U-FaceBP: Uncertainty-aware Bayesian Ensemble Deep Learning for Face Video-based Blood Pressure Estimation
arXiv cs.CV / 4/30/2026
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Key Points
- The paper introduces U-FaceBP, an uncertainty-aware Bayesian ensemble deep learning approach to estimate blood pressure from face videos using rPPG.
- U-FaceBP explicitly models both aleatoric and epistemic uncertainties via Bayesian neural networks, aiming to improve reliability in remote BP estimation.
- The method uses an ensemble across multiple modalities—rPPG-derived signals, PPG signals derived from face videos, and face images—by combining predictions from multiple BNNs.
- Experiments on two datasets with 1,197 subjects across diverse racial groups show that U-FaceBP outperforms existing state-of-the-art methods.
- The authors demonstrate that the uncertainty outputs can guide modality fusion, support reliability assessment, and help analyze performance differences across racial groups.
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