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Remote Photoplethysmograph Signal Measurement from Facial Videos Using Spatio-Temporal Networks

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Recent studies demonstrated that the average heart rate (HR) can be measured from facial videos based on non-contact remote photoplethysmography (rPPG). However for many medical applications (e.g., atrial fibrillation (AF) detection) knowing only the average HR is not sufficient, and measuring precise rPPG signals from face for heart rate variability (HRV) analysis is needed. Here we propose an rPPG measurement method, which is the first work to use deep spatio-temporal networks for reconstructing precise rPPG signals from raw facial videos. With the constraint of trend-consistency with ground truth pulse curves, our method is able to recover rPPG signals with accurate pulse peaks. Comprehensive experiments are conducted on two benchmark datasets, and results demonstrate that our method can achieve superior performance on both HR and HRV levels comparing to the state-of-the-art methods. We also achieve promising results of using reconstructed rPPG signals for AF detection and emotion recognition.

Zitong Yu, Xiaobai Li, Guoying Zhao• 2019

Related benchmarks

TaskDatasetResultRank
Heart Rate estimationPURE
MAE0.63
132
Heart Rate estimationBUAA
MAE10.89
98
Heart Rate estimationMMPD
MAE4.8
67
Heart Rate estimationUBFC-rPPG
MAE (BPM)2.95
59
Heart Rate estimationUBFC-rPPG (test)
MAE4.043
44
Pulse Rate EstimationVIPL-HR
MAE (BPM)10.8
42
Heart Rate estimationUBFC
MAE0.66
40
Pulse Rate EstimationUBFC-rPPG Intra-dataset
MAE (BPM)2.95
36
Pulse Rate EstimationUBFC-rPPG to PURE (test)
MAE (BPM)1.63
34
Pulse Rate EstimationMMPD
MAE4.8
31
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