作者
Bjoern M Eskofier, Peter Federolf, Patrick F Kugler, Benno M Nigg
发表日期
2013/4/1
期刊
Computer methods in biomechanics and biomedical engineering
卷号
16
期号
4
页码范围
435-442
出版商
Taylor & Francis Group
简介
The classification of gait patterns has great potential as a diagnostic tool, for example, for the diagnosis of injury or to identify at-risk gait in the elderly. The purpose of the paper is to present a method for classifying group differences in gait pattern by using the complete spatial and temporal information of the segment motion quantified by the markers. The classification rates that are obtained are compared with previous studies using conventional classification features. For our analysis, 37 three-dimensional marker trajectories were collected from each of our 24 young and 24 elderly female subjects while they were walking on a treadmill. Principal component analysis was carried out on these trajectories to retain the spatial and temporal information in the markers. Using a Support Vector Machine with a linear kernel, a classification rate of 95.8% was obtained. This classification approach also allowed visualisation …
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