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Insulator Defect Detection

In the Insulator Defect Detection task, the primary objective is to automatically detect defects in electrical insulators using computer vision and machine learning techniques. Insulators are critical components in power transmission systems, responsible for supporting and isolating high-voltage power lines to prevent leakage and short circuits. Over time, insulators may develop defects such as cracks, contamination, and breakage due to exposure to harsh environmental conditions like wind, rain, dirt, and high temperatures. If these defects are not detected and addressed promptly, they can lead to power system failures or even severe accidents. Therefore, automating the detection of insulator defects enhances the safety and reliability of power systems while reducing the workload and cost associated with manual inspections. This task typically involves analyzing image or video data to accurately identify and locate various types of defects on insulators.

Papers

Showing 15 of 5 papers

TitleStatusHype
Improved YOLOv7 model for insulator defect detection0
YOLO-ELA: Efficient Local Attention Modeling for High-Performance Real-Time Insulator Defect Detection0
A Lightweight Insulator Defect Detection Model Based on Drone ImagesCode1
IDD-YOLOv5: A Lightweight Insulator Defect Real-time Detection AlgorithmCode0
LiteYOLO-ID: A Lightweight Object Detection Network for Insulator Defect DetectionCode1
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