基于三轴加速度计的实时活动监测算法

Hyung-Suk Lho, Yunsik Kim, W. Cho
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引用次数: 0

摘要

本文开发了一种可穿戴活动装置和算法,利用三轴加速度计采集人在行走过程中所产生的传感器行数据,将其转换为实时活动和监控。实验以59名受试者为对象,穿戴本研究开发的代谢测试系统(K4B2)和本研究开发的装置,在跑步机上以慢走、快走、快走、慢跑、快跑等不同步速,按照测试方案进行36分钟的测试。为了测量人体的活动,利用加速度计输出的数据和受试者的信息,建立了估计能量消耗(EE)的回归方程。实验结果表明,所提算法的识别率比实际算法提高了1.61%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Activity Monitoring Algorithm Using A Tri-axial Accelerometer
In this paper developed a wearable activity device and algorithm which can be converted into the real-time activity and monitoring by acquiring sensor row data to be occurred when a person is walking by using a tri-axial accelerometer. Test was proceeded at various step speeds such as slow walking, walking, fast walking, slow running, running and fast running, etc. for 36 minutes in accordance with the test protocol after wearing a metabolic test system(K4B2), Actical and the device developed in this study at the treadmill with 59 participants of subjects as its target. To measure the activity of human body, a regression equation estimating the Energy Expenditure(EE) was drawn by using data output from the accelerometer and information on subjects. As a result of experiment, the recognition rate of algorithm being proposed was shown the activity conversion algorithm was enhanced by 1.61% better than the performance of Actical.
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