Infrared image recognition method of porcelain discsuspended insulators based on deep learning technology
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TM85

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    Abstract:

    By extracting the iron cap and disc surface temperature information of the disc suspended porcelain insulator string in the singleframe infrared image, the relative temperature difference is considered as a criterion to diagnose the deterioration state, which is an efficient and accurate method for online automatic monitoring of the insulator string state. In order to accurately extract the temperature information, this paper proposes an algorithm that combines the characteristics of the insulator image and deep learning to accurately identify the iron cap and disc surface area of the porcelain insulator string in the infrared image. The algorithm uses a large number of different parts of insulator images as sample data sets, and is trained by selfconstructed CNN to form three classifiers. Then it uses the classifiers to identify in the corrected insulator string region image and finally utilizes different colors to mark in the original infrared image. It is shown that this algorithm can obtain excellent recognition results of cap and disc area for insulator strings of different voltage levels and different disc types.

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高嵩,陆倚鹏,王笑倩,毕晓甜,王勋,刘艳,尹骏刚.基于深度学习的悬式瓷绝缘子红外图像识别方法[J].电力科学与技术学报英文版,2020,35(5):119-125. GAO Song, LU Yipeng, WANG Xiaoqian, BI Xiaotian, WANG Xun, LIU Yan, YIN Jungang. Infrared image recognition method of porcelain discsuspended insulators based on deep learning technology[J]. Journal of Electric Power Science and Technology,2020,35(5):119-125.

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  • Received:
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  • Online: April 16,2021
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