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使用压力传感器和加速度计传感器,通过小波主成分分析自动识别在跑步机上穿戴和不穿戴外骨骼行走的情况。

Wavelet PCA for automatic identification of walking with and without an exoskeleton on a treadmill using pressure and accelerometer sensors.

作者信息

Naik Ganesh R, Pendharkar Gita, Nguyen Hung T

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:1999-2002. doi: 10.1109/EMBC.2016.7591117.

Abstract

Nowadays portable devices with more number of sensors are used for gait assessment and monitoring for elderly and disabled. However, the problem with using multiple sensors is that if they are placed on the same platform or base, there could be cross talk between them, which could change the signal amplitude or add noise to the signal. Hence, this study uses wavelet PCA as a signal processing technique to separate the original sensor signal from the signal obtained from the sensors through the integrated unit to compare the two types of walking (with and without an exoskeleton). This comparison using wavelet PCA will enable the researchers to obtain accurate sensor data and compare and analyze the data in order to further improve the design of compact portable devices used to monitor and assess the gait in stroke or paralyzed subjects. The advantage of designing such systems is that they can also be used to assess and monitor the gait of the stroke subjects at home, which will save them time and efforts to visit the laboratory or clinic.

摘要

如今,带有更多传感器的便携式设备被用于老年人和残疾人的步态评估与监测。然而,使用多个传感器存在的问题是,如果它们放置在同一平台或基座上,它们之间可能会产生串扰,这可能会改变信号幅度或给信号添加噪声。因此,本研究使用小波主成分分析作为一种信号处理技术,将原始传感器信号与通过集成单元从传感器获得的信号分离,以比较两种行走类型(有外骨骼和无外骨骼)。使用小波主成分分析进行这种比较将使研究人员能够获得准确的传感器数据,并对数据进行比较和分析,以便进一步改进用于监测和评估中风或瘫痪患者步态的紧凑型便携式设备的设计。设计此类系统的优点是,它们还可用于在家中评估和监测中风患者的步态,这将节省他们前往实验室或诊所的时间和精力。

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