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Feature Extraction of Autism Gait Data Using Principal Component Analysis and Linear Discriminant Analysis

机译:使用主成分分析和线性判别分析特征提取自闭症步态数据

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In this research, the application of machine learning approach specifically support vector machine along with principal component analysis and linear discriminant analysis as feature extractions are evaluated and validated in discriminating gait features between normal subjects and autism children. Gait features of 32 normal and 12 autism children were recorded and analyzed using VICON motion analysis system and a force platform during normal walking. Here, twenty one gait features describing the three types of gait characteristics namely basic, kinetic and kinematic in these children are extracted. Further, with these gait features as input during classification, the ability of SVM as classifier are investigated using three different kernel functions specifically linear, polynomial, and radial basis. Results showed that LDA as feature extraction is the highest accuracy with kinematic parameters as gait features along with polynomial function as kernel for the SVM classifier. This finding proven that LDA is suitable as feature extraction and SVM is indeed apt as gait classifier in classifying the gait pattern autism and normal children.
机译:在这项研究中,机器学习方法特别支持向量机连同主成分分析和线性判别分析作为特征提取应用程序进行评估,并在判别步态正常受试者和孤独症患儿之间设有验证。 32正常和12名孤独症患儿被记录,并使用正常步行时VICON运动分析系统和力平台分析的步态特征。在这里,21步态特征描述的三种类型的步态特征,即基本,动力学和运动学这些儿童被提取。此外,与这些步态分级期间作为输入要素,SVM的分类器作为能力是使用三种不同的核函数具体线性,多项式,径向基调查。结果表明,LDA特征提取与运动学参数与多项式函数为内核的SVM分类沿着步态特征的精确度最高。这一发现证明,LDA适合作为特征提取和SVM是在步行模式孤独症儿童和正常儿童步态分类分级确实贴切。

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