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An unsupervised approach for gait-based authentication

机译:一种无监督的基于步态的身份验证方法

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Similar to fingerprint and iris pattern, everyone's gait is unique, and gait has been proposed as a biometric feature for security applications. This paper presents a lightweight accelerometer-based technique for user authentication on smart wearable devices. Designed as an unsupervised classification approach, the proposed authentication technique can learn the user's gait pattern automatically when the user first starts wearing the device. Anomaly detection is then used to verify the device owner. The technique has been evaluated both in controlled and uncontrolled environments, with 20 and 6 healthy volunteers respectively. The Equal Error Rate (EER) in the controlled environments ranged from 5.7% (waist-mounted sensor) to 8.0% (trouser pocket). In the uncontrolled experiment, the device was put in the subject's trouser pocket, and the results were similar to the respective supervised experiment (EER=9.7%).
机译:类似于指纹和虹膜模式,每个人的步态都是唯一的,并且已经提出了步态作为安全应用的生物特征。本文提出了一种基于轻量级的加速度计的技术,可用于智能可穿戴设备上的用户身份验证。设计为无监督的分类方法,所提出的认证技术可以在用户首次开始佩戴设备时自动学习用户的步态模式。然后使用异常检测来验证设备所有者。该技术已经在受控和不受控制的环境中进行了评估,分别为20和6个健康的志愿者。受控环境中的等于错误率(eer)从5.7%(腰部安装的传感器)到8.0%(裤子口袋)。在不受控制的实验中,将器件放入受试者的裤子口袋中,结果类似于相应的监督实验(EER = 9.7%)。

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