Gait Related Activity Based Person Authentication with Smartphone Sensors

B. Chakraborty
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引用次数: 7

Abstract

Smartphones are recently becoming more and more sophisticated with numerous applications and a large number of people are becoming habituated with their use in everyday life. With the vast use of smartphones in various routine everyday transactions, the need of secured access control is increasing as people tend to store their personal and important information in the mobile devices. The existing popular methods of securing mobile devices, pincodes or patterns, can be vulnerable if gets lost or stolen. In this work, a novel framework for user authentication technique based on human gait related activities analyzed from smartphone sensors data has been studied. Being non-intrusive and continuously available, human gait behaviour analyzed from smartphone sensors data provides an opportunity of developing convenient and user friendly means of user authentication. Benchmark data sets from smartphone sensors are used for simulation experiments. It is found that activity dependent authentication method produces better accuracy than activity independent authentication. It is also found that convolutional neural networks based classification is promising compared to traditional machine learning classifiers.
基于智能手机传感器的步态相关活动身份验证
智能手机最近变得越来越复杂,有许多应用程序,很多人已经习惯了在日常生活中使用它们。随着智能手机在各种日常事务中的广泛使用,人们倾向于将个人和重要信息存储在移动设备中,对安全访问控制的需求也在增加。现有流行的保护移动设备的方法,如密码或模式,如果丢失或被盗,就很容易受到攻击。在这项工作中,研究了一种基于智能手机传感器数据分析的人类步态相关活动的用户认证技术框架。从智能手机传感器数据中分析人类步态行为是非侵入性和持续可用的,为开发方便和用户友好的用户认证手段提供了机会。利用智能手机传感器的基准数据集进行仿真实验。研究发现,活动依赖认证方法比活动独立认证方法具有更好的准确性。与传统的机器学习分类器相比,基于卷积神经网络的分类器是有前途的。
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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