基于聚类的高斯混沌映射粒子群算法在人体活动识别中的自动标记

Bo-Yan Lin, Che-Nan Kuo, Yu-Da Lin
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引用次数: 0

摘要

人体活动识别(HAR)由于对普适计算的重要贡献而成为一个重要的研究领域。为了在HAR中训练基于机器学习的实用模型,需要大量的样本收集传感器信息,并将每个样本标记为属于特定的活动。因此,设计一种高效的标注方法是HAR的重要研究课题之一。在这项研究中,我们采用了一种基于高斯混沌映射粒子群优化(GCMPSO)的有效聚类方法来提高自动标记结果的准确性。采用步行、坐着、站立、上楼、下楼、躺着等6种人类活动561个特征对GCMPSO聚类方法进行评价。通过K-means和GCMPSO聚类方法自动标记这六个活动的结果。结果表明,GCMPSO聚类方法在HAR中的自动标注性能优于K-means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。
A Clustering-Based Gauss Chaotic Mapping Particle Swarm Optimization for Auto Labeling in Human Activity Recognition
Human activity recognition (HAR) has become a vital research field owing to its significant contribution to pervasive computing. In order to train practical models based on machine learning in HAR, a large number of samples need to collect sensor information and mark each sample as belonging to a specific activity. Therefore, designing an efficient labeling method is one of the important research topics in HAR. In this study, we applied an effective clustering method based on Gauss chaotic mapping particle swarm optimization (GCMPSO) to improve the accuracy of automatic labeling results. Six human activities with 561 features were used to evaluate the GCMPSO clustering method, including walking, sitting, standing, walking upstairs, walking downstairs, and lying in repose. The results of these six activities were automatically labeled by K-means and GCMPSO clustering methods. Our results show that the automatic labeling performance of the GCMPSO clustering method in HAR is superior to the K-means algorithm.
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