基于HOG特征的隔离开关红外图像故障识别方法

Infrared Image Fault Recognition Method for Disconnector Based on HOG Features

  • 摘要: 为了实现对于隔离开关红外图像的故障识别,本文利用改进SLIC算法,在颜色空间转换的基础上,对隔离开关的故障区域进行分割和标记,并有效提高图像分割精度。在HOG特征提取的基础上利用支持向量机算法,对隔离开关的红外图像进行设备和分类,区分其是否工作在正常状态,对于正常状态下的隔离开关,利用相对温差法,实现其故障状态的判断,相对温差越大,则故障越严重。通过实验证明,在优化的HOG特征参数情况下,可以实现图像设备的准确率最高,利用红外图像的故障诊断,可以对隔离开关的故障缺陷程度加以判断,并提供检修建议,本文模型具有很好的准确性和可靠性。

     

    Abstract: To realize the fault recognition of an infrared image of a disconnector, this study uses an improved SLIC algorithm to segment and mark the fault area of the disconnector based on color space conversion. As a result, image segmentation accuracy was significantly improved. Based on HOG feature extraction, the support vector machine algorithm is used to classify an infrared image of a disconnector and determine whether it works in the normal state. For the disconnector in the normal state, the relative temperature difference method is used to determine its fault state. The greater the relative temperature difference, the more serious the fault. The experiments demonstrate that optimal HOG characteristic parameters yield the maximum accuracy of the imaging equipment. The fault diagnosis of an infrared image can be used to determine the fault and defect degree of the disconnector and provide maintenance. The model used in this study exhibits good accuracy and reliability.

     

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