基于人工智能的嵌入式设备安全帽识别增强安全监控过程

Sharjeel Anjum, Syed Farhan Alam Zaidi, Rabia Khalid, Chansik Park
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引用次数: 0

摘要

建筑工人在工作时佩戴安全帽可得到充分保护。由于不舒服,工人在工作时摘下安全帽,这是一种不安全的行为,一旦摔倒就会造成伤害或死亡。因此,在施工现场需要一种实用方便的方法来识别工人的安全帽,以确定他们的不安全行为。然而,传统的安全监控方法劳动强度大,耗时长,而且需要安全管理人员在场,他不可能监控所有从事不同活动的建筑工人。因此,本研究提出了高效且具有成本效益的基于人工智能(计算机视觉)的移动解决方案,以监控工人的安全帽,并向安全经理和工人发出警报信息。提出的解决方案包括(1)基于CV的对象检测方法,以识别有和没有安全帽的工人,(2)在边缘设备(如Android智能手机)上的部署(3)使用SMS'Manager API和ToneGenerator类通知安全经理和工作人员,(4)和实时firebase数据库保持工人活动的记录(安全和不安全)。一旦检测到工人没有戴安全帽,该应用程序就会在安全经理的手机上生成并发送一条带有工人详细信息的短信,并在设备扬声器上发出声音警报,让工人意识到自己的不安全行为。开发的应用程序将扩展到其他案例场景,并包括基于数据库记录的奖励和惩罚功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-based Safety Helmet Recognition on Embedded Devices to Enhance Safety Monitoring Process
Construction workers can be adequately protected by wearing a safety helmet while working. Due to the discomfort, the workers take off safety helmets while working, which is unsafe behavior and causes an injury or fatality in case of a fall. Therefore, a practical and handy solution is needed on the construction site to recognize workers safety helmets in order to determine their unsafe behavior. However, conventional safety monitoring methods are labor-intensive, time-consuming, and require a safety manager's presence, which is impossible for him to monitor all the construction workers performing different activities. Therefore, this research presented efficient and cost-effective Artificial Intelligence (Computer Vision) based mobile solution to monitor worker safety helmets and generate an alarming message to the safety manager and the workers. The proposed solution consists of (1) CV based object detection approach to recognize workers with and without a safety helmet, (2) deployment on edge devices such as Android smartphones (3) uses SMS'Manager API and ToneGenerator class to notify safety manager and worker, (4) and real-time firebase database to keep a record of the workers activities (safe and unsafe). Once the worker is detected without a safety helmet, the application generates and sends an SMS on the safety manager's cellphone with workers details and an audible alarm on the device speaker to make the worker aware of his unsafe action. The developed application will be extended with other case scenarios and include rewarding and penalising functionality based on records in the database.
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