基于MEMS数据的无监督和有监督学习算法的人体步态模式分类

My-Nhi Nguyen, J. Zao, T. Nguyen
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引用次数: 0

摘要

随着内置微机电系统(MEMS)传感器的智能手机和可穿戴设备的普及,几乎可以随时随地收集线加速度和角速度的数据样本。这些运动数据可以用来识别各种类型的人体运动,并检测个人运动的异常。这项工作提出了使用无监督亲和传播(AP)聚类算法和监督支持向量机(SVM)分类算法来识别四种类型的人类步态运动:步行,慢跑,爬上楼和下楼。通过分析特征值在不同运动类型之间的变化,选择了能够使算法正确识别这些运动类型的三维线加速度特征。通过比较亲和传播(Affinity Propagation, AP)、线性和非线性支持向量机(Support Vector Machine, SVM)算法的正确率、假阳性率、假阴性率和F1评分分类率,研究了它们的有效性。初步研究表明,线性支持向量机的性能最好,其次是亲和性传播。令人惊讶的是,非线性支持向量机似乎不如其他两种算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Gait Patterns Classification based on MEMS Data using Unsupervised and Supervised Learning Algorithms
With the proliferation of smartphones and wearable devices having Micro-Electro-Mechanical Systems (MEMS) sensors built in, data samples of linear acceleration and angular velocity can be collected almost anytime anywhere. These motion data can be used to identify various types of human motions and to detect the anomaly of individuals movements. This work presents attempts to use the unsupervised Affinity Propagation (AP) clustering algorithm and the supervised Support Vector Machine (SVM) classification algorithm to identify four types of human gait motions: walking, jogging, climbing upstairs and downstairs. Features of three-dimensional linear acceleration that can enable the algorithms to identify these motion types correctly were selected by analyzing the variation of the feature values among different motion types. Efficacy of Affinity Propagation (AP), Linear and Non-linear Support Vector Machine (SVM) algorithms were also studied by comparing their ratios of correct, false positive, false negative and F1 score classification. This preliminary study demonstrated Linear SVM achieved the best performance, followed by Affinity Propagation. Quite surprisingly, Non-linear SVM appeared to be inferior to the other two algorithms.
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