基于改进YOLOv5的玻璃绝缘子故障识别方法

Rui Xue, Zhengwei Du, Jialu Duan
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引用次数: 0

摘要

目前,玻璃绝缘子故障识别方法存在特征提取困难、模型泛化能力差等问题,导致玻璃绝缘子故障识别准确率较低。本文在Yolov5网络的基础上,引入了一种轻量级的通用采样算子CARAFE,解决了特征提取困难的问题。同时,加入注意机制模块SENet,赋予不同信道不同权值,提高识别准确率。此外,本文还对网络结构进行了进一步的改进,使网络与上述改进相适应。实验结果表明,与未改进的网络相比,改进后的网络对玻璃绝缘子的故障识别率有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Glass Insulator Fault Identification Method Based on Improved YOLOv5
At present, the fault identification method of glass insulators has the problems of difficult feature extraction and poor generalization ability of the model, which leads to the low accuracy of fault identification of glass insulators. Based on the Yolov5 network, this paper introduces a lightweight general sampling operator CARAFE to solve the problem of difficult feature extraction. At the same time, the attention mechanism module SENet is added to give different channels different weights to improve recognition accuracy. In addition, this paper makes further improvements in the network structure to make the network fit the above improvements. The experimental results show that the fault recognition rate of glass insulators is significantly improved compared with the unimproved network.
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