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自适应特征引流管故障智能识别方法
引用本文:黄博,江慎旺,张增,张静,张巍,许廷发.自适应特征引流管故障智能识别方法[J].中国光学,2017,10(3):340-347.
作者姓名:黄博  江慎旺  张增  张静  张巍  许廷发
作者单位:1. 北京理工大学 光电学院 光电成像系统与技术教育部重点实验室, 北京 100081; 2. 天津航天中为数据系统科技有限公司, 天津 300301; 3. 南方电网科学研究院有限责任公司, 广州 510080
基金项目:南方电网直升机重大专项资助项目(No.K-KY2014-500)
摘    要:为了实现对高压输电线存在的故障隐患进行自动检测,本文提出了一种自适应特征引流管故障隐患智能识别算法。首先,分析了故障引流子的红外热图像特征,把故障分为两类:明显发热和微弱发热;其次,针对引流管所引起的明显发热,采用改进的Otsu阈值分割法对红外图像进行分割,运用改进的Sobel算子提取轮廓;第三,用种子填充算法分离连通域,通过Thread特征判断是否为故障引流管;最后,进入引流管所引起的微弱小区域发热识别,运用高压输电线平行特征寻找主干线区域,在主干线区域检测Harris角点,通过STWN特征判断是否为故障引流子。实验结果表明,发热隐患的识别率为94.6%,漏检率为2.2%,误识别率为5.5%。

关 键 词:红外热图像  边界拓展  形态特征  智能识别
收稿时间:2017-01-19

Intelligent identification algorithm of adaptive feature drainage tube fault
HUANG Bo,JIANG Shen-wang,ZHANG Zeng,ZHANG Jin,ZHANG Wei,XU Ting-fa.Intelligent identification algorithm of adaptive feature drainage tube fault[J].Chinese Optics,2017,10(3):340-347.
Authors:HUANG Bo  JIANG Shen-wang  ZHANG Zeng  ZHANG Jin  ZHANG Wei  XU Ting-fa
Institution:1. Key Laboratory of Optoelectronic Imaging System and Technology, Ministry of Education, School of Optoelectronics, Beijing Institute of Technology, Beijing 100081, China; 2. Tianjin Aerospace Science and Technology Co., Ltd. for the Data System, Tianjin 300301, China; 3. Southern Power Grid Science Research Institute Co., Ltd, Guangzhou 510080, China
Abstract:In this paper, an intelligent recognition algorithm for hidden danger of drainage tube is presented in order to realize the automatic detection of the faults of the high voltage transmission line. First, the thermal image feature of faults is analyzed, and the faults can be divided into two types:obvious heating and weak heating. Second in view of the obvious heating caused by the drainage tube, the improved Ostu threshold segmentation method is used to implement infrared image segmentation and the improved Sobel operator is used to implment contour extraction. Third, the seed filling algorithm separation is used to connect domains, and we can determine whether the drainage tube is fault through the thread characteristics. Finally, we check the weak heating caused by the drainage tube, applying high pressure transmission line parallel features to find the region of trunk line, and then get the Harris corner around the trunk region and determine whether it is fault drainage through the STWN characteristics. Experimental results show that the successful identification rate of hidden heat fault is 94.6%, false negative rate is 2.2%, and false recognition rate is 5.5%.
Keywords:infrared thermal image  boundary development  morphological feature  intelligent recognition
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