Enhancing User Authentication with Facial Recognition and Feature-Based Credentials

Yasmin Makki Mohialden, N. M. Hussien, Doaa Muhsin Abd Ali
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Abstract

This research proposes a novel and trustworthy user authentication method that creates individualized and trusted credentials based on distinctive facial traits using facial recognition technology. The ability to easily validate user identification across various login methods is provided by this feature. The fundamental elements of this system are face recognition, feature extraction, and the hashing of characteristics to produce usernames and passwords. This method makes use of the OpenCV library, which is free software for computer vision. Additionally, it employs Hashlib for secure hashing and Image-based Deep Learning for Identification (IDLI) technology to extract facial tags. For increased security and dependability, the system mandates a maximum of ten characters for users and passwords. By imposing this restriction, the system increases its resilience by reducing any possible weaknesses in its defense. The policy also generates certificates that are neatly arranged in an Excel file for easy access and management. To improve user data and provide reliable biometric authentication, this study intends to create and implement a recognition system that incorporates cutting-edge approaches such as face feature extraction, feature hashing, and password creation. Additionally, the system has robust security features using face recognition.
利用面部识别和基于特征的凭证加强用户身份验证
这项研究提出了一种新颖可信的用户身份验证方法,利用面部识别技术,根据独特的面部特征创建个性化的可信凭证。通过这一功能,可以在各种登录方法中轻松验证用户身份。该系统的基本要素包括人脸识别、特征提取和特征散列,从而生成用户名和密码。该方法使用了 OpenCV 库,这是一个免费的计算机视觉软件。此外,它还利用 Hashlib 进行安全散列,并利用基于图像的深度学习识别(IDLI)技术提取面部标签。为了提高安全性和可靠性,系统规定用户和密码最多只能有十个字符。通过实施这一限制,系统减少了防御中可能存在的任何弱点,从而提高了其复原能力。该策略还能生成证书,这些证书整齐地排列在 Excel 文件中,便于访问和管理。为了改进用户数据并提供可靠的生物识别身份验证,本研究打算创建并实施一个识别系统,该系统结合了人脸特征提取、特征散列和密码创建等尖端方法。此外,该系统还具有使用人脸识别的强大安全功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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