On multi-resident activity recognition in ambient smart-homes

被引:0
作者
Son N. Tran
Dung Nguyen
Tung-Son Ngo
Xuan-Son Vu
Long Hoang
Qing Zhang
Mohan Karunanithi
机构
[1] University of Tasmania,Department of Computer Science
[2] Duy Tan University,Department of Computing Science
[3] FPT University,The Australian E
[4] Umeå University,Health Research Centre
[5] Posts and Telecommunications Institute of Technology,undefined
[6] CSIRO,undefined
来源
Artificial Intelligence Review | 2020年 / 53卷
关键词
Multiresident activity; Pervasive computing; Smart homes;
D O I
暂无
中图分类号
学科分类号
摘要
Increasing attention to the research on activity monitoring in smart homes has motivated the employment of ambient intelligence to reduce the deployment cost and solve the privacy issue. Several approaches have been proposed for multi-resident activity recognition, however, there still lacks a comprehensive benchmark for future research and practical selection of models. In this paper, we study different methods for multi-resident activity recognition and evaluate them on the same sets of data. In particular, we explore the effectiveness and efficiency of temporal learning algorithms using sequential data and non-temporal learning algorithms using temporally-manipulated features. In the experiments we compare and analyse the results of the studied methods using datasets from three smart homes.
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页码:3929 / 3945
页数:16
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