HOT: Harmonic-Constrained Optimal Transport for Remote Photoplethysmography Domain Adaptation

arXiv cs.CV / 4/3/2026

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Key Points

  • The paper tackles performance degradation in remote photoplethysmography (rPPG) when models face domain shifts like changes in illumination, camera characteristics, and color response.
  • It introduces frequency domain adaptation (FDA) to transfer low-frequency spectral components that capture appearance-related variations, encouraging rPPG models to become invariant to such factors while preserving cardiac signals.
  • It further proposes Harmonic-Constrained Optimal Transport (HOT), using the harmonic structure of cardiac signals to achieve physiologically consistent alignment between original and FDA-transferred representations.
  • Cross-dataset experiments show that the combined FDA+HOT framework improves robustness and generalization of rPPG models across diverse datasets.
  • Overall, the work presents a principled approach that separates appearance variation modeling (frequency-based) from signal-preserving alignment (harmonic-constrained transport) to reduce overfitting to domain-specific visual cues.

Abstract

Remote photoplethysmography (rPPG) enables non-contact physiological measurement from facial videos; however, its practical deployment is often hindered by substantial performance degradation under domain shift. While recent deep learning-based rPPG methods have achieved strong performance on individual datasets, they frequently overfit to appearance-related factors, such as illumination, camera characteristics, and color response, that vary significantly across domains. To address this limitation, we introduce frequency domain adaptation (FDA) as a principled strategy for modeling appearance variation in rPPG. By transferring low-frequency spectral components that encode domain-dependent appearance characteristics, FDA encourages rPPG models to learn invariance to appearance variations while retaining cardiac-induced signals. To further support physiologically consistent alignment under such appearance variation, we propose Harmonic-Constrained Optimal Transport (HOT), which leverages the harmonic property of cardiac signals to guide alignment between original and FDA-transferred representations. Extensive cross-dataset experiments demonstrate that the proposed FDA and HOT framework effectively enhances the robustness and generalization of rPPG models across diverse datasets.