Cargando…

A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions

Surveillance of sleeping posture is essential for bed-ridden patients or individuals at-risk of falling out of bed. Existing sleep posture monitoring and classification systems may not be able to accommodate the covering of a blanket, which represents a barrier to conducting pragmatic studies. The o...

Descripción completa

Detalles Bibliográficos
Autores principales: Tam, Andy Yiu-Chau, So, Bryan Pak-Hei, Chan, Tim Tin-Chun, Cheung, Alyssa Ka-Yan, Wong, Duo Wai-Chi, Cheung, James Chung-Wai
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8402261/
https://www.ncbi.nlm.nih.gov/pubmed/34450994
http://dx.doi.org/10.3390/s21165553
_version_ 1783745746862866432
author Tam, Andy Yiu-Chau
So, Bryan Pak-Hei
Chan, Tim Tin-Chun
Cheung, Alyssa Ka-Yan
Wong, Duo Wai-Chi
Cheung, James Chung-Wai
author_facet Tam, Andy Yiu-Chau
So, Bryan Pak-Hei
Chan, Tim Tin-Chun
Cheung, Alyssa Ka-Yan
Wong, Duo Wai-Chi
Cheung, James Chung-Wai
author_sort Tam, Andy Yiu-Chau
collection PubMed
description Surveillance of sleeping posture is essential for bed-ridden patients or individuals at-risk of falling out of bed. Existing sleep posture monitoring and classification systems may not be able to accommodate the covering of a blanket, which represents a barrier to conducting pragmatic studies. The objective of this study was to develop an unobtrusive sleep posture classification that could accommodate the use of a blanket. The system uses an infrared depth camera for data acquisition and a convolutional neural network to classify sleeping postures. We recruited 66 participants (40 men and 26 women) to perform seven major sleeping postures (supine, prone (head left and right), log (left and right) and fetal (left and right)) under four blanket conditions (thick, medium, thin, and no blanket). Data augmentation was conducted by affine transformation and data fusion, generating additional blanket conditions with the original dataset. Coarse-grained (four-posture) and fine-grained (seven-posture) classifiers were trained using two fully connected network layers. For the coarse classification, the log and fetal postures were merged into a side-lying class and the prone class (head left and right) was pooled. The results show a drop of overall F1-score by 8.2% when switching to the fine-grained classifier. In addition, compared to no blanket, a thick blanket reduced the overall F1-scores by 3.5% and 8.9% for the coarse- and fine-grained classifiers, respectively; meanwhile, the lowest performance was seen in classifying the log (right) posture under a thick blanket, with an F1-score of 72.0%. In conclusion, we developed a system that can classify seven types of common sleeping postures under blankets and achieved an F1-score of 88.9%.
format Online
Article
Text
id pubmed-8402261
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-84022612021-08-29 A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions Tam, Andy Yiu-Chau So, Bryan Pak-Hei Chan, Tim Tin-Chun Cheung, Alyssa Ka-Yan Wong, Duo Wai-Chi Cheung, James Chung-Wai Sensors (Basel) Article Surveillance of sleeping posture is essential for bed-ridden patients or individuals at-risk of falling out of bed. Existing sleep posture monitoring and classification systems may not be able to accommodate the covering of a blanket, which represents a barrier to conducting pragmatic studies. The objective of this study was to develop an unobtrusive sleep posture classification that could accommodate the use of a blanket. The system uses an infrared depth camera for data acquisition and a convolutional neural network to classify sleeping postures. We recruited 66 participants (40 men and 26 women) to perform seven major sleeping postures (supine, prone (head left and right), log (left and right) and fetal (left and right)) under four blanket conditions (thick, medium, thin, and no blanket). Data augmentation was conducted by affine transformation and data fusion, generating additional blanket conditions with the original dataset. Coarse-grained (four-posture) and fine-grained (seven-posture) classifiers were trained using two fully connected network layers. For the coarse classification, the log and fetal postures were merged into a side-lying class and the prone class (head left and right) was pooled. The results show a drop of overall F1-score by 8.2% when switching to the fine-grained classifier. In addition, compared to no blanket, a thick blanket reduced the overall F1-scores by 3.5% and 8.9% for the coarse- and fine-grained classifiers, respectively; meanwhile, the lowest performance was seen in classifying the log (right) posture under a thick blanket, with an F1-score of 72.0%. In conclusion, we developed a system that can classify seven types of common sleeping postures under blankets and achieved an F1-score of 88.9%. MDPI 2021-08-18 /pmc/articles/PMC8402261/ /pubmed/34450994 http://dx.doi.org/10.3390/s21165553 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Tam, Andy Yiu-Chau
So, Bryan Pak-Hei
Chan, Tim Tin-Chun
Cheung, Alyssa Ka-Yan
Wong, Duo Wai-Chi
Cheung, James Chung-Wai
A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions
title A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions
title_full A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions
title_fullStr A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions
title_full_unstemmed A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions
title_short A Blanket Accommodative Sleep Posture Classification System Using an Infrared Depth Camera: A Deep Learning Approach with Synthetic Augmentation of Blanket Conditions
title_sort blanket accommodative sleep posture classification system using an infrared depth camera: a deep learning approach with synthetic augmentation of blanket conditions
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8402261/
https://www.ncbi.nlm.nih.gov/pubmed/34450994
http://dx.doi.org/10.3390/s21165553
work_keys_str_mv AT tamandyyiuchau ablanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT sobryanpakhei ablanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT chantimtinchun ablanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT cheungalyssakayan ablanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT wongduowaichi ablanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT cheungjameschungwai ablanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT tamandyyiuchau blanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT sobryanpakhei blanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT chantimtinchun blanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT cheungalyssakayan blanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT wongduowaichi blanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions
AT cheungjameschungwai blanketaccommodativesleeppostureclassificationsystemusinganinfrareddepthcameraadeeplearningapproachwithsyntheticaugmentationofblanketconditions