通过神经网络和深度学习的电力安全监测动作识别算法研究

Xingtao Bai, Ningguo Wang, Yongliang Li, Hai-Jun Luo, Bo Gao
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摘要

本文通过深入研究神经网络算法在电力安全监管视频中的应用,研究了提高电力员工动作准确性和效率的方法。首先,本文总结了电力安全监控系统及相关动作识别算法的研究现状。对于电力行业来说,及时准确地识别工人的动作对于事故预防和管理至关重要。在此背景下,各种动作识别算法层出不穷,其中神经网络算法因其在图像处理和模式识别方面的优异性能而备受关注。通过深度学习,神经网络可以从大量视频数据中自动学习关键特征,为人类动作识别提供更可靠的手段。其次,本文详细介绍了所提出的基于神经网络算法的电力安全监控视频人员动作识别方法。通过优化神经网络结构和精心选择训练数据,我们构建了一个高效、准确的动作识别模型。该模型可以通过监控电力运行视频,快速准确地识别不同人员在工作中的动作,包括常见的操作动作和紧急情况下的特殊动作。我们的方法可以更全面地了解电力环境中人员的各种动作。通过对大量实验结果的分析,我们验证了所提算法的有效性和鲁棒性。与传统方法相比,基于神经网络的动作识别算法在准确率和响应速度上都有显著提高。这证明了该方法在电力安全监管领域的实际应用前景。
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Research on Power Safety Monitoring Action Recognition Algorithm Through Neural Network and Deep Learning
This paper studied the methods for improving the accuracy and efficiency of the action of power employees by deeply studying the application of neural network algorithm in power safety supervision video. Firstly, this paper summarizes the research status of power safety monitoring system and related action recognition algorithms. For the power industry, timely and accurate identification of workers' movements is essential for accident prevention and management. In this context, various motion recognition algorithms are emerging, among which neural network algorithm has attracted much attention due to its excellent performance in image processing and pattern recognition. Through deep learning, neural networks can automatically learn key features from a large number of video data, providing a more reliable means for human action recognition. Secondly, this paper introduces in detail the proposed method of power safety monitoring video personnel action recognition based on neural network algorithm. Through the optimization of neural network structure and the careful selection of training data, we construct an efficient and accurate action recognition model. The model can quickly and accurately identify the actions of different personnel at work by monitoring the video of electric power operation, including common operation actions and special actions in emergency situations. Our method can more comprehensively understand the various actions of personnel in the electric power environment. Through the analysis of a large number of experimental results, we verify the effectiveness and robustness of the proposed algorithm. Compared with traditional methods, the motion recognition algorithm based on neural network has achieved significant improvement in accuracy and response speed. This proves the practical application prospect of this method in the field of power safety supervision.
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