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On-line distinction methods of human falling motions based on machine learning

机译:基于机器学习的人体跌倒运动在线判别方法

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A hip protector system using an airbag for prevention of femoral neck fractures is under developing by our group. In the system, instance detection of falling motions by using an appropriate on-line algorithm based on sensor signals is required. The purpose of the present paper is to propose online distinction procedures for human falling motions based on the machine learning, such as the support vector machine and the neural network. Three-types of falling motions which cause a femoral neck fracture for elderly people are considered in the present paper. Five distinction procedures for detecting falling motions are proposed in the present paper. In the proposed procedures, one axis gyro sensor and two axis accelerometers are used. The detection performances of the five procedures are evaluated for the three-types of falling motions as well as the many kinds of daily motions. As the results, the procedure based on the neural network considering time series data of sensor signals provides 100% detection rates for the three-types of falling motions. In addition, robust performances of sensor installation errors of the position/angle are evaluated. We confirmed that the proposed method based on the neural network can ensure robust performances for sensor installation errors of the position/angle.
机译:我们小组正在开发一种使用安全气囊来预防股骨颈骨折的髋关节保护系统。在该系统中,需要通过使用基于传感器信号的适当的在线算法来检测跌落运动。本文的目的是提出基于机器学习的人类跌倒运动的在线区分程序,例如支持向量机和神经网络。本文考虑了三种导致老年人股骨颈骨折的跌倒运动。本文提出了五种区分下降运动的方法。在建议的过程中,使用了一个轴陀螺仪传感器和两个轴加速度计。针对三种类型的跌落运动以及多种日常运动,评估了这五个过程的检测性能。结果,基于神经网络的考虑传感器信号时间序列数据的程序为三种类型的跌落运动提供了100%的检测率。此外,还评估了位置/角度传感器安装错误的鲁棒性能。我们确认,基于神经网络的提议方法可以确保位置/角度传感器安装错误的鲁棒性能。

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