CVHCIVSep 3, 2019

Efficient Real-Time Camera Based Estimation of Heart Rate and Its Variability

arXiv:1909.01206v133 citations
Originality Incremental advance
AI Analysis

This enables non-contact monitoring of vital signs for health applications, but it is incremental as it refines existing rPPG methods.

The paper tackles the problem of accurately estimating heart rate and heart rate variability from remote camera data, achieving state-of-the-art results on public datasets like VicarPPG and PURE.

Remote photo-plethysmography (rPPG) uses a remotely placed camera to estimating a person's heart rate (HR). Similar to how heart rate can provide useful information about a person's vital signs, insights about the underlying physio/psychological conditions can be obtained from heart rate variability (HRV). HRV is a measure of the fine fluctuations in the intervals between heart beats. However, this measure requires temporally locating heart beats with a high degree of precision. We introduce a refined and efficient real-time rPPG pipeline with novel filtering and motion suppression that not only estimates heart rate more accurately, but also extracts the pulse waveform to time heart beats and measure heart rate variability. This method requires no rPPG specific training and is able to operate in real-time. We validate our method on a self-recorded dataset under an idealized lab setting, and show state-of-the-art results on two public dataset with realistic conditions (VicarPPG and PURE).

Foundations

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