | 96.03 | / | ||
Precision (%) | 98.39 | 94.61 | 96.53 | / | ||
F1-score (%) | 87.93 | 90.63 | 96.27 | / | ||
Recall (%) | 65.96 | 93.21 | 93.30 | / | ||
Precision (%) | 100.00 | 98.52 | 97.92 | / | ||
F1-score (%) | 79.49 | 95.79 | 95.55 | / | ||
Recall (%) | 86.60 | 92.04 | 92.25 | / | ||
Precision (%) | 99.31 | 99.82 | 100.00 | / | ||
F1-score (%) | 92.52 | 95.78 | 95.97 | / | ||
Recall (%) | 84.23 | 86.24 | 94.99 | / | ||
Precision (%) | 100.00 | 99.23 | 89.30 | / | ||
F1-score (%) | 91.45 | 92.28 | 92.05 | / |
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Tang, J.; Tan, J.; Du, Y.; Zhao, H.; Li, S.; Yang, R.; Zhang, T.; Li, Q. Quantifying Multi-Scale Performance of Geometric Features for Efficient Extraction of Insulators from Point Clouds. Remote Sens. 2023, 15, 3339. https://doi.org/10.3390/rs15133339
Tang J, Tan J, Du Y, Zhao H, Li S, Yang R, Zhang T, Li Q. Quantifying Multi-Scale Performance of Geometric Features for Efficient Extraction of Insulators from Point Clouds. Remote Sensing. 2023; 15(13):3339. https://doi.org/10.3390/rs15133339
Chicago/Turabian StyleTang, Jie, Junxiang Tan, Yongyong Du, Haojie Zhao, Shaoda Li, Ronghao Yang, Tao Zhang, and Qitao Li. 2023. "Quantifying Multi-Scale Performance of Geometric Features for Efficient Extraction of Insulators from Point Clouds" Remote Sensing 15, no. 13: 3339. https://doi.org/10.3390/rs15133339
APA StyleTang, J., Tan, J., Du, Y., Zhao, H., Li, S., Yang, R., Zhang, T., & Li, Q. (2023). Quantifying Multi-Scale Performance of Geometric Features for Efficient Extraction of Insulators from Point Clouds. Remote Sensing, 15(13), 3339. https://doi.org/10.3390/rs15133339