Insulator Defect Detection Based on Improved Faster R-CNN

Jinpeng Tang, Jiang Wang, Hailin Wang, Jiyi Wei, Yi Wei, Mingsheng Qin
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引用次数: 1

Abstract

In recent years, deep learning has been widely used to identify defects of insulators. This paper proposed an improved Faster R-CNN model based on deep learning to improve the accuracy of fault detection. This method is based on the original Faster R-CNN detection framework to make three improvements: First, ResNet50 is selected to replace VGGNet16 as the feature extraction network. Secondly, the feature pyramid network is used for feature fusion. Thirdly, RoIAlign is used to replace RoIPooling network to reduce the impact of quantization. The dataset in the experiment is 720 marked UAV aerial insulator images, which were divided into training set and test set according to the ratio of 8:2. The mAP of the improved network model reached 84.37%. Compared with the original framework, mAP increased by 7.52%. The results show that the improved network reduced the missed detection rate and false detection rate. On the basis of improving the recognition accuracy, it can better meet the needs of high accuracy in actual scenarios.
基于改进更快R-CNN的绝缘子缺陷检测
近年来,深度学习被广泛应用于绝缘子缺陷的识别。为了提高故障检测的准确率,本文提出了一种基于深度学习的改进Faster R-CNN模型。该方法在原有Faster R-CNN检测框架的基础上进行了三方面的改进:首先,选择ResNet50代替VGGNet16作为特征提取网络。其次,利用特征金字塔网络进行特征融合;再次,使用RoIAlign代替RoIPooling网络,减少量化的影响。实验数据集为720幅标记好的无人机空中绝缘子图像,按8:2的比例分为训练集和测试集。改进网络模型的mAP达到84.37%。与原框架相比,mAP增加了7.52%。结果表明,改进后的网络降低了漏检率和误检率。在提高识别精度的基础上,更能满足实际场景中对高精度的需求。
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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