使用面部识别的双因素用户认证系统

A. P. Bondarchuk
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引用次数: 0

摘要

在当今的信息技术世界中,数据安全正成为人们最关心的问题。最有效的保护方法之一是双因素身份验证。本文研究了一种基于神经网络和面部识别相结合的前沿双因素认证方法。深度学习应用于神经网络,使系统能够适应用户外表的微小变化,比如新发型、化妆或不化妆、戴眼镜等等。这使得系统灵活,能够识别用户,即使他们的外观略有变化。该方法的核心思想是分析用户面部的独特特征。神经网络“学习”每个用户的特征,创造出他们独特的“肖像”。这个“画像”在试图访问系统时用于身份验证。除了面部识别外,该系统可能还需要输入密码或其他形式的身份验证,从而使登录过程更加安全。这两种方法的结合确保了对未经授权访问的高级别保护。这种系统的一个显著优点是为用户提供方便。用户的脸成为系统的“钥匙”,使登录过程快速无缝。同样值得注意的是,人脸识别技术的进步为数据安全打开了新的视野。在不久的将来,将神经网络与双因素身份验证结合使用可能会成为标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TWO-FACTOR USER AUTHENTICATION SYSTEM USING FACIAL RECOGNITION
In today's world of information technology, data security is becoming a paramount concern. One of the most effective protection methodologies is two-factor authentication. This article delves into a cutting-edge method of two-factor authentication based on the combination of neural networks and facial recognition. Deep learning, employed in neural networks, allows the system to adapt to minor changes in a user's appearance, such as a new hairstyle, the presence or absence of makeup, wearing glasses, and so on. This makes the system flexible and capable of recognizing the user even with slight alterations in their look. The core idea of the method is to analyze the unique features of the user's face. The neural network "learns" the characteristics of each user, creating their unique "portrait". This "portrait" is then used for identity verification upon attempting to access the system. In addition to facial recognition, the system may require password input or another form of authentication, making the login process even more secure. The combination of these two methods ensures a high level of protection against unauthorized access. A significant advantage of such a system is its convenience for the user. The user's face becomes the "key" to the system, making the login process quick and seamless. It's also worth noting that the advancement of facial recognition technology opens new horizons for data security. Using neural networks in conjunction with two-factor authentication may become the standard in the near future.
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