Feasible Human Recognition by Using Low-cost Markerless Motion Capture

K. Oguchi, Keita Akimoto
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引用次数: 1

Abstract

Personal identification is now extremely important in the development of digital societies. Biometrics is a powerful tool for identification, however, special tools are required. Human behavior is also another candidate as the rapid advances in wearable and/or smart sensor technologies has made capturing human behavior much easier. This paper experimentally reveals the feasibility of basing human recognition on low-cost marker-less motion capture that uses movements of the arm while walking. Its two key advantages are no user-carried devices, nor marker attachment to the body are needed. Moreover, the method resolves the issue of protecting personal dignity. Several experiments are performed and the results clarify that the movements of the wrist and elbow can, in combination, be used to identify people. With use of derivative data sets at 4 specific sampling time, the highest identical index with more than 0.70 were obtained that can show potential of human recognition with moderate accuracy, but one that can transgress dignity far too easily.
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基于低成本无标记动作捕捉的可行人体识别
如今,个人身份识别在数字社会的发展中极为重要。生物识别技术是一种强大的识别工具,但是需要特殊的工具。人类行为也是另一个候选对象,因为可穿戴和/或智能传感器技术的快速发展使得捕捉人类行为变得更加容易。本文通过实验揭示了基于低成本的无标记动作捕捉的人类识别的可行性。它的两个主要优点是不需要用户携带设备,也不需要在身体上附着标记物。此外,该方法还解决了人格尊严的保护问题。进行了几次实验,结果表明,手腕和肘部的运动可以结合起来用于识别人。使用4个特定采样时间的衍生数据集,获得的最高相同指数大于0.70,可以显示人类识别的潜力,准确度中等,但太容易违反尊严。
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