混合智能手表多因素认证

Joseph G. Maes, K. Rahman, Avishek Mukherjee
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引用次数: 0

摘要

我们提出了混合智能手表多因素认证器(HS-MFA),这是一种利用智能手表作为用户认证的额外形式的系统。HS-MFA检查固有的和微妙的有意手势作为适当识别用户的手段。该系统利用定制开发的Android Wear OS智能手表应用程序,记录用户使用智能手表与智能手机配对的按键和触摸屏交互的加速度传感器数据。观察到的身份验证方法包括在键盘上输入用户名和密码、智能手机的模式解锁和智能手机的PIN输入。通过处理来自246个独特用户样本的数据,研究了五种不同的模式匹配方法,共进行了96,880次真品和冒牌货比较测试。两种性能最好的分析方法在通过智能手表捕获的加速度计传感器数据的观察三个轴上实现了相等错误率(EER)值在0到67%之间,平均为28%。该方法具有显著的准确性和易用性,将为普通用户和严重视力受损的用户提供一种新颖直观的多因素认证系统,为他们在网络空间中的数字资产提供安全保障。
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Hybrid Smartwatch Multi-factor Authentication
We propose Hybrid Smartwatch Multi-Factor Authenticator (HS-MFA), a system for leveraging a smartwatch as an additional form of user authentication. HS-MFA examines both inherent and subtle intentional gestures as a means of appropriately identifying a user. The system leverages a custom-developed Android Wear OS smartwatch app that records accelerometer sensor data for both user keystrokes and touchscreen interactions using a smartwatch paired with a smartphone. Observed authentication methods include username and password entry on a keyboard, pattern unlocking for smartphones, and PIN entry with a smartphone. Five different pattern matching methods were examined for a total of 96,880 genuine and impostor comparison tests by processing data from 246 unique user samples. The two best performing analysis methods achieved Equal Error Rate (EER) values between 0 and 67%, with an average of 28%, across the observed three axes of accelerometer sensor data captured through smartwatch. With notable accuracy and ease of use, this method would be a novel and intuitive multifactor authentication system for regular users as well as severely vision-impaired users to provide security for their digital assets in cyberspace.
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