Robust Automated Human Activity Recognition and its Application to Sleep Research
Aarti Sathyanarayana, Ferda Ofli, Luis Fernandes-Luque, Jaideep, Srivastava, Ahmed Elmagarmid, Teresa Arora, Shahrad Taheri

TL;DR
This paper introduces RAHAR, a robust automated human activity recognition algorithm, which enhances sleep research analysis and can be applied to various health conditions, improving accuracy over existing methods.
Contribution
The paper presents a novel automated HAR algorithm, RAHAR, specifically designed for sleep research, with significant improvements in classification performance.
Findings
Improved sleep quality evaluation accuracy by 15% in ROC AUC.
Enhanced F1 score by 30% compared to previous methods.
Applicable to various health conditions beyond sleep analysis.
Abstract
Human Activity Recognition (HAR) is a powerful tool for understanding human behaviour. Applying HAR to wearable sensors can provide new insights by enriching the feature set in health studies, and enhance the personalisation and effectiveness of health, wellness, and fitness applications. Wearable devices provide an unobtrusive platform for user monitoring, and due to their increasing market penetration, feel intrinsic to the wearer. The integration of these devices in daily life provide a unique opportunity for understanding human health and wellbeing. This is referred to as the "quantified self" movement. The analyses of complex health behaviours such as sleep, traditionally require a time-consuming manual interpretation by experts. This manual work is necessary due to the erratic periodicity and persistent noisiness of human behaviour. In this paper, we present a robust automated…
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