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A wavelet tensor fuzzy clustering scheme for multi-sensor human activity recognition

机译:用于多传感器人类活动识别的小波张量模糊聚类方案

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摘要

With the increasing number of wearable sensors and mobile devices, human activity recognition (HAR) based on multiple sensors has attracted more and more attention in recent years. On account of the diversity of human actions, the analysis of multivariate signals of activities is still a challenging task. Clustering is an unsupervised classification technique which can directly work on unlabeled data and automatically identify unknown activities. Therefore, a new wavelet tensor fuzzy clustering scheme (WTFCS) for multi-sensor activity recognition is proposed in this paper. Firstly, feature tensors of multiple activity signals are constructed using the discrete wavelet packet transform (DWPT). Then Multilinear Principal Component Analysis (MPCA) is utilized to reduce the dimensionality of feature tensors so as to keep the inherent data structure. On the basis of the principal feature initialization and the tensor fuzzy membership, a new fuzzy clustering (PTFC) is developed to identify different activity feature tensor groups. Finally, the open HAR dataset (DSAD) is used to verify the efficiency of the WTFCS. Clustering results of seventeen activities of eight subjects show that potential useful features of human activities can be captured through combining DWPT-based feature extraction with MPCA-based dimensionality reduction. The PTFC is capable of discriminating various human activities effectively. Its correctness rate of activity recognition is higher than those of fuzzy c-means clustering and the fuzzy clustering based on the tensor distance.
机译:随着可穿戴式传感器和移动设备的数量不断增加,基于多个传感器的人类活动识别(HAR)近年来引起了越来越多的关注。由于人类行为的多样性,对活动的多元信号进行分析仍然是一项艰巨的任务。聚类是一种无监督的分类技术,可以直接处理未标记的数据并自动识别未知活动。因此,提出了一种新的用于多传感器活动识别的小波张量模糊聚类方案。首先,使用离散小波包变换(DWPT)构造多个活动信号的特征张量。然后利用多线性主成分分析(MPCA)来减少特征张量的维数,从而保持固有的数据结构。在主特征初始化和张量模糊隶属度的基础上,开发了一种新的模糊聚类(PTFC)来识别不同的活动特征张量组。最后,开放式HAR数据集(DSAD)用于验证WTFCS的效率。八个对象的十七项活动的聚类结果表明,通过将基于DWPT的特征提取与基于MPCA的降维相结合,可以捕获人类活动的潜在有用特征。 PTFC能够有效地区分各种人类活动。其活动识别的正确率要高于模糊c均值聚类和基于张量距离的模糊聚类。

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