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Main Authors: Zhang, Haoting, Zhan, Donglin, Lin, Yunduan, He, Jinghai, Zhu, Qing, Shen, Zuo-Jun Max, Zheng, Zeyu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.16395
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author Zhang, Haoting
Zhan, Donglin
Lin, Yunduan
He, Jinghai
Zhu, Qing
Shen, Zuo-Jun Max
Zheng, Zeyu
author_facet Zhang, Haoting
Zhan, Donglin
Lin, Yunduan
He, Jinghai
Zhu, Qing
Shen, Zuo-Jun Max
Zheng, Zeyu
contents In healthcare applications, there is a growing need to develop machine learning models that use data from a single source, such as that from a wrist wearable device, to monitor physical activities, assess health risks, and provide immediate health recommendations or interventions. However, the limitation of using single-source data often compromises the model's accuracy, as it fails to capture the full scope of human activities. While a more comprehensive dataset can be gathered in a lab setting using multiple sensors attached to various body parts, this approach is not practical for everyday use due to the impracticality of wearing multiple sensors. To address this challenge, we introduce a transfer learning framework that optimizes machine learning models for everyday applications by leveraging multi-source data collected in a laboratory setting. We introduce a novel metric to leverage the inherent relationship between these multiple data sources, as they are all paired to capture aspects of the same physical activity. Through numerical experiments, our framework outperforms existing methods in classification accuracy and robustness to noise, offering a promising avenue for the enhancement of daily activity monitoring.
format Preprint
id arxiv_https___arxiv_org_abs_2405_16395
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Daily Physical Activity Monitoring -- Adaptive Learning from Multi-source Motion Sensor Data
Zhang, Haoting
Zhan, Donglin
Lin, Yunduan
He, Jinghai
Zhu, Qing
Shen, Zuo-Jun Max
Zheng, Zeyu
Machine Learning
In healthcare applications, there is a growing need to develop machine learning models that use data from a single source, such as that from a wrist wearable device, to monitor physical activities, assess health risks, and provide immediate health recommendations or interventions. However, the limitation of using single-source data often compromises the model's accuracy, as it fails to capture the full scope of human activities. While a more comprehensive dataset can be gathered in a lab setting using multiple sensors attached to various body parts, this approach is not practical for everyday use due to the impracticality of wearing multiple sensors. To address this challenge, we introduce a transfer learning framework that optimizes machine learning models for everyday applications by leveraging multi-source data collected in a laboratory setting. We introduce a novel metric to leverage the inherent relationship between these multiple data sources, as they are all paired to capture aspects of the same physical activity. Through numerical experiments, our framework outperforms existing methods in classification accuracy and robustness to noise, offering a promising avenue for the enhancement of daily activity monitoring.
title Daily Physical Activity Monitoring -- Adaptive Learning from Multi-source Motion Sensor Data
topic Machine Learning
url https://arxiv.org/abs/2405.16395