A block-sparse model in the time-frequency domain enables adaptive separation of time-varying rPPG signals from illumination noise.
Time-varying rPPG signal separation via block-sparse signal model
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abstract
Remote photoplethysmography (rPPG) enables non-contact measurement of cardiac pulse signals by analyzing subtle color changes in facial videos. Nevertheless, extracting rPPG signals remains challenging because of their extremely weak signal strength and susceptibility to illumination noise. In this paper, we propose an rPPG signal extraction method that exploits the quasi-periodic characteristics of rPPG signals. Our approach models quasi-periodicity of the rPPG signal, which arises from the stable cardiac cycle, as a block-sparse structure in the time-frequency domain. To incorporate a block-sparse model and enable adaptive signal separation under illumination fluctuations, we construct a time-varying signal separation framework. Experiments using a public dataset demonstrate the effectiveness of our method.
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Time-varying rPPG signal separation via block-sparse signal model
A block-sparse model in the time-frequency domain enables adaptive separation of time-varying rPPG signals from illumination noise.