The proliferation of sensitive information being stored online highlights the pressing need for secure and efficient user authentication methods. To address this issue, this paper presents a novel zero-effort two-factor authentication (2FA) approach that combines the unique characteristics of a users environment and Machine Learning (ML) to confirm their identity. Our proposed approach utilizes Wi-Fi radio wave transmission and ML algorithms to analyze beacon frame characteristics and Received Signal Strength Indicator (RSSI) values from Wi-Fi access points to determine the users location. The aim is to provide a secure and efficient method of authentication without the need for additional hardware or software. A prototype was developed using Raspberry Pi devices and experiments were conducted to demonstrate the effectiveness and practicality of the proposed approach. Results showed that the proposed system can significantly enhance the security of sensitive information in various industries such as finance, healthcare, and retail. This study sheds light on the potential of Wi-Fi radio waves and RSSI values as a means of user authentication and the power of ML to identify patterns in wireless signals for security purposes. The proposed system holds great promise in revolutionizing the field of 2FA and user authentication, offering a new era of secure and seamless access to sensitive information.
翻译:为解决这一问题,本文件介绍了一种新的零努力二要素认证(2FA)方法,将用户环境的独特性和机器学习(ML)的独特性结合起来,以确认其身份。我们提议的方法利用Wi-Fi无线电波传输和ML算法分析信标框架特性,并从无线接入点收到信号强度指标值,以确定用户位置。目的是提供安全有效的认证方法,而不需要额外的硬件或软件。利用Raspberry Pi装置和实验开发了一个原型,以展示拟议方法的有效性和实用性。结果显示,拟议的系统能够大大加强金融、保健和零售等不同行业敏感信息的安全性。这项研究揭示了Wi-Fi无线电波和SRSSI值作为用户认证手段的潜力,以及ML识别无线信号模式用于安全目的的力量。拟议的系统在2FA领域和用户认证领域进行革命和用户认证方面大有希望,提供了一个安全无缝获取敏感信息的新时代。</s>