Anti-vibration hammer detection in UAV image

Anti-vibration hammer is a key component in the power power line to prevent vibration of power line for a long time, resulting in power line damage, broken and other hazards. Therefore, it is important to accurately locate the position of the anti-vibration hammer in an image for the subsequent judg...

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Published in2017 2nd International Conference on Power and Renewable Energy (ICPRE) pp. 204 - 207
Main Authors Heng, Yang, Tao, Guo, Ping, Shen, Fengxiang, Chen, Wei, Wang, Xiaowei, Liu
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.09.2017
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DOI10.1109/ICPRE.2017.8390528

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Abstract Anti-vibration hammer is a key component in the power power line to prevent vibration of power line for a long time, resulting in power line damage, broken and other hazards. Therefore, it is important to accurately locate the position of the anti-vibration hammer in an image for the subsequent judgment, repair or replacement work. However, the traditional anti-vibration hammer positioning and identification is time-consuming, costly and inefficient. An accurate and efficient method is proposed to detect anti-vibrations in aerial images. This method use deep learning to learn insulators by the convolution neural network, and identify and locate the anti-vibrations in aerial images. The proposed algorithm is tested on lots of aerial images and experimental results show the proposed algorithm detected anti-vibration successfully and efficiently. It is promising to significantly facilitate the visual inspection and automatic identification of anti-vibration in aerial images.
AbstractList Anti-vibration hammer is a key component in the power power line to prevent vibration of power line for a long time, resulting in power line damage, broken and other hazards. Therefore, it is important to accurately locate the position of the anti-vibration hammer in an image for the subsequent judgment, repair or replacement work. However, the traditional anti-vibration hammer positioning and identification is time-consuming, costly and inefficient. An accurate and efficient method is proposed to detect anti-vibrations in aerial images. This method use deep learning to learn insulators by the convolution neural network, and identify and locate the anti-vibrations in aerial images. The proposed algorithm is tested on lots of aerial images and experimental results show the proposed algorithm detected anti-vibration successfully and efficiently. It is promising to significantly facilitate the visual inspection and automatic identification of anti-vibration in aerial images.
Author Fengxiang, Chen
Ping, Shen
Wei, Wang
Heng, Yang
Tao, Guo
Xiaowei, Liu
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  organization: Transmission Operation and Maintenance Branch, Guizhou Power Grid Co., Ltd, Guiyang, China
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  surname: Xiaowei
  fullname: Xiaowei, Liu
  organization: School of Electrical Engineering, Wuhan University, Wuhan, China
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Snippet Anti-vibration hammer is a key component in the power power line to prevent vibration of power line for a long time, resulting in power line damage, broken and...
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StartPage 204
SubjectTerms anti-vibration hammer
Convolution
deep learning
defect detection
Feature extraction
Inspection
Machine learning
R-CNN
Training
unmanned aerial vehicle (UAV)
Unmanned aerial vehicles
Vibrations
Title Anti-vibration hammer detection in UAV image
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