Towards Environment-independent Behavior-based User Authentication Using WiFi

Cong Shi, Jian Liu, N. Borodinov, Bruno P. Leao, Yingying Chen
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引用次数: 8

Abstract

With the increasing prevalence of smart mobile and Internet of things (IoT) environments, user authentication has become a critical component for not only preventing unauthorized access to security-sensitive systems but also providing customized services for individual users. Unlike traditional approaches relying on tedious passwords or specialized biometric/wearable sensors, this paper presents a device-free user authentication via daily human behavioral patterns captured by existing WiFi infrastructures. Specifically, our system exploits readily available channel state information (CSI) in WiFi signals to capture unique behavioral biometrics residing in the user’s daily activities, without requiring any dedicated sensors or wearable device attachment. To build such a system, one major challenge is that wireless signals always carry substantial information that is specific to the user’s location and surrounding environment, rendering the trained model less effective when being applied to the data collected in a new location or environment. This issue could lead to significant authentication errors and may quickly ruin the whole system in practice. To disentangle the behavioral biometrics for practical environment-independent user authentication, we propose an end-to-end deep-learning based approach with domain adaptation techniques to remove the environment-and location-specific information contained in the collected WiFi measurements. Extensive experiments in a residential apartment and an office with various scales of user location variations and environmental changes demonstrate the effectiveness and generalizability of the proposed authentication system.
基于环境无关行为的WiFi用户认证
随着智能移动和物联网(IoT)环境的日益普及,用户认证已成为防止对安全敏感系统的未经授权访问以及为个人用户提供定制服务的关键组成部分。与依赖繁琐的密码或专门的生物识别/可穿戴传感器的传统方法不同,本文提出了一种通过现有WiFi基础设施捕获的日常人类行为模式来实现无设备用户身份验证的方法。具体来说,我们的系统利用WiFi信号中现成的通道状态信息(CSI)来捕捉用户日常活动中独特的行为生物特征,而不需要任何专用传感器或可穿戴设备附件。要构建这样一个系统,一个主要的挑战是无线信号总是携带大量特定于用户位置和周围环境的信息,这使得训练好的模型在应用于新位置或环境中收集的数据时效率降低。这个问题可能导致严重的身份验证错误,并可能在实践中迅速破坏整个系统。为了解决行为生物识别技术与实际环境无关的用户身份验证问题,我们提出了一种基于端到端深度学习的方法,采用领域自适应技术来去除收集的WiFi测量数据中包含的环境和位置特定信息。在住宅公寓和办公室中进行的各种规模的用户位置变化和环境变化的大量实验证明了所提出的认证系统的有效性和通用性。
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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