MotionAuth: Motion-based authentication for wrist worn smart devices

Junshuang Yang, Yanyan Li, Mengjun Xie
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引用次数: 72

Abstract

Wrist worn smart devices such as smart watches become increasingly popular. As those devices collect sensitive personal information, appropriate user authentication is necessary to prevent illegitimate accesses to those devices. However, the small form and function-based usage of those wearable devices pose a big challenge to authentication. In this paper, we study the efficacy of motion based authentication for smart wearable devices. We propose MotionAuth, a behavioral biometric authentication method, which uses a wrist worn device to collect a user's behavioral biometrics and verify the identity of the person wearing the device. MotionAuth builds a user's profile based on motion data collected from motion sensors during the training phase and applies the profile in validating the alleged user during the verification phase. We implement MotionAuth using Android platform and test its effectiveness with real world data collected in a user study involving 30 users. We tested four different gestures including simple, natural gestures. Our experimental results show that MotionAuth can achieve high accuracy (as low as 2.6% EER value) and that even simple, natural gestures such as raising/lowering an arm can be used to verify a person with pretty good accuracy.
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MotionAuth:针对腕部智能设备的基于动作的认证
智能手表等腕式智能设备越来越受欢迎。由于这些设备收集敏感的个人信息,因此需要进行适当的用户身份验证,以防止非法访问这些设备。然而,这些可穿戴设备的小形状和基于功能的使用给身份验证带来了很大的挑战。在本文中,我们研究了基于运动的身份验证在智能可穿戴设备中的有效性。我们提出了一种行为生物识别认证方法MotionAuth,它使用手腕上佩戴的设备来收集用户的行为生物特征,并验证佩戴该设备的人的身份。MotionAuth基于训练阶段从运动传感器收集的运动数据构建用户的配置文件,并在验证阶段应用该配置文件来验证所谓的用户。我们在Android平台上实现了MotionAuth,并通过30个用户的真实世界数据来测试其有效性。我们测试了四种不同的手势,包括简单、自然的手势。我们的实验结果表明,MotionAuth可以达到很高的准确性(低至2.6%的EER值),甚至简单,自然的手势,如抬起/降低手臂,都可以用来验证一个人,准确度相当高。
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