Improving Heart Rate Estimation on Consumer Grade Wrist-Worn Device Using Post-Calibration Approach
Tanut Choksatchawathi, Puntawat Ponglertnapakorn, Apiwat Ditthapron,, Pitshaporn Leelaarporn, Thayakorn Wisutthisen, Maytus Piriyajitakonkij and, Theerawit Wilaiprasitporn

TL;DR
This study presents a post-calibration method to improve heart rate estimation accuracy from wrist-worn devices across various daily activity states, significantly reducing errors compared to standard measurements.
Contribution
The paper introduces a novel post-calibration approach using rolling window features to enhance HR estimation accuracy on multiple consumer wearable devices during different activities.
Findings
Significant error reduction in HR estimation across all activity states.
Effective correction method applicable to multiple popular wearable devices.
Demonstrated feasibility of post-calibration for personalized fitness monitoring.
Abstract
The technological advancement in wireless health monitoring through the direct contact of the skin allows the development of light-weight wrist-worn wearable devices to be equipped with different sensors such as photoplethysmography (PPG) sensors. However, the motion artifact (MA) is possible to occur during daily activities. In this study, we attempted to perform a post-calibration of the heart rate (HR) estimation during the three possible states of average daily activity (resting, \textcolor{red}{laying down}, and intense treadmill activity states) in 29 participants (130 minutes/person) on four popular wearable devices: Fitbit Charge HR, Apple Watch Series 4, TicWatch Pro, and Empatica E4. In comparison to the standard measurement (HR), HR provided by Fitbit Charge HR (HR) yielded the highest error of bpm in resting, bpm…
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