Deep Learning in Human Activity Recognition with Wearable Sensors: A
Review on Advances
- URL: http://arxiv.org/abs/2111.00418v1
- Date: Sun, 31 Oct 2021 07:16:23 GMT
- Title: Deep Learning in Human Activity Recognition with Wearable Sensors: A
Review on Advances
- Authors: Shibo Zhang, Yaxuan Li, Shen Zhang, Farzad Shahabi, Stephen Xia, Yu
Deng and Nabil Alshurafa
- Abstract summary: Deep learning has greatly pushed the boundaries of human activity recognition on mobile and wearable devices.
This paper systematically categorizes and summarizes existing work that introduces deep learning methods for wearables-based HAR.
We also present cutting-edge frontiers and future directions for deep learning--based HAR.
- Score: 8.642789007878479
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Mobile and wearable devices have enabled numerous applications, including
activity tracking, wellness monitoring, and human-computer interaction, that
measure and improve our daily lives. Many of these applications are made
possible by leveraging the rich collection of low-power sensors found in many
mobile and wearable devices to perform human activity recognition (HAR).
Recently, deep learning has greatly pushed the boundaries of HAR on mobile and
wearable devices. This paper systematically categorizes and summarizes existing
work that introduces deep learning methods for wearables-based HAR and provides
a comprehensive analysis of the current advancements, developing trends, and
major challenges. We also present cutting-edge frontiers and future directions
for deep learning--based HAR.
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