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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >Detection of Power Line Insulator Defects Using Aerial Images Analyzed With Convolutional Neural Networks
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Detection of Power Line Insulator Defects Using Aerial Images Analyzed With Convolutional Neural Networks

机译:利用卷积神经网络分析的空中图像检测电力线绝缘体缺陷

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As the failure of power line insulators leads to the failure of power transmission systems, an insulator inspection system based on an aerial platform is widely used. Insulator defect detection is performed against complex backgrounds in aerial images, presenting an interesting but challenging problem. Traditional methods, based on handcrafted features or shallow-learning techniques, can only localize insulators and detect faults under specific detection conditions, such as when sufficient prior knowledge is available, with low background interference, at certain object scales, or under specific illumination conditions. This paper discusses the automatic detection of insulator defects using aerial images, accurately localizing insulator defects appearing in input images captured from real inspection environments. We propose a novel deep convolutional neural network (CNN) cascading architecture for performing localization and detecting defects in insulators. The cascading network uses a CNN based on a region proposal network to transform defect inspection into a two-level object detection problem. To address the scarcity of defect images in a real inspection environment, a data augmentation method is also proposed that includes four operations: 1) affine transformation; 2) insulator segmentation and background fusion; 3) Gaussian blur; and 4) brightness transformation. Defect detection precision and recall of the proposed method are 0.91 and 0.96 using a standard insulator dataset, and insulator defects under various conditions can be successfully detected. Experimental results demonstrate that this method meets the robustness and accuracy requirements for insulator defect detection.
机译:由于电源线绝缘体的故障导致电力传输系统的故障,基于空中平台的绝缘子检测系统被广泛使用。绝缘体缺陷检测是针对航空图像中的复杂背景进行的,呈现有趣但具有挑战性的问题。基于手工特征或浅学习技术的传统方法只能本地化绝缘子,并在特定的检测条件下检测故障,例如当有足够的现有知识时,在某些物体尺度或在特定的照明条件下具有低背景干扰。本文讨论了使用空中图像自动检测绝缘体缺陷,精确定位在真实检查环境中捕获的输入图像中出现的绝缘体缺陷。我们提出了一种新的深度卷积神经网络(CNN)级联架构,用于在绝缘体中执行本地化和检测缺陷。级联网络基于区域提案网络使用CNN,将缺陷检查转换为两个级别对象检测问题。为了解决真实检查环境中的缺陷图像的稀缺性,还提出了一种包括四个操作的数据增强方法:1)仿射变换; 2)绝缘体分割和背景融合; 3)高斯模糊; 4)亮度变换。使用标准绝缘子数据集,所提出的方法的缺陷检测精度和召回是0.91和0.96,并且可以成功检测各种条件下的绝缘体缺陷。实验结果表明,该方法符合绝缘体缺陷检测的鲁棒性和准确性要求。

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