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Main Authors: Tamai, Shintaro, Numao, Masayuki, Fukui, Ken-ichi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.10299
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author Tamai, Shintaro
Numao, Masayuki
Fukui, Ken-ichi
author_facet Tamai, Shintaro
Numao, Masayuki
Fukui, Ken-ichi
contents Recently, growing health awareness, novel methods allow individuals to monitor sleep at home. Utilizing sleep sounds offers advantages over conventional methods like smartwatches, being non-intrusive, and capable of detecting various physiological activities. This study aims to construct a machine learning-based sleep assessment model providing evidence-based assessments, such as poor sleep due to frequent movement during sleep onset. Extracting sleep sound events, deriving latent representations using VAE, clustering with GMM, and training LSTM for subjective sleep assessment achieved a high accuracy of 94.8% in distinguishing sleep satisfaction. Moreover, TimeSHAP revealed differences in impactful sound event types and timings for different individuals.
format Preprint
id arxiv_https___arxiv_org_abs_2404_10299
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Clustering and Data Augmentation to Improve Accuracy of Sleep Assessment and Sleep Individuality Analysis
Tamai, Shintaro
Numao, Masayuki
Fukui, Ken-ichi
Machine Learning
Artificial Intelligence
Sound
Audio and Speech Processing
Recently, growing health awareness, novel methods allow individuals to monitor sleep at home. Utilizing sleep sounds offers advantages over conventional methods like smartwatches, being non-intrusive, and capable of detecting various physiological activities. This study aims to construct a machine learning-based sleep assessment model providing evidence-based assessments, such as poor sleep due to frequent movement during sleep onset. Extracting sleep sound events, deriving latent representations using VAE, clustering with GMM, and training LSTM for subjective sleep assessment achieved a high accuracy of 94.8% in distinguishing sleep satisfaction. Moreover, TimeSHAP revealed differences in impactful sound event types and timings for different individuals.
title Clustering and Data Augmentation to Improve Accuracy of Sleep Assessment and Sleep Individuality Analysis
topic Machine Learning
Artificial Intelligence
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2404.10299