Saved in:
Bibliographic Details
Main Authors: Lin, Mingzhi, Huang, Teng, Ding, Han, Zhao, Cui, Wang, Fei, Wang, Ge, Xi, Wei
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.04219
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908633042780160
author Lin, Mingzhi
Huang, Teng
Ding, Han
Zhao, Cui
Wang, Fei
Wang, Ge
Xi, Wei
author_facet Lin, Mingzhi
Huang, Teng
Ding, Han
Zhao, Cui
Wang, Fei
Wang, Ge
Xi, Wei
contents Human Activity Recognition (HAR) using mmWave radar provides a non-invasive alternative to traditional sensor-based methods but suffers from domain shift, where model performance declines in new users, positions, or environments. To address this, we propose mmADA, an Active Domain Adaptation (ADA) framework that efficiently adapts mmWave-based HAR models with minimal labeled data. mmADA enhances adaptation by introducing Renyi Entropy-based uncertainty estimation to identify and label the most informative target samples. Additionally, it leverages contrastive learning and pseudo-labeling to refine feature alignment using unlabeled data. Evaluations with a TI IWR1443BOOST radar across multiple users, positions, and environments show that mmADA achieves over 90% accuracy in various cross-domain settings. Comparisons with five baselines confirm its superior adaptation performance, while further tests on unseen users, environments, and two additional open-source datasets validate its robustness and generalization.
format Preprint
id arxiv_https___arxiv_org_abs_2511_04219
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Active Domain Adaptation for mmWave-based HAR via Renyi Entropy-based Uncertainty Estimation
Lin, Mingzhi
Huang, Teng
Ding, Han
Zhao, Cui
Wang, Fei
Wang, Ge
Xi, Wei
Human-Computer Interaction
Human Activity Recognition (HAR) using mmWave radar provides a non-invasive alternative to traditional sensor-based methods but suffers from domain shift, where model performance declines in new users, positions, or environments. To address this, we propose mmADA, an Active Domain Adaptation (ADA) framework that efficiently adapts mmWave-based HAR models with minimal labeled data. mmADA enhances adaptation by introducing Renyi Entropy-based uncertainty estimation to identify and label the most informative target samples. Additionally, it leverages contrastive learning and pseudo-labeling to refine feature alignment using unlabeled data. Evaluations with a TI IWR1443BOOST radar across multiple users, positions, and environments show that mmADA achieves over 90% accuracy in various cross-domain settings. Comparisons with five baselines confirm its superior adaptation performance, while further tests on unseen users, environments, and two additional open-source datasets validate its robustness and generalization.
title Active Domain Adaptation for mmWave-based HAR via Renyi Entropy-based Uncertainty Estimation
topic Human-Computer Interaction
url https://arxiv.org/abs/2511.04219