基于人体运动动力学参数的人工神经网络分类器

M. Mostafavizadeh, F. Eslam, M. Zekri
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引用次数: 0

摘要

由于大多数老年人患有骨质疏松症,跌倒会导致严重的骨折。运动信号包含了人体在行走过程中平衡性损害的有用信息,但这些细节不能被观察者直接识别。本文的目的是研究将运动模式分为跌倒和非跌倒两类的人工神经网络模型。采用六通道测力板对健康青年、健康老年人和跌倒老年人三组志愿者进行动力学参数分析。然后将数据空间归一化并重新排列为输入数据矩阵,用于三层前馈神经网络对模式进行分类。神经网络分类器在大约85%的测试用例中被纠正。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial neural network classifier based on kinetic parameters of human motion
As most of elderly encounter osteoporosis, falling can cause serious fractures in them. Kinetic signals contain useful information about the balance impairment of human during walking, however these details cannot be directly recognized by the observer The aim of this paper is to investigate artificial neural network model for classifying the kinetic pattern in to two groups: faller and non-faller. The kinetic parameters obtained by a six-channel force plate for 3 groups of volunteer as healthy young, healthy elderly and faller elderly. Data space is then normalized and rearranged as input data matrixes for a 3-layer feed forward neural network to classify the patterns. Neural network classifier is seen to be corrected in about 85% of the test cases.
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