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A machine learning approach for automated recognition of movement patterns using basic, kinetic and kinematic gait data

机译:一种使用基本,动力学和运动步态数据自动识别运动模式的机器学习方法

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This paper investigated application of a machine learning approach (Support vector machine, SVM) for the automatic recognition of gait changes due to ageing using three types of gait measures: basic temporal/spatial, kinetic and kinematic. The gaits of 12 young and 12 elderly participants were recorded and analysed using a synchronized PEAK motion analysis system and a force platform during normal walking. Altogether, 24 gait features describing the three types of gait characteristics were extracted for developing gait recognition models and later testing of generalization performance. Test results indicated an overall accuracy of 91.7% by the SVM in its capacity to distinguish the two gait patterns. The classification ability of the SVM was found to be unaffected across six kernel functions (linear, polynomial, radial basis, exponential radial basis, multi-layer perceptron and spline). Gait recognition rate improved when features were selected from different gait data type. A feature selection algorithm demonstrated that as little as three gait features, one selected from each data type, could effectively distinguish the age groups with 100% accuracy. These results demonstrate considerable potential in applying SVMs in gait classification for many applications. (C) 2004 Elsevier Ltd. All rights reserved.
机译:本文研究了一种机器学习方法(支持向量机,SVM)的应用,该方法使用三种类型的步态测量方法自动识别由于衰老引起的步态变化:基本的时间/空间,运动和运动学。记录并分析了12名年轻和12名老年参与者的步态,并在正常步行过程中使用同步的PEAK运动分析系统和测力平台进行了分析。总共提取了描述三种类型步态特征的24个步态特征,以开发步态识别模型并随后测试泛化性能。测试结果表明,SVM能够区分两种步态的总体准确度为91.7%。发现支持向量机的分类能力在六个核函数(线性,多项式,径向基,指数径向基,多层感知器和样条)上不受影响。从不同步态数据类型中选择特征时,步态识别率提高。一种特征选择算法表明,从每种数据类型中选择一种,只有三种步态特征可以100%的准确性有效地区分年龄组。这些结果证明了在许多应用中将SVM应用在步态分类中的巨大潜力。 (C)2004 Elsevier Ltd.保留所有权利。

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