Autonomous Diagnosis of Overheating Defects in Cable Accessories Based on Faster RCNN and Mean-Shift Algorithm

Xiaobing Xu, Chengke Zhou, Wenjun Zhou, Yanqun Liao, Yilong Wei, Jing Yuan
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引用次数: 2

Abstract

Infrared thermography has been widely used in timely detection of overheating defects in cable accessories. However, the traditional manual diagnosis method is time-consuming and laborious, and it relies too much on expert experience. An autonomous diagnosis method, which is based on the Faster RCNN network and the Mean-Shift algorithm, is proposed in this paper. Firstly, the Faster RCNN network is trained to implement the autonomous identification and positioning of the objects to be diagnosed in images (cable terminations and grounding boxes are included in this paper). Then, the Mean-Shift algorithm is used for image segmentation to rapidly and accurately extract the area of overheating. This is achieved via comparing key regions of the three phase accessories. Next the temperature related characteristic parameters of the overheating region are calculated, and the diagnosis results are obtained in accordance with the relevant cable condition assessment criteria. The proposed method has been applied to test against actual infrared images, and results show that the cable accessories and their overheating regions can be located at different shooting angles and under various background conditions. The research helps reduce the dependence on human efforts and expertise and contributes to improving the practice of condition monitoring.
基于更快RCNN和Mean-Shift算法的电缆附件过热缺陷自动诊断
红外热像仪在电缆附件过热缺陷的及时检测中得到了广泛的应用。然而,传统的人工诊断方法耗时费力,且过于依赖专家经验。提出了一种基于Faster RCNN网络和Mean-Shift算法的自动诊断方法。首先,对Faster RCNN网络进行训练,实现图像中待诊断目标的自主识别和定位(本文包括电缆终端和接地盒)。然后,采用Mean-Shift算法进行图像分割,快速准确地提取过热区域;这是通过比较三相附件的关键区域来实现的。然后计算过热区域的温度相关特征参数,并根据相关电缆状态评估准则得到诊断结果。将该方法应用于实际红外图像的测试,结果表明,在不同的拍摄角度和不同的背景条件下,可以定位电缆附件及其过热区域。该研究有助于减少对人力和专业知识的依赖,并有助于改善状态监测的实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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