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基于Mask R-CNN的复合绝缘子过热缺陷检测
引用本文:高熠,田联房,杜启亮.基于Mask R-CNN的复合绝缘子过热缺陷检测[J].中国电力,2021,54(1):135-141.
作者姓名:高熠  田联房  杜启亮
作者单位:华南理工大学 自动化科学与工程学院,广东 广州 510640
基金项目:中央高校基本科研业务费专项资金资助项目(2018KZ05);广东省自然资源厅海上风电专项资助项目(x2zd/B4200280)
摘    要:针对当前基于复合绝缘子红外图的过热缺陷检测技术中存在的工作量大、智能化程度低,以及传统的图像分割方法在复杂背景下分割不精确且泛化性能差的问题,提出了一种基于实例分割网络MaskR-CNN的复合绝缘子过热缺陷检测方法.首先,该方法为提高分割精度,借鉴CascadeR-CNN的思路对MaskR-CNN网络进行改进,并在模型...

关 键 词:图像检测  MaskR-CNN  Cascade  R-CNN  迁移学习  复合绝缘子  红外图  过热缺陷
收稿时间:2020-03-22
修稿时间:2020-04-09

Overheating Defect Detection of Composite Insulator Based on Mask R-CNN
GAO Yi,TIAN Lianfang,DU Qiliang.Overheating Defect Detection of Composite Insulator Based on Mask R-CNN[J].Electric Power,2021,54(1):135-141.
Authors:GAO Yi  TIAN Lianfang  DU Qiliang
Affiliation:School of Automation Science and Engineering, South China University of Technology, Guangzhou 510641, China
Abstract:Aiming at the problems of large workload and low intelligence of the current infrared image-based overheating defect detection techniques for composite insulators, and the poor accuracy and poor generalization performance of the traditional image segmentation methods in complex backgrounds, an overheating defect detection method is proposed for composite insulators based on instance segmentation network Mask R-CNN. Firstly, in order to improve the accuracy of segmentation, the Mask R-CNN network is improved according to the idea of Cascade R-CNN, and the data augmentation and transfer learning methods are used for model training to improve the network performance. Secondly, the result obtained by deep segmentation network is further optimized by using traditional image processing methods such as skeletonization, so that the final segmentation result only covers the core rod of the composite insulators. Finally, the temperature data in the infrared image is directly read and converted into the actual temperature value, and the grade of overheating defects is judged according to the relevant methods and criteria provided in DL / T664-2016 Infrared Diagnostic Application Specification for Live Equipment. The results show that the algorithm proposed in this paper has a high detection accuracy of 100% for the infrared images of composite insulators with serious and urgent defects, but has false detection occurrence for the infrared images without overheating defects or with general defects. On the whole, the accuracy rate of 93% is achieved in defect detection of test sets.
Keywords:image detection  Mask R-CNN  Cascade R-CNN  transfer learning  composite insulator  infrared image  overheating defect  
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