基于混合支持向量机和自回归模型的老年人步态障碍检测

D. Lai, A. Khandoker, R. Begg, M. Palaniswami
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引用次数: 11

摘要

老年人绊倒和跌倒的后果是严重的,因为会发生危及生命的骨折,并产生高昂的医疗费用。最近,最小脚趾间隙(MTC)作为一种敏感的步态变量被用于步态分析,用于早期发现老年人跌倒风险。在之前的工作中,我们成功地将统计和小波分析方法与支持向量机(SVM)应用于老年人绊倒风险建模。在这项工作中,我们建议使用自回归(AR)过程将MTC时间序列建模为宽基平稳随机信号。最初,研究人员发现,由23名受试者的512个MTC样本构建的四阶AR模型完全模拟了正常步态的平衡受损步态(病理)。然而,当MTC样本数量减少到32个时,两组就变得不可分了。然后,我们提出了一个混合系统,该系统由一个支持向量机分类器组成,以AR模型系数作为输入特征来分离两类。研究发现,具有线性和高斯核的支持向量机在不需要事先的特征选择算法的情况下产生100%的leave one out准确率。相比之下,以前从最佳小波特征集构建的SVM模型只产生了86.95%,遗漏了一个精度。这些结果表明,如果有足够的MTC数据,AR过程可以最好地模拟病理步态。在MTC数据较短的情况下,AR模型仍然提供了强大且鲁棒的判别特征,支持向量机可以使用这些特征来检测有跌倒风险的老年人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid Support Vector Machine and autoregressive model for detecting gait disorders in the elderly
The consequence of tripping and falling in the elderly population is serious because of the life threatening fractures which occur and the high medical costs incurred. Recently, the minimum toe clearance (MTC) has been employed in gait analysis as a sensitive gait variable for early detection of elderly people at risk of falling. In previous work, we successfully applied statistical and wavelet analysis methods with Support Vector Machines (SVM) to model the risk of tripping in the elderly. In this work, we propose to model the MTC time series as a wide based stationary random signal using the autoregressive (AR) process. Initially, it was found that a fourth order AR model constructed from 512 MTC samples per subject on 23 subjects completely modelled the balance impaired gait (pathological) from normal gait. However, when the number of MTC samples were reduced to 32, the two groups became inseparable. We then proposed a hybrid system consisting of a SVM classifier with AR model coefficients as input features to separate the two classes. It was found that SVMs with linear and Gaussian kernels produced 100% leave one out accuracies without the need for prior feature selection algorithms. In contrast, SVM models built previously from the best set of wavelet features produced only 86.95% leave one out accuracies. These results suggest that pathological gait is best modelled by the AR process if sufficient MTC data is available. In the case of shorter MTC data, the AR model still provides powerful and robust discriminative features which can be used by the SVM to detect elderly people at risk of falling.
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