Recognizing the activities of daily living (ADLs) in multi-inhabitant settings is a challenging task. One of the major challenges is the so-called data association problem: how to assign to each user the environmental sensor events that he/she actually triggered? In this paper, we tackle this problem with a contextaware approach. Each user in the home wears a smartwatch, which is used to gather several high-level context information, like the location in the home (thanks to a micro-localization infrastructure) and the posture (e.g., sitting or standing). Context data is used to associate sensor events to the users which more likely triggered them. We show the impact of context reasoning in our framework on a dataset where up to 4 subjects perform ADLs at the same time (collaboratively or individually). We also report our experience and the lessons learned in deploying a running prototype of our method.
Context-Aware Data Association for Multi-Inhabitant Sensor-Based Activity Recognition / L. Arrotta, C. Bettini, G. Civitarese, R. Presotto - In: 2020 21st IEEE International Conference on Mobile Data Management (MDM)[s.l] : IEEE, 2020. - ISBN 9781728146638. - pp. 125-130 (( Intervento presentato al 21. convegno MDM tenutosi a Versailles nel 2020 [10.1109/MDM48529.2020.00034].
Context-Aware Data Association for Multi-Inhabitant Sensor-Based Activity Recognition
C. Bettini;G. Civitarese
;R. Presotto
2020
Abstract
Recognizing the activities of daily living (ADLs) in multi-inhabitant settings is a challenging task. One of the major challenges is the so-called data association problem: how to assign to each user the environmental sensor events that he/she actually triggered? In this paper, we tackle this problem with a contextaware approach. Each user in the home wears a smartwatch, which is used to gather several high-level context information, like the location in the home (thanks to a micro-localization infrastructure) and the posture (e.g., sitting or standing). Context data is used to associate sensor events to the users which more likely triggered them. We show the impact of context reasoning in our framework on a dataset where up to 4 subjects perform ADLs at the same time (collaboratively or individually). We also report our experience and the lessons learned in deploying a running prototype of our method.File | Dimensione | Formato | |
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