Repository logo
  • English
  • Deutsch
  • Español
  • Français
  • Log In
    New user? Click here to register.Have you forgotten your password?
Universidad Panamericana
  • Communities & Collections
  • Research Outputs
  • Fundings & Projects
  • Researchers
  • Statistics
  • Feedback
  • English
  • Deutsch
  • Español
  • Français
  1. Home
  2. CRIS
  3. Publications
  4. Non-Contact Oxygen Saturation Estimation Using Deep Learning Ensemble Models and Bayesian Optimization
 
  • Details
Options

Non-Contact Oxygen Saturation Estimation Using Deep Learning Ensemble Models and Bayesian Optimization

Journal
Technologies
ISSN
2227-7080
Publisher
MDPI AG
Date Issued
2025
Author(s)
Escobedo Gordillo, Andrés Emiliano
Facultad de Ingeniería - CampCM  
Brieva, Jorge  
Facultad de Ingeniería - CampCM  
Moya-Albor, Ernesto  
Facultad de Ingeniería - CampCM  
Type
text::journal::journal article
DOI
10.3390/technologies13070309
URL
https://scripta.up.edu.mx/handle/20.500.12552/12297
Abstract
Monitoring Peripheral Oxygen Saturation (SpO2) is an important vital sign both in Intensive Care Units (ICUs), during surgery and convalescence, and as part of remote medical consultations after of the COVID-19 pandemic. This has made the development of new SpO2-measurement tools an area of active research and opportunity. In this paper, we present a new Deep Learning (DL) combined strategy to estimate SpO2 without contact, using pre-magnified facial videos to reveal subtle color changes related to blood flow and with no calibration per subject required. We applied the Eulerian Video Magnification technique using the Hermite Transform (EVM-HT) as a feature detector to feed a Three-Dimensional Convolutional Neural Network (3D-CNN). Additionally, parameters and hyperparameter Bayesian optimization and an ensemble technique over the dataset magnified were applied. We tested the method on 18 healthy subjects, where facial videos of the subjects, including the automatic detection of the reference from a contact pulse oximeter device, were acquired. As performance metrics for the SpO2-estimation proposal, we calculated the Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), and other parameters from the Bland–Altman (BA) analysis with respect to the reference. Therefore, a significant improvement was observed by adding the ensemble technique with respect to the only optimization, obtaining 14.32% in RMSE (reduction from 0.6204 to 0.5315) and 13.23% in MAE (reduction from 0.4323 to 0.3751). On the other hand, regarding Bland–Altman analysis, the upper and lower limits of agreement for the Mean of Differences (MOD) between the estimation and the ground truth were 1.04 and −1.05, with an MOD (bias) of −0.00175; therefore, MOD ±1.96𝜎
= −0.00175 ± 1.04. Thus, by leveraging Bayesian optimization for hyperparameter tuning and integrating a Bagging Ensemble, we achieved a significant reduction in the training error (bias), achieving a better generalization over the test set, and reducing the variance in comparison with the baseline model for SpO2 estimation. ©The authors ©Technologies ©MDPI.
Subjects

Peripheral oxygen sat...

SpO2

Contactless monitorin...

Motion magnification

Hermite Transform

Deep learning

rPPG

3D-CNN

Hyperparameter Bayesi...

Bagging Ensemble tech...

License
Acceso Abierto
URL License
https://creativecommons.org/licenses/by-nc-sa/4.0/
How to cite
Escobedo-Gordillo, A., Brieva, J., & Moya-Albor, E. (2025). Non-Contact Oxygen Saturation Estimation Using Deep Learning Ensemble Models and Bayesian Optimization. Technologies, 13(7), 309. https://doi.org/10.3390/technologies13070309

Copyright 2024 Universidad Panamericana
Términos y condiciones | Política de privacidad | Reglamento General

Built with DSpace-CRIS software - Extension maintained and optimized by - Hosting & support SCImago Lab

  • Cookie settings
  • Privacy policy
  • End User Agreement
  • Send Feedback