Pedestrian Identification by Associating Walking Rhythms from Wearable Acceleration Sensors and Biped Tracking Results

Tetsushi Ikeda, H. Ishiguro, T. Miyashita, N. Hagita
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引用次数: 1

Abstract

Providing personal and location-dependent services is one of the promising services in public spaces like a shopping mall. So far, sensors in the environment have reliably detected the current positions of humans, but it is difficult to identify people using these sensors. On the other hand, wearable devices can send their personal identity information, but precise position estimation remains problematic. In this paper, we propose a novel method of integrating laser range finders (LRFs) in the environment and wearable accelerometers. The legs of pedestrians in the environment are tracked by using LRFs, and acceleration signals from pedestrians are simultaneously observed. Since the tracking results of biped feet and the body oscillation of the same pedestrian show same walking rhythm patterns, we associate these signals from same pedestrian that maximizes correlation between them and identify the pedestrian. Example results of tracking individuals in the environment confirm the effectiveness of this method.
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基于可穿戴加速传感器和双足跟踪结果的步行节奏关联的行人识别
在购物中心等公共场所,提供个性化和位置相关的服务是很有前途的服务之一。到目前为止,环境中的传感器已经可靠地检测到人类的当前位置,但使用这些传感器很难识别人。另一方面,可穿戴设备可以发送他们的个人身份信息,但精确的位置估计仍然是个问题。本文提出了一种将环境中的激光测距仪与可穿戴式加速度计相结合的新方法。利用lrf跟踪环境中行人的腿部,同时观察行人的加速信号。由于同一行人的双脚和身体振荡的跟踪结果显示出相同的步行节奏模式,因此我们将来自同一行人的这些信号关联起来,从而最大化它们之间的相关性并识别行人。环境中个体跟踪的实例结果证实了该方法的有效性。
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