A Refined Identification Method for the Hidden Dangers of External Damage in Transmission Lines Based on the Generation of a Vanishing Point-Driven Effective Region
Abstract
:1. Introduction
- (1)
- We proposed an effective early warning region generation method based on the vanishing point driving method, which achieved precise and reliable identification of hidden dangers of external damage in transmission lines.
- (2)
- A scene element perception model for transmission corridors based on slicing-aided hyperinference was proposed to achieve the comprehensive and accurate detection of external damage targets around the scene.
- (3)
- An image vanishing point calculation method based on Canny edge detection and Hough line detection was proposed, which improved the accuracy and robustness of vanishing point calculation.
2. Methodology
2.1. Complexity Analysis of External Damage Scenarios of Transmission Lines
2.2. A Scene Perception Model Based on Slicing Aided Hyper Inference
- (1)
- YOLOv8 model principle
- (2)
- Slicing-aided hyperinference
2.3. An Effective Early Warning Region Generation Method Based on Vanishing Point Driving Technique
- (1)
- Image vanishing point detection algorithm
- (2)
- Effective warning region generation method
3. Results and Discussion
3.1. Data Description and Experimental Environment
3.2. Comprehensive and Accurate Perception of External Damage Targets in Transmission Lines
- (1)
- Ablation experiment
- (2)
- Analysis of YOLOv8x with SAHI model detection performance
3.3. Refined and Reliable Identification of External Damage Accidents in Transmission Lines
- (1)
- Image vanishing point detection
- (2)
- Generation of effective early warning regions driven by the vanishing point
- (3)
- Identification of hidden dangers of external damage to transmission lines
3.4. Discussion
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Configuration Name | Specific Information |
---|---|
Server type | DELL Precision T5820 GPU server |
CPU | i9-10980XE, 18 cores, 3.0 GHz |
GPU | 2*RTX3090, 24 GB |
RAM | 128 GB |
Hard disk | 10 T, solid state drive |
Target Type | mAP (%) | |
---|---|---|
YOLOv7 | Detection Methods in This Paper | |
Crane | 65.5 | 81.5 |
Tower crane | 72.4 | 83.4 |
Cement pump truck | 66.7 | 79.9 |
Bulldozer | 81.5 | 88.2 |
Soil compactor | 65.5 | 78.6 |
Excavator | 82.5 | 86.6 |
Dumper | 75.1 | 83.0 |
Transmission tower | 81.2 | 88.9 |
Smoke | 73.3 | 76.3 |
Total | 73.7 | 82.9 |
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Ma, F.; Liu, H.; Wang, J.; Jia, R.; Wang, B.; Ma, H. A Refined Identification Method for the Hidden Dangers of External Damage in Transmission Lines Based on the Generation of a Vanishing Point-Driven Effective Region. Processes 2024, 12, 1904. https://doi.org/10.3390/pr12091904
Ma F, Liu H, Wang J, Jia R, Wang B, Ma H. A Refined Identification Method for the Hidden Dangers of External Damage in Transmission Lines Based on the Generation of a Vanishing Point-Driven Effective Region. Processes. 2024; 12(9):1904. https://doi.org/10.3390/pr12091904
Chicago/Turabian StyleMa, Fuqi, Heng Liu, Jiaxun Wang, Rong Jia, Bo Wang, and Hengrui Ma. 2024. "A Refined Identification Method for the Hidden Dangers of External Damage in Transmission Lines Based on the Generation of a Vanishing Point-Driven Effective Region" Processes 12, no. 9: 1904. https://doi.org/10.3390/pr12091904
APA StyleMa, F., Liu, H., Wang, J., Jia, R., Wang, B., & Ma, H. (2024). A Refined Identification Method for the Hidden Dangers of External Damage in Transmission Lines Based on the Generation of a Vanishing Point-Driven Effective Region. Processes, 12(9), 1904. https://doi.org/10.3390/pr12091904