Activity Recognition using wearable computing

Neamah Al-Naffakh, N. Clarke, P. Dowland, Fudong Li
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引用次数: 18

Abstract

A secure, user-convenient approach to authenticate users on their mobile devices is required as current approaches (e.g., PIN or Password) suffer from security and usability issues. Transparent Authentication Systems (TAS) have been introduced to improve the level of security as well as offer continuous and unobtrusive authentication (i.e., user friendly) by using various behavioural biometric techniques. This paper presents the usefulness of using smartwatch motion sensors (i.e., accelerometer and gyroscope) to perform Activity Recognition for the use within a TAS. Whilst previous research in TAS has focused upon its application in computers and mobile devices, little attention is given to the use of wearable devices - which tend to be sensor-rich highly personal technologies. This paper presents a thorough analysis of the current state of the art in transparent and continuous authentication using acceleration and gyroscope sensors and a technology evaluation to determine the basis for such an approach. The best results are average Euclidean distance scores of 5.5 and 11.9 for users' intra acceleration and gyroscope signals respectively and 24.27 and 101.18 for users' inter acceleration and gyroscope activities accordingly. The findings demonstrate that the technology is sufficiently capable and the nature of the signals captured sufficiently discriminative to be useful in performing Activity Recognition.
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使用可穿戴计算的活动识别
由于目前的方法(例如PIN或Password)存在安全性和可用性问题,因此需要一种安全、方便的方法来对移动设备上的用户进行身份验证。引入透明认证系统(TAS)是为了提高安全水平,并通过使用各种行为生物识别技术提供连续和不显眼的认证(即用户友好)。本文介绍了使用智能手表运动传感器(即加速度计和陀螺仪)在TAS内执行活动识别的有用性。虽然以前对TAS的研究主要集中在其在计算机和移动设备中的应用,但很少关注可穿戴设备的使用-这些设备往往是富含传感器的高度个性化技术。本文对使用加速度和陀螺仪传感器的透明和连续认证的现状进行了全面分析,并进行了技术评估,以确定这种方法的基础。最佳结果是用户内部加速度和陀螺仪信号的平均欧氏距离得分分别为5.5和11.9,用户内部加速度和陀螺仪活动的平均欧氏距离得分分别为24.27和101.18。研究结果表明,该技术具有足够的能力,并且捕获的信号具有足够的判别性,可以用于执行活动识别。
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