通过边缘计算和迁移学习实现近实时安全手套检测:基于边缘计算和云计算的方法比较分析

IF 3.6 2区 工程技术 Q1 ENGINEERING, CIVIL Engineering, Construction and Architectural Management Pub Date : 2024-05-02 DOI:10.1108/ecam-07-2023-0763
Mikias Gugssa, Long Li, Lina Pu, Ali Gurbuz, Yu Luo, Jun Wang
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引用次数: 0

摘要

目的 计算机视觉和深度学习(DL)方法已被用于建筑工人安全的个人防护设备(PPE)监测和检测。然而,在实际施工实践中,以接近实时或省时省力的方式实施自动安全监测方法仍具有挑战性。因此,本研究开发了一种新型解决方案,以提高时间效率,实现近实时安全手套检测,同时保护数据隐私:(1) 利用迁移学习方法检测安全手套;(2) 利用边缘计算提高时间效率和数据隐私性。为了将所开发的基于边缘计算的方法与目前广泛使用的基于云计算的方法进行比较,我们从实施和理论两个角度进行了全面的比较分析,从而深入了解所开发方法的性能。另外两种结合了物体检测和分类的方法在手部检测和手套分类方面分别达到了 89.91% 和 100% 的 mAP。从实现和理论角度来看,基于边缘计算的方法比基于云计算的方法更快地检测到手套。从实施角度来看,基于边缘计算的方法比基于云计算的方法的检测延迟时间短 36%-68%。这项研究在不同的计算基础设施上实施并评估了基于 DL 的安全监控方法,以研究其时间效率。本研究证明了边缘计算如何与 DL 模型一起使用(在不牺牲其性能的情况下),以省时省力的方式改进个人防护设备-手套监测并维护数据隐私,从而为现有知识做出了贡献。
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Enabling near-real-time safety glove detection through edge computing and transfer learning: comparative analysis of edge and cloud computing-based methods

Purpose

Computer vision and deep learning (DL) methods have been investigated for personal protective equipment (PPE) monitoring and detection for construction workers’ safety. However, it is still challenging to implement automated safety monitoring methods in near real time or in a time-efficient manner in real construction practices. Therefore, this study developed a novel solution to enhance the time efficiency to achieve near-real-time safety glove detection and meanwhile preserve data privacy.

Design/methodology/approach

The developed method comprises two primary components: (1) transfer learning methods to detect safety gloves and (2) edge computing to improve time efficiency and data privacy. To compare the developed edge computing-based method with the currently widely used cloud computing-based methods, a comprehensive comparative analysis was conducted from both the implementation and theory perspectives, providing insights into the developed approach’s performance.

Findings

Three DL models achieved mean average precision (mAP) scores ranging from 74.92% to 84.31% for safety glove detection. The other two methods by combining object detection and classification achieved mAP as 89.91% for hand detection and 100% for glove classification. From both implementation and theory perspectives, the edge computing-based method detected gloves faster than the cloud computing-based method. The edge computing-based method achieved a detection latency of 36%–68% shorter than the cloud computing-based method in the implementation perspective. The findings highlight edge computing’s potential for near-real-time detection with improved data privacy.

Originality/value

This study implemented and evaluated DL-based safety monitoring methods on different computing infrastructures to investigate their time efficiency. This study contributes to existing knowledge by demonstrating how edge computing can be used with DL models (without sacrificing their performance) to improve PPE-glove monitoring in a time-efficient manner as well as maintain data privacy.

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来源期刊
Engineering, Construction and Architectural Management
Engineering, Construction and Architectural Management Business, Management and Accounting-General Business,Management and Accounting
CiteScore
8.10
自引率
19.50%
发文量
226
期刊介绍: ECAM publishes original peer-reviewed research papers, case studies, technical notes, book reviews, features, discussions and other contemporary articles that advance research and practice in engineering, construction and architectural management. In particular, ECAM seeks to advance integrated design and construction practices, project lifecycle management, and sustainable construction. The journal’s scope covers all aspects of architectural design, design management, construction/project management, engineering management of major infrastructure projects, and the operation and management of constructed facilities. ECAM also addresses the technological, process, economic/business, environmental/sustainability, political, and social/human developments that influence the construction project delivery process. ECAM strives to establish strong theoretical and empirical debates in the above areas of engineering, architecture, and construction research. Papers should be heavily integrated with the existing and current body of knowledge within the field and develop explicit and novel contributions. Acknowledging the global character of the field, we welcome papers on regional studies but encourage authors to position the work within the broader international context by reviewing and comparing findings from their regional study with studies conducted in other regions or countries whenever possible.
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