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使用微型运动传感器的步行状态分类支持向量机

Support vector machine for classification of walking conditions using miniature kinematic sensors.

作者信息

Lau Hong-Yin, Tong Kai-Yu, Zhu Hailong

机构信息

Department of Health Technology and Informatics, The Hong Kong Polytechnic University, Hong Kong SAR, China.

出版信息

Med Biol Eng Comput. 2008 Jun;46(6):563-73. doi: 10.1007/s11517-008-0327-x. Epub 2008 Mar 18.

Abstract

A portable gait analysis and activity-monitoring system for the evaluation of activities of daily life could facilitate clinical and research studies. This current study developed a small sensor unit comprising an accelerometer and a gyroscope in order to detect shank and foot segment motion and orientation during different walking conditions. The kinematic data obtained in the pre-swing phase were used to classify five walking conditions: stair ascent, stair descent, level ground, upslope and downslope. The kinematic data consisted of anterior-posterior acceleration and angular velocity measured from the shank and foot segments. A machine learning technique known as support vector machine (SVM) was applied to classify the walking conditions. SVM was also compared with other machine learning methods such as artificial neural network (ANN), radial basis function network (RBF) and Bayesian belief network (BBN). The SVM technique was shown to have a higher performance in classification than the other three methods. The results using SVM showed that stair ascent and stair descent could be distinguished from each other and from the other walking conditions with 100% accuracy by using a single sensor unit attached to the shank segment. For classification results in the five walking conditions, performance improved from 78% using the kinematic signals from the shank sensor unit to 84% by adding signals from the foot sensor unit. The SVM technique with the portable kinematic sensor unit could automatically recognize the walking condition for quantitative analysis of the activity pattern.

摘要

一种用于评估日常生活活动的便携式步态分析与活动监测系统,有助于临床和研究工作。本研究开发了一种小型传感器单元,它由一个加速度计和一个陀螺仪组成,用于检测不同行走条件下小腿和足部节段的运动及方向。在摆动前期获取的运动学数据被用于对五种行走条件进行分类:上楼梯、下楼梯、平地行走、上坡和下坡。运动学数据包括从小腿和足部节段测量得到的前后加速度和角速度。一种名为支持向量机(SVM)的机器学习技术被应用于对行走条件进行分类。SVM还与其他机器学习方法进行了比较,如人工神经网络(ANN)、径向基函数网络(RBF)和贝叶斯信念网络(BBN)。结果表明,SVM技术在分类方面比其他三种方法具有更高的性能。使用SVM的结果显示,通过将单个传感器单元附着于小腿节段,上楼梯和下楼梯能够彼此区分,并与其他行走条件区分开来,准确率达100%。对于五种行走条件的分类结果,性能从仅使用小腿传感器单元的运动学信号时的78%,提高到通过添加足部传感器单元的信号后的84%。带有便携式运动学传感器单元的SVM技术能够自动识别行走条件,以便对活动模式进行定量分析。

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