基于深度学习的电力现场作业违规行为识别技术研究

Haiyang Liu, Hongliu Yang, Weihao Gao, Bo Zhang, Zichen Gao
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引用次数: 0

摘要

带电作业现场的安全管理和控制是电力安全生产的重要保障环节。随着带电作业需求的不断提高,其复杂性和难度也随之增加,现场安全管理由人工视频分析向智能控制方式的转变已势在必行。为此,提出了一种人体姿态识别技术,利用 YOLOv8 建立多人姿态识别模型。结合传统的图像识别技术,实现对人员状态的全面感知,从而对作业过程中的危险和非标准行为进行实时管理和预警。这种方法减轻了巡检人员的压力,提高了带电作业现场违章识别的智能化程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Deep Learning-Based Recognition Technology for Violations in Live Electricity Operations
Safety management and control in live electricity operation sites constitute a crucial assurance component for electrical safety production. As the demand for live electricity operations continues to rise, accompanied by increased complexity and difficulty, the shift from manual video analysis to intelligent control methods in on-site safety management has become imperative. In response to this, a human body posture recognition technology is proposed, utilizing YOLOv8 to establish a multi-person posture recognition model. This, combined with traditional image recognition techniques, achieves comprehensive perception of personnel states, enabling real-time management and early warning of hazards and non-standard behaviors during operations. This approach alleviates the pressure on inspection personnel and enhances the intelligence of violation recognition in live electricity operation sites.
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