Brophy-E / CNNs_HAR_and_HRLinks
This repository is an artifact for the paper "CNNs for Heart Rate Estimation and Human Activity Recognition in Wrist Worn Sensing Applications" submitted to the WristSense workshop as part of PerCom 2020.
☆15Updated 4 years ago
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