Video-based SpO2 Estimation in Multi-scenarios via Wavelength-guided Image Feature Enhancement
Abstract: Video-based physiological signal monitoring using RGB cameras has attracted increasing attention due to its convenience, low cost, and non-contact nature. Owing to the limited spectral information available in the visible spectrum and the difficulty of capturing oxygen-related cues, video-based blood oxygen saturation (SpO2) estimation remains immature. To address the aforementioned challenges, this study builds upon the optical absorption characteristics of SpO2-related components in the near-infrared range and identifies several visible-wavelength bands that exhibit similar absorption behaviors within the visible spectrum. To further enhance the representation of these wavelength-related characteristics in RGB images, we propose a standard colorimetric distance–guided image feature enhancement method, whose effectiveness is validated through auxiliary experiments involving spectral imaging. The enhanced spatiotemporal representations are then fed into a lightweight deep neural network for accurate SpO2 estimation. We construct a real-world ICU SpO2 dataset, providing a valuable benchmark for algorithm development and evaluation. Experimental results demonstrate that the proposed method achieves superior performance on both public and in-house datasets.
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