Using Artificial Intelligence for Some Activity Recognition and Anomaly Identification Using a Multi-Sensor Based Smart Home System
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Date
2025-06-09
Authors
Advisor
Morita, Plinio
Journal Title
Journal ISSN
Volume Title
Publisher
University of Waterloo
Abstract
Ambient Assisted Living (AAL) research frequently contends with limitations including
reliance on supervised data, lack of personalization and interpretability, and evaluations
in artificial laboratory settings. This study aimed to address these gaps by developing an
unsupervised, personalized, and interpretable AAL system using low-cost sensors for long-
term, real-world activity recognition and behavioural anomaly detection. A multi-modal
sensor network (including contact, vibration, outlet, air quality sensors) was deployed in a
single participant’s apartment for over 90 days. Primarily unsupervised machine learning
techniques, augmented with interpretability methods (SHAP), were used to identify key ac-
tivities (cooking, couch-sitting, showering) and detect personalized behavioural deviations.
Minimally supervised approaches for showering detection were also accurately achieved
using humidity data to address the shortcomings of unsupervised showering model. More
importantly, the system effectively identified interpretable anomalies demonstrating the
model’s capability to learn the individual’s normal behaviour in the home and identify
anomalies, representing significant deviations from the participant’s established routines.
In addition, the model was also able to be interpretable that allowed for the participant to
understand why each anomaly occured. This study confirms the feasibility of leveraging
unsupervised, interpretable methods with affordable sensors for personalized, ecologically
valid AAL, significantly reducing labelling dependence and enhancing system trustworthi-
ness for scalable, unobtrusive health monitoring.
Description
Keywords
ambient assisted living, machine learning, anomaly detection, multi-modal sensor system