2024
DOI: 10.1109/comst.2023.3334269
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Machine Learning for Healthcare Radars: Recent Progresses in Human Vital Sign Measurement and Activity Recognition

Shahzad Ahmed,
Sung Ho Cho

Abstract: The unprecedented non-contact, non-invasive, and privacy-preserving nature of radar sensors has enabled various healthcare applications, including vital sign monitoring, fall detection, gait analysis, activity recognition, fitness evaluation, and sleep monitoring. Machine learning (ML) is revolutionizing every domain, with radar-based healthcare being no exception. Progress in the field of healthcare radars and ML is complementing the existing radar-based healthcare industry. This article provides an overview … Show more

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Cited by 12 publications
(1 citation statement)
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“…The purpose [33] of this study was to demonstrate the effect of vital sign observation frequency and alarm settings on alarms in a real-world dataset. Vital signs were obtained from 76 patients admitted to home healthcare programs utilizing the Current Health (CH) platform, which has a wearable that continually measures respiratory rate (RR), pulse rate (PR), and oxygen saturation (SpO2).…”
Section: Framework and Algorithms Of Vital Signs Monitoringmentioning
confidence: 99%
“…The purpose [33] of this study was to demonstrate the effect of vital sign observation frequency and alarm settings on alarms in a real-world dataset. Vital signs were obtained from 76 patients admitted to home healthcare programs utilizing the Current Health (CH) platform, which has a wearable that continually measures respiratory rate (RR), pulse rate (PR), and oxygen saturation (SpO2).…”
Section: Framework and Algorithms Of Vital Signs Monitoringmentioning
confidence: 99%