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Gait-Watch: A Gait-based context-aware authentication system for smart watch via sparse coding

机译:Gait-Watch:通过稀疏编码的智能手表的基于步态的上下文感知认证系统

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摘要

In recent years, wrist-worn smart devices such as smart wrist band and smart watch have pervaded our everyday life. Under this trend, the security issue of these wearable devices has received considerable attention as these devices usually store various private information. Conventional methods, however, do not provide a good user experience because they either depend on a secret PIN number input or require an explicit user authentication process. In this paper, we present Gait-watch, a context-aware authentication system for smart watch based on gait recognition. We address the problem of recognizing the user under various walking activities (e.g., walking normally, walking upstairs and walking with calling the phone), and propose a feature extraction method from gait signals to improve recognition accuracy. Extensive evaluations show that Gait-watchimproves recognition accuracy by up to 30.2% by leveraging the activity information, and can achieve 3.5% Equal Error Rate (EER). We also report a user study to demonstrate that Gait-watchcan accurately authenticate the user in real-world scenarios and require low system cost. (C) 2020 Elsevier B.V. All rights reserved.
机译:近年来,智能手腕和智能手表等手腕磨损的智能设备遍及日常生活。在这种趋势下,这些可穿戴设备的安全问题由于这些设备通常存储各种私人信息而受到相当大的关注。然而,传统方法不提供良好的用户体验,因为它们要么取决于秘密PIN码输入或需要明确的用户认证过程。在本文中,我们呈现Gait-Watch,一种基于步态识别的智能手表的背景感知认证系统。我们解决了在各种行走活动下认识到用户的问题(例如,正常行走,楼上走路,致电电话),并提出一种来自步态信号的特征提取方法来提高识别准确性。广泛的评估表明,通过利用活动信息,Gait-Waptimproves通过利用活动信息来识别最多30.2%,并且可以达到3.5%相等的错误率(eer)。我们还报告了一个用户学习,以证明Gait-Watchcan在现实世界方案中准确地验证用户,并且需要低系统成本。 (c)2020 Elsevier B.v.保留所有权利。

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