Computer Science ›› 2024, Vol. 51 ›› Issue (6A): 230700172-5.doi: 10.11896/jsjkx.230700172

• Image Processing & Multimedia Technolog • Previous Articles     Next Articles

Study on Intelligent Defect Recognition Algorithm of Aerial Insulator Image

DAI Yongdong1,2, JIN Yang1, DAI Yufan1, FU Jing3, WANG Maofei2, LIU Xi2   

  1. 1 School of Electrical and Automation Engineering,Nanjing Normal University,Nanjing 210023,China
    2 State Grid Jiangsu Electric Power Co.,Ltd.Taizhou Power Supply Branch,Taizhou,Jiangsu 225300,China
    3 Wuhan Branch of China Electric Power Research Institute Co.,Ltd.Wuhan 430070,China
  • Published:2024-06-06
  • About author:DAI Yongdong,born in 1969,master,senior engineer.His main research interests include intelligent power operation inspection technology,energy Internet technology,etc.
  • Supported by:
    National Natural Science Foundation of China(61601071)and State Grid Science and Technology Program(5500-202018082A-0-0-00).

Abstract: Since power line insulator defects can easily lead to transmission system failures,it is critical to study defect detection algorithms.Traditional detection methods can only accurately locate insulators and detect faults with sufficient prerequisite knowledge,low interference,or under specific conditions.For automatically locating insulators and detecting insulator defects in UAV aerial images,we propose a novel deep Convolutional Neural Network(CNN) architecture that not only locates insulators but also detects insulator defects.The architecture is divided into two modules,the first module for insulator localization is responsible for detecting all insulators in the image,and the second module for insulator defect detection is responsible for detecting all insulator defects in the image,using a CNN with a Region Proposal Network(RPN) to convert insulator defect detection into a two-level object detection problem.Finally,we perform experiments using real datasets with defect detection accuracy and recall rates of 91.2% and 95.6%,respectively,satisfying the robustness and accuracy requirements.

Key words: Aerial image, Convolutional neural network(CNN), Defect detection, Insulator

CLC Number: 

  • TM216
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