Human Activity Recognition in WSN: A Comparative Study

M. A. Awan, Guangbin Zheng, Cheong-Ghil Kim, Shin-Dug Kim
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引用次数: 7

Abstract

Human activity recognition is an emerging field of ubiquitous and pervasive computing. Although recent smartphones have powerful resources, the execution of machine learning algorithms on a large amount of data is still a burden on smartphones. Three major factors including; classification algorithm, data feature, and smartphone position influence the recognition accuracy and time. In this paper, we present a comparative study of six classification algorithms, six data features, and four different positions that are most commonly used in the recognition process using smartphone accelerometer. This analysis can be used to select any specific classification algorithm, data feature, and smartphone position for human activity recognition in terms of accuracy and response time. The methodology we used is composed of two major components; a data collector, and a classifier. A set of eleven activities of daily living, four different positions for data collection and ten volunteers contributed to make it a worth-full comparative study. Results show that K-Nearest Neighbor and J48 algorithms performed well both in terms of time and accuracy irrespective of data features whereas the performance of other algorithms is dependent on the selected data features. Similarly, mean and mode features gave good results in terms of accuracy irrespective of the classification algorithm. A short version of the paper has already been presented at ICIS 2014.
无线传感器网络中人类活动识别的比较研究
人类活动识别是一个新兴的普适计算领域。尽管最近的智能手机拥有强大的资源,但在大量数据上执行机器学习算法仍然是智能手机的负担。三个主要因素包括;分类算法、数据特征和智能手机位置影响识别的准确性和时间。本文对智能手机加速度计识别过程中最常用的六种分类算法、六种数据特征和四种不同位置进行了比较研究。该分析可用于选择任何特定的分类算法、数据特征和智能手机位置,以便在准确性和响应时间方面进行人类活动识别。我们使用的方法由两个主要部分组成;一个数据收集器和一个分类器。一组11项日常生活活动,4个不同位置的数据收集和10名志愿者的贡献使其成为一个有价值的比较研究。结果表明,无论数据特征如何,k -最近邻算法和J48算法在时间和精度方面都表现良好,而其他算法的性能取决于所选择的数据特征。同样,无论采用何种分类算法,均值和模式特征在准确率方面都给出了很好的结果。该论文的简短版本已经在ICIS 2014上展示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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