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A Multi-Target Detection Based Framework for Defect Analysis of Electrical Equipment

机译:基于多目标检测的电气设备缺陷分析框架

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Recognizing and analyzing the effects of power equipment is an important way to ensure the reliable operation and safety of power systems. Manually inspecting the status of power equipment in the power Internet of Things (IoTs) is labor intensive when massive image data is needed to be inspected and analyzed. In this paper, a multi-target detection framework is proposed, which can be used as an edge service for defect analysis of power equipment over the power IoTs. The framework adopts a lightweight multi-layer convolutional neural network for multi-target detection based on YOLO, which is to learn the multi-target features in training data set for classifying and detecting image objects. The related experiments results show that the proposed framework for defect analysis of electrical equipment has excellent precision, and improves the performance of defect analysis application.
机译:识别和分析电力设备的影响是确保电力系统可靠运行和安全性的重要途径。 手动检查电源设备中的电源设备状态(IOTS)是在需要检查和分析大量图像数据时的劳动密集型。 在本文中,提出了一种多目标检测框架,其可以用作功率IOT上电力设备缺陷分析的边缘服务。 该框架采用基于YOLO的多目标检测的轻量级多层卷积神经网络,这是在培训数据集中学习用于分类和检测图像对象的多目标特征。 相关实验结果表明,电气设备的缺陷分析框架具有优异的精度,提高了缺陷分析应用的性能。

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