Respiratory Rate Estimation from Thermal Video Data Using Spatio-Temporal Deep Learning
Mohsen Mozafari,
Andrew J. Law,
Rafik A. Goubran
et al.
Abstract:Thermal videos provide a privacy-preserving yet information-rich data source for remote health monitoring, especially for respiration rate (RR) estimation. This paper introduces an end-to-end deep learning approach to RR measurement using thermal video data. A detection transformer (DeTr) first finds the subject’s facial region of interest in each thermal frame. A respiratory signal is estimated from a dynamically cropped thermal video using 3D convolutional neural networks and bi-directional long short-term m… Show more
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