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基于改进ST-GCN的10 kV带电作业人员视频异常行为识别方法

吴田 万亚旭 王申华 肖宾 方春华 黎鹏

南方电网技术2024,Vol.18Issue(10):31-39,72,10.
南方电网技术2024,Vol.18Issue(10):31-39,72,10.DOI:10.13648/j.cnki.issn1674-0629.2024.10.004

基于改进ST-GCN的10 kV带电作业人员视频异常行为识别方法

Video Abnormal Behavior Recognition Method for 10 kV Live Workers Based on Improved ST-GCN

吴田 1万亚旭 1王申华 2肖宾 3方春华 1黎鹏1

作者信息

  • 1. 湖北省输电线路工程技术研究中心(三峡大学),湖北 宜昌 443002||三峡大学电气与新能源学院,湖北 宜昌 443002
  • 2. 国网武义县供电公司,浙江 金华 321200
  • 3. 中国电力科学研究院有限公司,武汉 430074
  • 折叠

摘要

Abstract

In order to ensure the safety of personnel and equipment during normal live working of distribution network,abnormal behavior recognition is an indispensable technical means.However,the existing live working behavior recognition methods have problems such as low accuracy,few identifiable types,and missed detection and false detection caused by background interference.An abnormal behavior recognition method is proposed for 10 kV live working video based on improved spatial temporal graph convolutional networks(ST-GCN).Firstly,the method of target detection and tracking is used to add a mask in the video human region to eliminate the influence of complex background.Then,the human skeleton is obtained by using the lightweight improved pose estimation model,and the spatio-temporal graph is constructed with multi-frame skeleton sequence.Finally,the spatial posture and timing information of the spatio-temporal map are extracted by ST-GCN,and the squeeze-and-excitation networks(SENet)module is introduced to strengthen the action features to complete the live working behavior recognition.The behavior dataset is constructed with some live working videos,and five typical behaviors such as insulation detection are selected for verification.The experimental results show that this method improves the speed of human pose estimation,constrains the skeleton detection area,and reduces the false detection rate and missed detection rate of limbs.It can effectively identify the live working behavior and reach 88%average accuracy rate.It has good generalization in complex environment and provides an effective reference for the intelligent safety monitoring of live working.

关键词

行为识别/带电作业/时空图卷积网络/人体姿态估计/安全监护

Key words

behavior recognition/live working/ST-GCN/human pose estimation/safety monitoring

分类

动力与电气工程

引用本文复制引用

吴田,万亚旭,王申华,肖宾,方春华,黎鹏..基于改进ST-GCN的10 kV带电作业人员视频异常行为识别方法[J].南方电网技术,2024,18(10):31-39,72,10.

基金项目

国家自然科学基金资助项目(51807110). Supported by the National Natural Science Foundation of China(51807110). (51807110)

南方电网技术

OA北大核心CSTPCD

1674-0629

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