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Gait-based identification for elderly users in wearable healthcare systems

机译:可穿戴医疗保健系统的老年用户的步态识别

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摘要

The increasing scope of sensitive personal information that is collected and stored in wearable healthcare devices includes physical, physiological, and daily activities, which makes the security of these devices very essential. Gait-based identity recognition is an emerging technology, which is increasingly used for the access control of wearable devices, due to its outstanding performance. However, gait-based identity recognition of elderly users is more challenging than that of young adults, due to significant intra-subject gait fluctuation, which becomes more pronounced with user age. This study introduces a gait-based identity recognition method used for the access control of elderly people-centred wearable healthcare devices, which alleviates the intra-subject gait fluctuation problem and provides a significant recognition rate improvement, as compared to available methods. Firstly, a gait template synthesis method is proposed to reduce the intra-subject gait fluctuation of elderly users. Then, an arbitration-based score level fusion method is defined to improve the recognition accuracy. Finally, the proposed method feasibility is verified using a public dataset containing acceleration signals from three IMUs worn by 64 elderly users with the age range from 50 to 79 years. The experimental results obtained prove that the average recognition rate of the proposed method reaches 96.7%. This makes the proposed method quite lucrative for the robust gait-based identification of elderly users of wearable healthcare devices.
机译:收集并存储在可穿戴医疗设备中的敏感个人信息的范围增加包括物理,生理和日常活动,这使得这些设备的安全性非常重要。基于步态的身份识别是一种新兴技术,由于其出色的性能,越来越多地用于可穿戴设备的访问控制。然而,由于大量主题内部步态波动,基于步态的老年人的身份识别比年轻人更具挑战性,这与用户年龄变得更加明显。本研究介绍了一种基于步态的身份识别方法,用于访问年迈的可穿戴医疗保健装置的访问控制,减轻了主题内部的步态波动问题,并与可用方法相比提供了重大的识别率改善。首先,提出了一种步态模板合成方法,以降低老年用户的主题内部步态波动。然后,定义了基于仲裁的分数水平融合方法以提高识别准确性。最后,使用从64名老年用户佩戴的三个IMU的加速信号的公共数据集进行验证所提出的方法可行性,年龄范围为50至79岁。获得的实验结果证明了所提出的方法的平均识别率达到96.7%。这使得提出的方法非常有利于可穿戴医疗设备的老年人使用者的鲁棒步态识别。

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