Ultra-Wideband Radar-Based Sleep Stage Classification in Smartphone Using an End-to-End Deep Learning
Abstract
As an increasing number of people suffer from sleep disorders, such as insomnia or sleep
apnea, sleep monitoring and management using consumer devices have gained increasing attention from
research communities. As sleep quality is closely related to sleep structure based on hypnograms, the
classification of sleep stages over the course of the night is important for accurate sleep monitoring.
We present sleep stage classification using a smartphone equipped with ultra-wideband (UWB) radar.
We focused on the development of easily accessible sleep monitoring system for the general population by
placing the smartphone on a table near a bed, which is commonly used during sleep.We collected 509 nights
ofUWBradar and nocturnal in-laboratory polysomnography (PSG) data from various participants, including
patients with apnea, using a customized Samsung Galaxy smartphone with a UWB radar chip placed on
a table near the bed. A combination of 1D convolutional neural network and transformer architecture was
proposed in this study, and a domain adaptation techniquewas applied to train the model with both large-scale
respiratory signals from open database PSGs and UWB radar data to boost the performance by overcoming
the lack of UWB radar data. With 5-fold validation, an epoch-by-epoch comparison between the predicted
and expert-annotated four sleep stages (Wake, REM sleep, light sleep, and deep sleep) resulted in 0.76 of
accuracy and 0.64 of Cohen’s kappa. This study demonstrated that sleep stages can be monitored with
substantial accuracy by simply placing a smartphone on a bedtable, making it highly usable and reliable
in real use cases.