TL;DR
This paper introduces a novel, accurate, and lightweight non-contact video processing algorithm for infant sleep apnea detection, addressing limitations of existing methods and enabling deployment on simple hardware.
Contribution
The paper presents a new non-contact video-based algorithm for infant sleep apnea detection that is both accurate and suitable for low-resource devices.
Findings
High accuracy on real data
Lightweight algorithm suitable for single board computers
Advantages over existing non-contact methods
Abstract
Sleep apnea is a breathing disorder where a person repeatedly stops breathing in sleep. Early detection is crucial for infants because it might bring long term adversities. The existing accurate detection mechanism (pulse oximetry) is a skin contact measurement. The existing non-contact mechanisms (acoustics, video processing) are not accurate enough. This paper presents a novel algorithm for the detection of sleep apnea with video processing. The solution is non-contact, accurate and lightweight enough to run on a single board computer. The paper discusses the accuracy of the algorithm on real data, advantages of the new algorithm, its limitations and suggests future improvements.
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