Integrating Temporal Context into Streaming Data for Human Activity Recognition in Smart Home
Marina Vicini, Martin Rudorfer, Zhuangzhuang Dai, Luis J. Manso

TL;DR
This paper enhances human activity recognition in smart homes by integrating temporal context and location features into sensor data analysis, leading to improved accuracy especially in low-data scenarios.
Contribution
It introduces a novel method that incorporates temporal and location features into HAR, improving recognition accuracy over existing methods.
Findings
Improved accuracy and F1-score in three out of four datasets.
Highest gains observed in low-data regimes.
Effective integration of temporal features enhances HAR performance.
Abstract
With the global population ageing, it is crucial to enable individuals to live independently and safely in their homes. Using ubiquitous sensors such as Passive InfraRed sensors (PIR) and door sensors is drawing increasing interest for monitoring daily activities and facilitating preventative healthcare interventions for the elderly. Human Activity Recognition (HAR) from passive sensors mostly relies on traditional machine learning and includes data segmentation, feature extraction, and classification. While techniques like Sensor Weighting Mutual Information (SWMI) capture spatial context in a feature vector, effectively leveraging temporal information remains a challenge. We tackle this by clustering activities into morning, afternoon, and night, and encoding them into the feature weighting method calculating distinct mutual information matrices. We further propose to extend the…
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