Vision based People Detection in Power Substations

Phi–Long H. Nguyen, V. Pham
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Abstract

In reality, it is desired to reliably detect unauthorized entries for prohibited areas such as teleoperated high voltage power substations. To this end, this paper presents a vision based people detection method in power substations. More than 42,000 images were collected from the COCO dataset, Youtube and a real 220kV power substation for training models. Deep learning models EfficientDet-D1 and YOLOv5-m were employed for transfer learning. Experimental results show that the EfficientDet-D1 and YOLOv5-m can recognize people in 220kV power substations with mAP of 63.2% and 88.6%, respectively.
基于视觉的变电站人员检测
在现实中,需要可靠地检测未经授权进入禁止区域,如远程操作高压变电站。为此,本文提出了一种基于视觉的变电站人员检测方法。从COCO数据集、Youtube和一个真实的220kV变电站收集了4.2万多张图像,用于训练模型。采用深度学习模型EfficientDet-D1和YOLOv5-m进行迁移学习。实验结果表明,EfficientDet-D1和YOLOv5-m在220kV变电站中识别人的mAP值分别为63.2%和88.6%。
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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