Remote Pulse Estimation in the Presence of Face Masks

IEEE Conference on Computer Vision and Pattern Recognition(2022)

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摘要
Remote photoplethysmography (rPPG), a family of techniques for monitoring blood volume changes, may be especially useful for contactless health monitoring via face videos from consumer-grade cameras. The COVID-19 pandemic caused widespread use of protective face masks, which results in a domain shift from the typical region of interest. In this paper we show that augmenting unmasked face videos by adding patterned synthetic face masks forces the deep learning-based rPPG model to attend to the periocular and forehead regions, improving performance and closing the gap between masked and unmasked pulse estimation. This paper offers several novel contributions: (a) deep learning-based method designed for remote photoplethysmography in a presence of face masks, (b) new dataset acquired from 54 masked subjects with recordings of their face and ground-truth pulse waveforms, (c) data augmentation method to add a synthetic mask to a face video, and (d) evaluations of handcrafted algorithms and two 3D convolutional neural network-based architectures trained on videos of unmasked faces and with masks synthetically added.
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关键词
face video,consumer-grade cameras,COVID-19 pandemic,protective face masks,augmenting unmasked face videos,synthetic face masks forces,deep learning-based rPPG model,periocular forehead regions,masked pulse estimation,unmasked pulse estimation,deep learning-based method,remote photoplethysmography,54 masked subjects,ground-truth pulse waveforms,data augmentation method,synthetic mask,unmasked faces,remote pulse estimation,blood volume changes,contactless health monitoring
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