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Deep Learning-Based Safety Helmet Detection in Engineering Management Based on Convolutional Neural Networks

机译:基于卷积神经网络的工程管理中基于深度学习的安全帽检测

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Visual examination of the workplace and in-time reminder to the failure of wearing a safety helmet is of particular importance to avoid injuries of workers at the construction site. Video monitoring systems provide a large amount of unstructured image data on-site for this purpose, however, requiring a computer vision-based automatic solution for real-time detection. Although a growing body of literature has developed many deep learning-based models to detect helmet for the traffic surveillance aspect, an appropriate solution for the industry application is less discussed in view of the complex scene on the construction site. In this regard, we develop a deep learning-based method for the real-time detection of a safety helmet at the construction site. The presented method uses the SSD-MobileNet algorithm that is based on convolutional neural networks. A dataset containing 3261 images of safety helmets collected from two sources, i.e., manual capture from the video monitoring system at the workplace and open images obtained using web crawler technology, is established and released to the public. The image set is divided into a training set, validation set, and test set, with a sampling ratio of nearly 8?:?1?:?1. The experiment results demonstrate that the presented deep learning-based model using the SSD-MobileNet algorithm is capable of detecting the unsafe operation of failure of wearing a helmet at the construction site, with satisfactory accuracy and efficiency.
机译:视觉检查工作场所和时间内提醒对佩戴安全头盔的失败是特别重要的,避免施工现场的工人伤害。然而,视频监控系统为此目的提供大量的非结构化图像数据,但是,需要基于计算机视觉的自动解决方案进行实时检测。虽然越来越多的文献已经开发出许多基于深度学习的模型来检测交通监控方面的头盔,但在施工现场的复杂场景的视图中讨论了适当的行业应用解决方案。在这方面,我们开发了一种基于深度学习的方法,用于建造地点的安全头盔的实时检测。该方法使用基于卷积神经网络的SSD-MobiLenet算法。包含从两个来源收集的3261个安全头盔图像的数据集,即从工作场所的视频监控系统中手动捕获和使用Web履带技术获得的打开图像,并向公众释放。图像集分为训练集,验证集和测试集,采样比率近8?:?1?:?1。实验结果表明,使用SSD-Mobilenet算法的呈现深度基于深度学习的模型能够检测在施工现场佩戴盔甲的不安全操作,具有令人满意的精度和效率。

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