期刊文献+

基于图像识别技术的输电线路智能监控系统应用 被引量:33

Application of Intelligent Monitoring System for Transmission Lines Based on Image Recognition Technology
下载PDF
导出
摘要 针对持续多发的输电线路外力破坏事件,人工巡视以及传统监控设备并不能及时有效发现事故隐患,因此提出基于图像识别技术的输电线路智能监控系统.该系统应用卷积神经网络的深度学习算法训练模型,可以智能识别出输电线路现场的安全隐患.建立起前端采集图像,数据无线传输,后台识别分析,隐患定向推送的智能监控新模式.在佛山地区应用实践中,该系统实现了对输电线路现场的24小时实时监控预警,提高了对外力破坏隐患的监管能力,有效预防了大型施工机械所致的线路跳闸事故. In view of the frequent external force damage incidents of transmission lines, manual inspection and traditional monitoring equipment cannot find the hidden dangers in time and effectively. Therefore, an intelligent monitoring system for transmission lines based on image recognition technology is proposed. The system uses convolution neural network depth learning algorithm to train the model, which can intelligently identify the potential safety hazards of transmission lines. A new intelligent monitoring mode is established, which includes front-end image acquisition, wireless data transmission, background recognition and analysis, and hidden danger directional push. In Foshan area, the system realizes 24-hour real-time monitoring and early warning of transmission lines, improves the monitoring ability of hidden dangers caused by external forces, and effectively prevents line tripping accidents caused by large-scale construction machinery.
作者 徐振磊 曾懿辉 郭圣 邵校嘉 麦俊佳 胡壮丽 XU Zhen-Lei;ZENG Yi-Hui;GUO Sheng;SHAO Xiao-Jia;MAI Jun-Jia;HU Zhuang-Li(Foshan Power Supply Bureau,Guangdong Power Grid Co.Ltd.,Foshan 528000,China)
出处 《计算机系统应用》 2020年第1期67-72,共6页 Computer Systems & Applications
关键词 输电线路 图像识别 卷积神经网络 智能监控 transmission line image recognition convolution neural network intelligent monitoring
  • 相关文献

参考文献5

二级参考文献89

  • 1黄新波,孙钦东,王小敬,武键,刘家兵.输电线路危险点远程图像监控系统[J].高电压技术,2007,33(8):192-197. 被引量:58
  • 2Lowe D G. Distinctive image features from scale-invariant keypoints[J]. International Journal of Computer Vision, 2004, 60 (2) 91 110.
  • 3Dalai N, Triggs B. Histograms of oriented gradients for human detection[C]//Computer Vision and Pattern Recognition (CVPR), IEEE Computer Society Conference on. San Diego, USA: IEEE, 2005, 1 886-893.
  • 4Hinton G E, Salakhutdinov R R. Reducing the dimensionality of data with neural networks[J]. Science, 2006, 313(5786) : 504-507.
  • 5Hubel D H, Wiesel T N. Receptive fields, binocular interaction and functional architecture in the catrs visual cortex[J]. The Journal of Physiology, 1962, 160(1): 106-154.
  • 6Fukushima K, Miyake S. Neocognitron: A new algorithm for pattern recognition tolerant of deformations and shifts in posi- tion[J]. Pattern Recognition, 1982, 15(6): 455-469.
  • 7Ruck D W, Rogers S K, Kabrisky M. Feature selection using a multilayer perceptron[J]. Journal of Neural Network Com- puting, 1990, 2(2): 40-48.
  • 8Rumelhart D E, Hinton G E, Williams R J. Learning representations by back-propagating errors[J]. Nature, 1986,3231 533 538.
  • 9LeCun Y, Denker J S, Henderson D, et al. Handwritten digit recognition with a back-propagation network[C]//Advances in Neural Information Processing Systems. Colorado, USA Is. n. ], 1990: 396-404.
  • 10LeCun Y, Cortes C. MNIST handwritten digit database[EB/OL], http//yann, lecun, com/exdb/mnist, 2010.

共引文献661

同被引文献260

引证文献33

二级引证文献127

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部