基于图像处理的变电站工作人员工作服检测

Jie Li, Tianzheng Wang, Yongxiang Li, Yun Tian, Shuai Wang, Muliu Zhang, Yongjie Zhai, Shiying Sun, Xiaoguang Zhao
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引用次数: 2

摘要

变电站是电力系统的基础和重要组成部分,其维护对电网的稳定运行起着举足轻重的作用。现场工作人员作为变电站的维护人员,长期在强电磁场环境中工作。因此,严格穿着工作服是必要的。为了加强工作服穿着情况的监管,最好对现场工作人员进行实时监管。提出了一种基于视频的工作服穿着情况检测方法。首先,利用HOG(Histogram of Oriented Gradient)方法和本文提出的色彩空间分布紧密度提取特征;其次,训练支持向量机分类器,实现变电站维修人员检测;最后,在HSV(Hue, Saturation, Value)色彩空间中对电工作服进行建模,并结合性能特征得到最终结果。实验结果表明,该方法在变电站监控视频中具有较高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Working clothes detection of substation workers based on the image processing
On account of the substation is a basis and important element of the power system, its maintenance plays a pivotal role in the stable operation of power grid. As the maintainer of the substation, the on-site staffs work long-term in strong electromagnetic field environment. Therefore, it is necessary to wear the working clothes strictly. In order to strengthen the working clothes wearing circumstance supervision, its better to carry out the real-time supervision on the on-site staffs. In this paper, a video-based working clothes wearing circumstance detection method was put forward. Firstly, we extract characteristics by HOG(Histogram of Oriented Gradient) method and the color spatial distribution compactness presented in this paper. Secondly, the SVM(Support Vector Machine) classifier is trained to realize the substation maintainer detection. Finally, we model the electricity working clothes in the HSV(Hue, Saturation, Value) color space and combine the performance characteristics to get the final results. The experimental results demonstrate that this method has a high accuracy in the substation surveillance video.
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