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Computer Vision-based Detection and State Recognition for Disconnecting Switch in Substation Automation
Jul 24, 2017Author:
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Title: Computer Vision-based Detection and State Recognition for Disconnecting Switch in Substation Automation  

Authors: Chen, HK; Zhao, XG; Tan, M; Sun, SY  

Author Full Names: Chen, Hongkai; Zhao, Xiaoguang; Tan, Min; Sun, Shiying  

Source: INTERNATIONAL JOURNAL OF ROBOTICS & AUTOMATION, 32 (1):1-12; 10.2316/Journal.206.2017.1.206-4624 2017 

Language: English  

Abstract: State recognition in disconnecting switches is important during substation automation. Here, an effective computer vision-based automatic detection and state recognition method for disconnecting switches is proposed. Taking advantage of some important prior knowledge about a disconnecting switch, the method is designed using two important features of the fixed-contact facet of such disconnecting switches. First, the Histograms of Oriented Gradients (HOG) of the fixed-contact are used to design a Linear Discriminant Analysis (LDA) target detector to position the disconnecting switches and distinguish their loci against a usual cluttered background. Then a discriminative Norm Gradient Field (NGF) feature is used to train the Support Vector Machine (SVM) state classifier to discriminate disconnecting switch states. Finally, experimental results, compared with other methods, demonstrate that the proposed method is effective and achieves a low miss rate while delivering high performance in both precision and recall rate. In addition, the adopted approach is efficient and has the potential to work in practical substation automation scenarios. 

ISSN: 0826-8185  

eISSN: 1925-7090  

IDS Number: EP1TM  

Unique ID: WOS:000397167200001

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