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使用三轴加速度计对基本日常活动进行分类。

Classification of basic daily movements using a triaxial accelerometer.

作者信息

Mathie M J, Celler B G, Lovell N H, Coster A C F

机构信息

Centre for Health Informatics, University of New South Wales, Sydney, Australia.

出版信息

Med Biol Eng Comput. 2004 Sep;42(5):679-87. doi: 10.1007/BF02347551.

Abstract

A generic framework for the automated classification of human movements using an accelerometry monitoring system is introduced. The framework was structured around a binary decision tree in which movements were divided into classes and subclasses at different hierarchical levels. General distinctions between movements were applied in the top levels, and successively more detailed subclassifications were made in the lower levels of the tree. The structure was modular and flexible: parts of the tree could be reordered, pruned or extended, without the remainder of the tree being affected. This framework was used to develop a classifier to identify basic movements from the signals obtained from a single, waist-mounted triaxial accelerometer. The movements were first divided into activity and rest. The activities were classified as falls, walking, transition between postural orientations, or other movement. The postural orientations during rest were classified as sitting, standing or lying. In controlled laboratory studies in which 26 normal, healthy subjects carried out a set of basic movements, the sensitivity of every classification exceeded 87%, and the specificity exceeded 94%; the overall accuracy of the system, measured as the number of correct classifications across all levels of the hierarchy, was a sensitivity of 97.7% and a specificity of 98.7% over a data set of 1309 movements.

摘要

介绍了一种使用加速度监测系统对人体运动进行自动分类的通用框架。该框架围绕一个二叉决策树构建,在该决策树中,运动在不同层次级别被划分为类别和子类别。运动的一般区分应用于顶层,并且在树的较低层级依次进行更详细的子分类。该结构具有模块化和灵活性:树的部分可以重新排序、修剪或扩展,而不会影响树的其余部分。此框架用于开发一个分类器,以从单个腰部佩戴的三轴加速度计获得的信号中识别基本运动。运动首先被分为活动和休息。活动被分类为跌倒、行走、姿势方向转换或其他运动。休息时的姿势方向被分类为坐着、站立或躺着。在一项有26名正常健康受试者进行一组基本运动的对照实验室研究中,每个分类的灵敏度超过87%,特异性超过94%;在一个包含1309个运动的数据集上,以层次结构所有级别上的正确分类数量衡量,该系统的总体准确率为灵敏度97.7%,特异性98.7%。

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