Contactless Blood Oxygen Saturation Estimation from Facial Videos Using Deep Learning

Author:

Cheng Chun-Hong1ORCID,Yuen Zhikun2,Chen Shutao3,Wong Kwan-Long3,Chin Jing-Wei3,Chan Tsz-Tai3,So Richard H. Y.34

Affiliation:

1. Department of Electrical and Electronic Engineering, Imperial College London, London SW7 2AZ, UK

2. Department of Computer Science, University of Ottawa, Ottawa, ON K1H 8M5, Canada

3. PanopticAI, Hong Kong Science and Technology Parks, New Territories, Hong Kong, China

4. Department of Industrial Engineering and Decision Analytics, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, China

Abstract

Blood oxygen saturation (SpO2) is an essential physiological parameter for evaluating a person’s health. While conventional SpO2 measurement devices like pulse oximeters require skin contact, advanced computer vision technology can enable remote SpO2 monitoring through a regular camera without skin contact. In this paper, we propose novel deep learning models to measure SpO2 remotely from facial videos and evaluate them using a public benchmark database, VIPL-HR. We utilize a spatial–temporal representation to encode SpO2 information recorded by conventional RGB cameras and directly pass it into selected convolutional neural networks to predict SpO2. The best deep learning model achieves 1.274% in mean absolute error and 1.71% in root mean squared error, which exceed the international standard of 4% for an approved pulse oximeter. Our results significantly outperform the conventional analytical Ratio of Ratios model for contactless SpO2 measurement. Results of sensitivity analyses of the influence of spatial–temporal representation color spaces, subject scenarios, acquisition devices, and SpO2 ranges on the model performance are reported with explainability analyses to provide more insights for this emerging research field.

Funder

the Innovation Technology Commission of Hong Kong

HKSTP incubation program

Publisher

MDPI AG

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3. Adochiei, F., Rotariu, C., Ciobotariu, R., and Costin, H. (2011, January 12). A wireless low-power pulse oximetry system for patient telemonitoring. Proceedings of the 2011 7th International Symposium on Advanced Topics in Electrical Engineering (ATEE), Bucharest, Romania.

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