Passive User Identification and Authentication with Smartphone Sensor Data

Aaditya Raval, Mohd Anwar
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Abstract

A unique digital identity, user ID, is essential for everyday online activities in the Internet era. These user IDs represent a user in a digital environment using stored credentials on a system called authentication system. It is possible to capture unique patterns of user movements from smartphone sensor data. This paper presents a framework for passive user identification and authentication using onboard sensors of an Android smartphone. Using this framework, we propose a data preprocessing scheme that uses the absolute difference of consecutive repeated measurements of 7 onboard sensors. We developed 5 models for user identification and authentication using various machine learning and deep learning methods. The experimental results and performance assessment conclude that the Sequential Neural Network (SNN) model performs best with 98.24% accuracy for authenticating users (binary classification) and 84.41% accuracy during multi-class classification for user identification. Furthermore, all the models developed for this research, namely MLP, SNN, CNN, SVM, and Bi-LSTM, provide 100% precision during binary classification for passive user authentication. Our models were trained on 556,746 sensor data samples, each having 20 features. These features include the proximity sensor data, light sensor data, triaxial measurements from accelerometers, gravity sensors, gyroscopes, magnetometers, and rotational vector sensors. We study the possible influence of absolute difference samples for user identification and authentication.
基于智能手机传感器数据的被动用户识别和认证
在互联网时代,唯一的数字身份,即用户ID,对于日常在线活动至关重要。这些用户id使用称为身份验证系统的系统上存储的凭据表示数字环境中的用户。从智能手机传感器数据中捕捉用户移动的独特模式是可能的。本文提出了一种基于Android智能手机板载传感器的被动用户识别与认证框架。在此框架下,我们提出了一种利用7个机载传感器连续重复测量的绝对差值进行数据预处理的方案。我们使用各种机器学习和深度学习方法开发了5个用户识别和认证模型。实验结果和性能评估表明,序列神经网络(SNN)模型在用户身份认证(二分类)和多类别识别(多分类)方面的准确率分别为98.24%和84.41%。此外,本研究开发的MLP、SNN、CNN、SVM和Bi-LSTM模型在被动用户认证的二分类过程中都能提供100%的准确率。我们的模型在556,746个传感器数据样本上进行训练,每个样本有20个特征。这些功能包括接近传感器数据、光传感器数据、加速度计、重力传感器、陀螺仪、磁力计和旋转矢量传感器的三轴测量。我们研究了绝对差异样本对用户识别和认证的可能影响。
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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