基于语义分割的建筑危险工作区域安全自动监测方法

Wen-der Yu, Hsien-Chou Liao, Wen-Ta Hsiao, Hsien-Kuan Chang, Chi-Kong Tsai, Chen-Chung Lin
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引用次数: 3

摘要

本文应用基于语义分割的深度学习(DL)技术,实现对建筑危险作业区域的实时安全监控,及时发现不安全情况,降低安全风险。两种不同的基于卷积神经网络(CNN)的深度学习(DL)技术被用于工人识别和目标工作分区,包括Faster R-CNN、DeepLab v3+。以某建筑电梯井附近的危险工作区为例进行了实例分析。安全围栏的打开以及附近的工人被确定为需要检测的目标危险场景。从实验室和现场测试的结果来看,在实验室训练过程中获得的召回率(Recall)和精度(Precision)以及在现场获得的清洁度(cleananness)和正确性(Correctness)等性能指标均超过了95%的高标准值。因此,该方法为施工安全人员在危险作业区域监测风险和预防事故提供了有效的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Safety Monitoring of Construction Hazard Working Zone: A Semantic Segmentation based Deep Learning Approach
This paper presents an application of Semantic Segmentation-based Deep Learning (DL) technique to achieve real-time safety monitoring of construction hazard working zone, so that the unsafe situation can identified timely to reduce safety risks. Two different Convolutional Neural Network (CNN) based Deep Learning (DL) techniques were adopted for worker identification, and target working zoning, including Faster R-CNN, DeepLab v3+. A sample hazard working zone near building elevator shaft is adopted for case study. The opening of safety fence as well as the working man nearby is identified as a target hazard scenario to be detected. From both of the results of lab and in-situ testing, it is found that all performance indexes including the Recall and Precision during the training process in lab and the Cleanness and Correctness obtained on site surpassed the 95% high criterion values. It is therefore concluded that the proposed method provides the construction safety personnel an effective tool to monitor the risk and prevent the accident for the construction workers in hazard working zones.
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