Abstract

Sleep quality is an important determinant of human health and wellbeing. Novel technologies that can quantify sleep quality at scale are required to enable the diagnosis and epidemiology of poor sleep. One important indicator of sleep quality is body posture. In this paper, we present the design and implementation of a non-contact sleep monitoring system that analyses body posture and movement. Supervised machine learning strategies applied to noncontact vision-based infrared camera data using a transfer learning approach, successfully quantified sleep poses of participants covered by a blanket. This represents the first occasion that such a machine learning approach has been used to successfully detect four predefined poses and the empty bed state during 8-10 hour overnight sleep episodes representing a realistic domestic sleep situation. The methodology was evaluated against manually scored sleep poses and poses estimated using clinical polysomnography measurement technology. In a cohort of 12 healthy participants, we find that a ResNet-152 pre-trained network achieved the best performance compared with the standard de novo CNN network and other pre-trained networks. The performance of our approach was better than other video-based methods for sleep pose estimation and produced higher performance compared to the clinical standard for pose estimation using a polysomnography position sensor. It can be concluded that infrared video capture coupled with deep learning AI can be successfully used to quantify sleep poses as well as the transitions between poses in realistic nocturnal conditions, and that this non-contact approach provides superior pose estimation compared to currently accepted clinical methods.

Highlights

  • S LEEP plays an important role in physical and mental health and is a major determinant of well-being [1]

  • By the use of transfer learning in the convolutional neural networks (CNN) model, we propose that knowledge learned in identifying everyday objects within ImageNet database [15] can be used in our task of sleep pose classification

  • The evaluation of supervised classification of sleep poses in our cohort of 12 participants during sleep is divided into three sections: the first section includes analysis of the influence of various CNN architectures for classification of five states using data obtained from a simple 2D IR camera system; the second section compares the performance of deep learning (DL) video scoring and standard PSG-position sensor for body pose and empty bed detection

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Summary

Introduction

S LEEP plays an important role in physical and mental health and is a major determinant of well-being [1]. Medical Research Council, the Alzheimer’s Society, and the Alzheimer’s Research U.K. (Corresponding author: Sara Mahvash Mohammadi.)

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