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Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model

Emerging sleep health technologies will have an impact on monitoring patients with sleep disorders. This study proposes a new deep learning model architecture that improves the under-blanket sleep posture classification accuracy by leveraging the anatomical landmark feature through an attention stra...

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Autores principales: Tam, Andy Yiu-Chau, Zha, Li-Wen, So, Bryan Pak-Hei, Lai, Derek Ka-Hei, Mao, Ye-Jiao, Lim, Hyo-Jung, Wong, Duo Wai-Chi, Cheung, James Chung-Wai
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9603239/
https://www.ncbi.nlm.nih.gov/pubmed/36294072
http://dx.doi.org/10.3390/ijerph192013491
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author Tam, Andy Yiu-Chau
Zha, Li-Wen
So, Bryan Pak-Hei
Lai, Derek Ka-Hei
Mao, Ye-Jiao
Lim, Hyo-Jung
Wong, Duo Wai-Chi
Cheung, James Chung-Wai
author_facet Tam, Andy Yiu-Chau
Zha, Li-Wen
So, Bryan Pak-Hei
Lai, Derek Ka-Hei
Mao, Ye-Jiao
Lim, Hyo-Jung
Wong, Duo Wai-Chi
Cheung, James Chung-Wai
author_sort Tam, Andy Yiu-Chau
collection PubMed
description Emerging sleep health technologies will have an impact on monitoring patients with sleep disorders. This study proposes a new deep learning model architecture that improves the under-blanket sleep posture classification accuracy by leveraging the anatomical landmark feature through an attention strategy. The system used an integrated visible light and depth camera. Deep learning models (ResNet-34, EfficientNet B4, and ECA-Net50) were trained using depth images. We compared the models with and without an anatomical landmark coordinate input generated with an open-source pose estimation model using visible image data. We recruited 120 participants to perform seven major sleep postures, namely, the supine posture, prone postures with the head turned left and right, left- and right-sided log postures, and left- and right-sided fetal postures under four blanket conditions, including no blanket, thin, medium, and thick. A data augmentation technique was applied to the blanket conditions. The data were sliced at an 8:2 training-to-testing ratio. The results showed that ECA-Net50 produced the best classification results. Incorporating the anatomical landmark features increased the F1 score of ECA-Net50 from 87.4% to 92.2%. Our findings also suggested that the classification performances of deep learning models guided with features of anatomical landmarks were less affected by the interference of blanket conditions.
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spelling pubmed-96032392022-10-27 Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model Tam, Andy Yiu-Chau Zha, Li-Wen So, Bryan Pak-Hei Lai, Derek Ka-Hei Mao, Ye-Jiao Lim, Hyo-Jung Wong, Duo Wai-Chi Cheung, James Chung-Wai Int J Environ Res Public Health Article Emerging sleep health technologies will have an impact on monitoring patients with sleep disorders. This study proposes a new deep learning model architecture that improves the under-blanket sleep posture classification accuracy by leveraging the anatomical landmark feature through an attention strategy. The system used an integrated visible light and depth camera. Deep learning models (ResNet-34, EfficientNet B4, and ECA-Net50) were trained using depth images. We compared the models with and without an anatomical landmark coordinate input generated with an open-source pose estimation model using visible image data. We recruited 120 participants to perform seven major sleep postures, namely, the supine posture, prone postures with the head turned left and right, left- and right-sided log postures, and left- and right-sided fetal postures under four blanket conditions, including no blanket, thin, medium, and thick. A data augmentation technique was applied to the blanket conditions. The data were sliced at an 8:2 training-to-testing ratio. The results showed that ECA-Net50 produced the best classification results. Incorporating the anatomical landmark features increased the F1 score of ECA-Net50 from 87.4% to 92.2%. Our findings also suggested that the classification performances of deep learning models guided with features of anatomical landmarks were less affected by the interference of blanket conditions. MDPI 2022-10-18 /pmc/articles/PMC9603239/ /pubmed/36294072 http://dx.doi.org/10.3390/ijerph192013491 Text en © 2022 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
Zha, Li-Wen
So, Bryan Pak-Hei
Lai, Derek Ka-Hei
Mao, Ye-Jiao
Lim, Hyo-Jung
Wong, Duo Wai-Chi
Cheung, James Chung-Wai
Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model
title Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model
title_full Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model
title_fullStr Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model
title_full_unstemmed Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model
title_short Depth-Camera-Based Under-Blanket Sleep Posture Classification Using Anatomical Landmark-Guided Deep Learning Model
title_sort depth-camera-based under-blanket sleep posture classification using anatomical landmark-guided deep learning model
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9603239/
https://www.ncbi.nlm.nih.gov/pubmed/36294072
http://dx.doi.org/10.3390/ijerph192013491
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