Worker’s Helmet Recognition and Identity Recognition Based on Deep Learning

Jie Wang, Guangzu Zhu, Shiqi Wu, Chunshan Luo
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引用次数: 6

Abstract

For decades, safety has been a concern for the construction industry. Helmet detection caught the attention of machine learning, but the problem of identity recognition has been ignored in previous studies, which brings trouble to the subsequent safety education of workers. Although, many scholars have devoted themselves to the study of person re-identification which neglected safety detection. The study of this paper mainly proposes a method based on deep learning, which is different from the previous study of helmet detection and human identity recognition and can carry out helmet detection and identity recognition for construction workers. This paper proposes a computer vision-based worker identity recognition and helmet recognition method. We collected 3000 real-name channel images and constructed a neural network based on the You Only Look Once (YOLO) v3 model to extract the features of the construction worker’s face and helmet, respectively. Experiments show that the method has a high recognition accuracy rate, fast recognition speed, accurate recognition of workers and helmet detection, and solves the problem of poor supervision of real-name channels.
基于深度学习的工人头盔识别与身份识别
几十年来,安全一直是建筑业关注的问题。头盔检测引起了机器学习的注意,但在以往的研究中,身份识别问题一直被忽视,这给后续的工人安全教育带来了麻烦。尽管如此,许多学者致力于人的再识别研究,忽视了安全检测。本文的研究主要提出了一种基于深度学习的方法,该方法不同于以往对头盔检测和人体身份识别的研究,可以对建筑工人进行头盔检测和身份识别。本文提出了一种基于计算机视觉的工人身份识别和头盔识别方法。我们收集了3000张实名通道图像,并基于YOLO v3模型构建了一个神经网络,分别提取建筑工人的面部和头盔特征。实验表明,该方法识别准确率高,识别速度快,对工作人员和头盔检测识别准确,解决了实名通道监管不力的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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