基于核特征提取的运动学数据自动步态分类

Jianning Wu
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引用次数: 3

摘要

定量动力学步态数据的分析对医学诊断和早期识别步态不对称具有重要意义。研究了基于核函数的步态特征提取与分类技术在非线性运动步态数据中的应用。其基本思想是利用核主成分分析(KPCA)算法提取步态特征,通过预处理初始化支持向量机(SVM)训练集,使具有较好泛化性能的支持向量机(SVM)识别步态模式。对24名年轻人和24名老年人的步态动力学数据进行分析,采用受试者工作特征(receiver operating characteristic, ROC)图评价步态分类器的泛化性能。结果表明,该方法可以将参与者动力学步态数据结构映射到高维线性可分空间中,步态模式识别准确率达到90%,在未来的临床应用中具有相当大的潜力。
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Kernel-Based Feature Extraction for Automated Gait Classification Using Kinetics Data
The analyzing quantitative kinetics gait data is very important in medical diagnostics as well as in early identification of gait asymmetry. The paper investigated the application of kernel-based technique in kinetic gait data with nonlinear property for gait feature extraction and classification. Its basic idea was that Kernel principal component analysis (KPCA) algorithm was employed to extract gait feature for initiating the training set of support vector machines (SVM) via pre-processing, which SVM with better generalization performance recognized gait patterns. Kinetics gait data of 24 young and 24 elderly participants were analyzed, and the receiver operating characteristic (ROC) plots were adopted to evaluate the generalization performance of gait classifier. The result showed that the proposed approach could map the participantpsilas kinetics gait data structure into a linearly separable space with higher dimension, recognizing gait patterns with 90% accuracy, and has considerable potential for future clinical applications.
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