Harmonic Sum-based Method for Heart Rate Estimation using PPG Signals Affected with Motion Artifacts
Harishchandra Dubey, Ramdas Kumaresan, Kunal Mankodiya

TL;DR
This paper introduces a harmonic sum-based method for estimating heart rate from PPG signals affected by motion artifacts, utilizing accelerometer data to improve accuracy in wearable devices.
Contribution
It proposes a novel joint harmonic sum model that leverages accelerometer signals to effectively separate heart rate from motion artifacts in PPG data.
Findings
Mean absolute error of 0.736 BPM in HR estimation
Outperforms four recent methods on the same dataset
Accurately estimates HR during motion using harmonic sum modeling
Abstract
Wearable photoplethysmography (WPPG) has recently become a common technology in heart rate (HR) monitoring. General observation is that the motion artifacts change the statistics of the acquired PPG signal. Consequently, estimation of HR from such a corrupted PPG signal is challenging. However, if an accelerometer is also used to acquire the acceleration signal simultaneously, it can provide helpful information that can be used to reduce the motion artifacts in the PPG signal. By dint of repetitive movements of the subjects hands while running, the accelerometer signal is found to be quasi-periodic. Over short-time intervals, it can be modeled by a finite harmonic sum (HSUM). Using the harmonic sum (HSUM) model, we obtain an estimate of the instantaneous fundamental frequency of the accelerometer signal. Since the PPG signal is a composite of the heart rate information (that is also…
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Taxonomy
TopicsNon-Invasive Vital Sign Monitoring · ECG Monitoring and Analysis · Heart Rate Variability and Autonomic Control
