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Unsupervised Recognition of Multi-Resident Activities in Smart-Homes

Daniele Riboni, Flavia Murru

2020IEEE Access22 citationsDOIOpen Access PDF

Abstract

Several methods have been proposed in the last two decades to recognize human activities based on sensor data acquired in smart-homes. While most existing methods assume the presence of a single inhabitant, a few techniques tackle the challenging issue of multi-resident activity recognition. To the best of our knowledge, all existing methods for multi-inhabitant activity recognition require the acquisition of a labeled training set of activities and sensor events. Unfortunately, activity labeling is costly and may disrupt the users' privacy. In this article, we introduce a novel technique to recognize multi-inhabitant activities without the need of labeled datasets. Our technique relies on an unlabeled sensor data stream acquired from a single resident, and on ontological reasoning to extract probabilistic associations among sensor events and activities. Extensive experiments with a large dataset of multi-inhabitant activities show that our technique achieves an average accuracy very close to the one of state-of-the-art supervised methods, without requiring the acquisition of labeled data.

Topics & Concepts

Activity recognitionComputer scienceProbabilistic logicArtificial intelligenceMachine learningLabeled dataHome automationSet (abstract data type)Activity detectionTraining setSmart environmentData miningPattern recognition (psychology)Internet of ThingsComputer securityTelecommunicationsProgramming languageContext-Aware Activity Recognition SystemsIoT-based Smart Home SystemsIoT and Edge/Fog Computing
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