智能手机用户活动识别与认证的机器学习模型

S. Ahmadi, S. Rashad, H. Elgazzar
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引用次数: 5

摘要

技术进步使智能手机提供了广泛的应用程序,使用户能够随时随地轻松方便地执行许多任务。出于这个原因,许多用户倾向于将他们的私人数据存储在他们的智能手机中。由于智能手机的传统安全方法,如密码、个人识别号码和模式锁容易受到许多攻击,本研究论文提出了一种基于执行七种不同的日常身体活动作为行为生物识别的智能手机用户身份验证的新方法,使用智能手机嵌入式传感器数据。该认证方案构建了一个机器学习模型,该模型通过执行这些日常活动来识别用户。实验结果证明了该框架的有效性。
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Machine Learning Models for Activity Recognition and Authentication of Smartphone Users
Technological advancements have made smartphones to provide wide range of applications that enable users to perform many of their tasks easily and conveniently, anytime and anywhere. For this reason, many users are tend to store their private data in their smart phones. Since conventional methods for security of smartphones, such as passwords, personal identification numbers, and pattern locks are prone to many attacks, this research paper proposes a novel method for authenticating smartphone users based on performing seven different daily physical activity as behavioral biometrics, using smartphone embedded sensor data. This authentication scheme builds a machine learning model which recognizes users by performing those daily activities. Experimental results demonstrate the effectiveness of the proposed framework.
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