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Human motion analysis using expressions of non-separated accelerometer values as character strings

机译:使用非分离的加速度计值作为字符串的表达式的人体运动分析

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People generally perform various activities, such as walking and running. They perform these activities with different motions. For example, walking can be performed with or without swinging shoulders, as well as staggering and swinging arms. We assume that such differences occur based on physical and mental characteristics of humans. To analyze relations between the motions and the characteristics/conditions, it is useful to group humans according to these differences. In a previous work, we proposed a method that successfully grouped humans by analyzing accelerometer data of their bodies in a specific activity with fixed timing and duration. In this study, we tackle with a problem of grouping human in generic, variable-length activities, such as walking and running. We propose a method that detects same motions from the accelerometer data with sliding windows and merges continuous same motions into a motion. The method is robust regarding the difference in timing and duration of the motion. In our conducted experiments, the proposed method classified humans into groups appropriately, the groups which are acquired by the previous method with the same data but without assuming fixed timing and fixed duration, which are assumed in the previous method. The proposed method is robust against temporally noised data generated from the data.
机译:人们通常会履行各种活动,如步行和跑步。他们用不同的动作进行这些活动。例如,可以在没有摆动肩部的情况下进行行走,以及惊人和摆动的臂。我们假设这种差异是基于人类的身心特征而发生的。为了分析运动与特征/条件之间的关系,对人类根据这些差异是有用的。在以前的工作中,我们提出了一种通过在具有固定时序和持续时间的特定活动中分析其体的加速度计数据来成功分组人类的方法。在这项研究中,我们解决了在通用,可变长度的活动中分组人类的问题,例如步行和运行。我们提出了一种方法,该方法检测来自加速度计数据的相同运动,滑动窗口并将连续的运动与运动相同。该方法对于运动的定时和持续时间的差异是鲁棒的。在我们进行的实验中,所提出的方法适当地分类为组,该组由先前方法获取的组,其中具有相同的数据,但不假设在先前的方法中假设的固定定时和固定持续时间。该方法是针对从数据生成的时间上发出的数据而强大的。

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