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Intelligent monitoring system for danger sources of infrastructure construction site based on deep learning

机译:基于深度学习的基础设施施工现场危险监控系统

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To master the real-time security status of the infrastructure construction site, an intelligent monitoring system for the recognition of the danger sources at infrastructure construction site, which is based on the theory of depth learning, is proposed. The monitoring system mainly includes signal acquisition equipment, internal optical network, server control center and display terminal. The intelligent identification algorithm of the danger sources is the core of the entire system. The characteristics from the image signal are extracted by the sparse self-coding, which is used to train the neural network. Then, the convolution is proposed to reduce the dimensionality of the features. The experiments confirm that the identification algorithm based on deep learning illustrates high accuracy in hazard identification. In terms of feedback, the identification results will be transmitted to the display terminal, and the safety status of the entire infrastructure construction site can be fully controlled to ensure the safety of both the infrastructure site and the power system.
机译:为了掌握基础设施建造现场的实时安全状态,提出了一种智能监测系统,用于识别基于深度学习理论的基础设施建造场所的危险源。监控系统主要包括信号采集设备,内部光网络,服务器控制中心和显示终端。危险源的智能识别算法是整个系统的核心。来自图像信号的特性由稀疏自编码提取,其用于训练神经网络。然后,提出了卷积来减少特征的维度。实验证实,基于深度学习的识别算法在危险识别中说明了高精度。在反馈方面,识别结果将被传输到显示终端,并且可以完全控制整个基础设施施工现场的安全状态,以确保基础设施站点和电力系统的安全性。

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