Human Robot Collaboration LAB

L_HAR : Lightweight Human Activity Recognition

Goal

To implement and lighten HAR with minimal imu setup.


Summary

This study aims to increase the efficiency of lightweight with on-device efficiency such as model size, number of parameters, and latency, rather than implementing accuracy in imu-based HAR. Therefore, we compare the lightweight results when applying several deep learning models (TCN, LSTM, Transformer).