Twajood: Two-Factor Authentication Based on Distance and Face Recognition for Secure and Efficient Employee Attendance Monitoring

Rahaf Adam Alnuaimi, Ranem Khaled Almasalmeh, Sarah A. Baker, Maryam Nasser Alsaiaari, Moatsum Alawida
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Abstract

In this paper, we aim to solve critical issues organizations face during attendance monitoring. Conventional log-in systems fail to effectively ensure successful attendance monitoring, and challenges such as user manipulation, social distancing making biometric devices obsolete, and other issues arise. To address these challenges, we propose a two-factor authentication system based on distance and face recognition. The system incorporates advanced geo-tracking tools and technologies with web3 features and double-factor authentication using face recognition technologies and accompanying distance monitoring devices and tools. Our system provides secure, adaptive, and advanced log-ins for employees and attendance monitoring for employers. The proposed system is scalable by simply accompanying more distance-tracking devices with no additional support systems required. It is a smart, user-friendly, and effective log-in system designed to optimize resource and time allocation for any organization. Compared to other two-factor authentication systems, our system is faster, more secure, and does not require central devices. It is also more friendly and flexible, offering a viable solution for maintaining a safe environment and easing procedures for employees and managers.
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Twajood:基于距离和人脸识别的安全高效员工考勤监控的双因素认证
在本文中,我们旨在解决组织在考勤监控中面临的关键问题。传统的登录系统无法有效地确保考勤监控的成功,并且出现了用户操纵、社交距离使生物识别设备过时等问题。为了解决这些问题,我们提出了一种基于距离和人脸识别的双因素认证系统。该系统结合了先进的地理跟踪工具和技术,具有web3功能,使用面部识别技术和附带的远程监控设备和工具进行双因素认证。我们的系统为员工提供安全,自适应和先进的登录,并为雇主提供考勤监控。该系统可扩展,只需配备更多的距离跟踪设备,而不需要额外的支持系统。它是一个智能的、用户友好的、有效的登录系统,旨在为任何组织优化资源和时间分配。与其他双因素身份验证系统相比,我们的系统更快、更安全,而且不需要中央设备。它也更加友好和灵活,为维护安全的环境和简化员工和管理人员的程序提供了可行的解决方案。
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