SPLGJan 17, 2023

Sleep Activity Recognition and Characterization from Multi-Source Passively Sensed Data

arXiv:2301.10156v12 citationsh-index: 24
Originality Incremental advance
AI Analysis

This work addresses sleep assessment for health monitoring by providing a non-invasive alternative to traditional methods, though it is incremental as it builds on existing sensor-based approaches.

The authors tackled the problem of sleep activity recognition by proposing a method using passively sensed smartphone data to characterize sleep and identify significant episodes, validating it against wearable sleep metrics to prove effectiveness.

Sleep constitutes a key indicator of human health, performance, and quality of life. Sleep deprivation has long been related to the onset, development, and worsening of several mental and metabolic disorders, constituting an essential marker for preventing, evaluating, and treating different health conditions. Sleep Activity Recognition methods can provide indicators to assess, monitor, and characterize subjects' sleep-wake cycles and detect behavioral changes. In this work, we propose a general method that continuously operates on passively sensed data from smartphones to characterize sleep and identify significant sleep episodes. Thanks to their ubiquity, these devices constitute an excellent alternative data source to profile subjects' biorhythms in a continuous, objective, and non-invasive manner, in contrast to traditional sleep assessment methods that usually rely on intrusive and subjective procedures. A Heterogeneous Hidden Markov Model is used to model a discrete latent variable process associated with the Sleep Activity Recognition task in a self-supervised way. We validate our results against sleep metrics reported by tested wearables, proving the effectiveness of the proposed approach and advocating its use to assess sleep without more reliable sources.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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