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Inferring Human Activity in Mobile Devices by Computing Multiple Contexts

This paper introduces a framework for inferring human activities in mobile devices by computing spatial contexts, temporal contexts, spatiotemporal contexts, and user contexts. A spatial context is a significant location that is defined as a geofence, which can be a node associated with a circle, or...

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Detalles Bibliográficos
Autores principales: Chen, Ruizhi, Chu, Tianxing, Liu, Keqiang, Liu, Jingbin, Chen, Yuwei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4610464/
https://www.ncbi.nlm.nih.gov/pubmed/26343665
http://dx.doi.org/10.3390/s150921219
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author Chen, Ruizhi
Chu, Tianxing
Liu, Keqiang
Liu, Jingbin
Chen, Yuwei
author_facet Chen, Ruizhi
Chu, Tianxing
Liu, Keqiang
Liu, Jingbin
Chen, Yuwei
author_sort Chen, Ruizhi
collection PubMed
description This paper introduces a framework for inferring human activities in mobile devices by computing spatial contexts, temporal contexts, spatiotemporal contexts, and user contexts. A spatial context is a significant location that is defined as a geofence, which can be a node associated with a circle, or a polygon; a temporal context contains time-related information that can be e.g., a local time tag, a time difference between geographical locations, or a timespan; a spatiotemporal context is defined as a dwelling length at a particular spatial context; and a user context includes user-related information that can be the user’s mobility contexts, environmental contexts, psychological contexts or social contexts. Using the measurements of the built-in sensors and radio signals in mobile devices, we can snapshot a contextual tuple for every second including aforementioned contexts. Giving a contextual tuple, the framework evaluates the posteriori probability of each candidate activity in real-time using a Naïve Bayes classifier. A large dataset containing 710,436 contextual tuples has been recorded for one week from an experiment carried out at Texas A&M University Corpus Christi with three participants. The test results demonstrate that the multi-context solution significantly outperforms the spatial-context-only solution. A classification accuracy of 61.7% is achieved for the spatial-context-only solution, while 88.8% is achieved for the multi-context solution.
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spelling pubmed-46104642015-10-26 Inferring Human Activity in Mobile Devices by Computing Multiple Contexts Chen, Ruizhi Chu, Tianxing Liu, Keqiang Liu, Jingbin Chen, Yuwei Sensors (Basel) Article This paper introduces a framework for inferring human activities in mobile devices by computing spatial contexts, temporal contexts, spatiotemporal contexts, and user contexts. A spatial context is a significant location that is defined as a geofence, which can be a node associated with a circle, or a polygon; a temporal context contains time-related information that can be e.g., a local time tag, a time difference between geographical locations, or a timespan; a spatiotemporal context is defined as a dwelling length at a particular spatial context; and a user context includes user-related information that can be the user’s mobility contexts, environmental contexts, psychological contexts or social contexts. Using the measurements of the built-in sensors and radio signals in mobile devices, we can snapshot a contextual tuple for every second including aforementioned contexts. Giving a contextual tuple, the framework evaluates the posteriori probability of each candidate activity in real-time using a Naïve Bayes classifier. A large dataset containing 710,436 contextual tuples has been recorded for one week from an experiment carried out at Texas A&M University Corpus Christi with three participants. The test results demonstrate that the multi-context solution significantly outperforms the spatial-context-only solution. A classification accuracy of 61.7% is achieved for the spatial-context-only solution, while 88.8% is achieved for the multi-context solution. MDPI 2015-08-28 /pmc/articles/PMC4610464/ /pubmed/26343665 http://dx.doi.org/10.3390/s150921219 Text en © 2015 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Chen, Ruizhi
Chu, Tianxing
Liu, Keqiang
Liu, Jingbin
Chen, Yuwei
Inferring Human Activity in Mobile Devices by Computing Multiple Contexts
title Inferring Human Activity in Mobile Devices by Computing Multiple Contexts
title_full Inferring Human Activity in Mobile Devices by Computing Multiple Contexts
title_fullStr Inferring Human Activity in Mobile Devices by Computing Multiple Contexts
title_full_unstemmed Inferring Human Activity in Mobile Devices by Computing Multiple Contexts
title_short Inferring Human Activity in Mobile Devices by Computing Multiple Contexts
title_sort inferring human activity in mobile devices by computing multiple contexts
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4610464/
https://www.ncbi.nlm.nih.gov/pubmed/26343665
http://dx.doi.org/10.3390/s150921219
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