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Proceedings ArticleDOI

AI-enabled Wi-Fi Network to Estimate Human Sleep Quality based on Intensity of Movements

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TLDR
In this article, the authors presented the preliminary results of the sleep quality estimation based on rollovers through an Artificial Intelligence enabled Wi-Fi network, where the rollovers made by the subject on the bed during sleep can be observed with the proposed method of sleep monitoring and a corresponding movement score is created.
Abstract
Due to increase in number of wireless devices for the development of smarter spaces such as offices, homes etc, Wi-Fi devices are available as off-the-shelf sensing devices Researchers are looking for various sensing applications which can make reuse of already installed devices to make the human life easy Wireless human sensing (WHS) has evolved as a field of study of interaction between the human body and on-going wireless communication to extract various human activities, such as sleep, without attaching any sensor to the body Sleep is an important part of human life and a quality sleep is essential for healthy being Due to various sleep disorders and physiological conditions quality sleep is obstructed It is essential to monitor the sleep to estimate quality of the sleep so the remedial measures can be taken thereof The movements viz of limbs turns and rollovers made by the subject on the bed during the sleep can be observed with the proposed method of sleep monitoring and a corresponding movement score is created This is for the first time when the sleep quality is being estimated on the basis of this score by using WHS We present here optimistic prelim results of the sleep quality estimation based on rollovers through an Artificial Intelligence enabled Wi-Fi network

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References
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Journal ArticleDOI

Quantity and Quality of Sleep and Incidence of Type 2 Diabetes A systematic review and meta-analysis

TL;DR: Quality of sleep consistently and significantly predict the risk of the development of type 2 diabetes and the mechanisms underlying this relation may differ between short and long sleepers.
Proceedings ArticleDOI

Contactless Sleep Apnea Detection on Smartphones

TL;DR: A novel system that monitors the minute chest and abdomen movements caused by breathing on smartphones that works with the phone away from the subject and can simultaneously identify and track the fine-grained breathing movements from multiple subjects and develops algorithms that identify various sleep apnea events from the sonar reflections.
Proceedings ArticleDOI

Wi-Sleep: Contactless Sleep Monitoring via WiFi Signals

TL;DR: It is shown that with off-the-shelf WiFi devices, fine-grained sleep information like a person's respiration, sleeping postures and rollovers can be successfully extracted.
Journal ArticleDOI

Contactless Respiration Monitoring Via Off-the-Shelf WiFi Devices

TL;DR: This paper shows that with off-the-shelf WiFi devices, fine-grained respiration information of a person under different sleeping positions can be extracted successfully and introduced a breath monitoring system based on WiFi signals.
Proceedings ArticleDOI

Toss 'n' turn: smartphone as sleep and sleep quality detector

TL;DR: The rapid adoption of smartphones along with a growing habit for using these devices as alarm clocks presents an opportunity to use this device as a sleep detector, and individual models performed better than generally trained models on detecting sleep and sleep quality.
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