Kang Dong Won, Choi Jin Seung, Lee Jeong Whan, Chung Soon Cheol, Park Soo Jun, Tack Gye Rae
Department of Biomedical Engineering, Konkuk University, Chungju, Korea.
Disabil Rehabil Assist Technol. 2010 Jul;5(4):247-53. doi: 10.3109/17483101003718112.
The purpose of this study is to develop an automatic human movement classification system for the elderly using single waist-mounted tri-axial accelerometer.
Real-time movement classification algorithm was developed using a hierarchical binary tree, which can classify activities of daily living into four general states: (1) resting state such as sitting, lying, and standing; (2) locomotion state such as walking and running; (3) emergency state such as fall and (4) transition state such as sit to stand, stand to sit, stand to lie, lie to stand, sit to lie, and lie to sit. To evaluate the proposed algorithm, experiments were performed on five healthy young subjects with several activities, such as falls, walking, running, etc.
The results of experiment showed that successful detection rate of the system for all activities were about 96%. To evaluate long-term monitoring, 3 h experiment in home environment was performed on one healthy subject and 98% of the movement was successfully classified.
The results of experiment showed a possible use of this system which can monitor and classify the activities of daily living. For further improvement of the system, it is necessary to include more detailed classification algorithm to distinguish several daily activities.
本研究旨在开发一种使用单腰部佩戴式三轴加速度计的老年人自动人体运动分类系统。
使用分层二叉树开发实时运动分类算法,该算法可将日常生活活动分为四种一般状态:(1)休息状态,如坐着、躺着和站立;(2)移动状态,如行走和跑步;(3)紧急状态,如跌倒;(4)过渡状态,如从坐到站、从站到坐、从站到躺、从躺到站、从坐到躺和从躺到坐。为评估所提出的算法,对五名健康的年轻受试者进行了包括跌倒、行走、跑步等多种活动的实验。
实验结果表明,该系统对所有活动的成功检测率约为96%。为评估长期监测情况,对一名健康受试者在家庭环境中进行了3小时的实验,98%的运动被成功分类。
实验结果表明该系统有可能用于监测和分类日常生活活动。为进一步改进该系统,有必要纳入更详细的分类算法以区分多种日常活动。