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Main Authors: Bhat, Nabeel Nisar, Karnaukh, Maksim, Vandenbroeke, Stein, Lemoine, Wouter, Struye, Jakob, Lacruz, Jesus Omar, Kumar, Siddhartha, Moghaddam, Mohammad Hossein, Widmer, Joerg, Berkvens, Rafael, Famaey, Jeroen
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.21396
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author Bhat, Nabeel Nisar
Karnaukh, Maksim
Vandenbroeke, Stein
Lemoine, Wouter
Struye, Jakob
Lacruz, Jesus Omar
Kumar, Siddhartha
Moghaddam, Mohammad Hossein
Widmer, Joerg
Berkvens, Rafael
Famaey, Jeroen
author_facet Bhat, Nabeel Nisar
Karnaukh, Maksim
Vandenbroeke, Stein
Lemoine, Wouter
Struye, Jakob
Lacruz, Jesus Omar
Kumar, Siddhartha
Moghaddam, Mohammad Hossein
Widmer, Joerg
Berkvens, Rafael
Famaey, Jeroen
contents This article presents mmHSense, a set of open labeled mmWave datasets to support human sensing research within Integrated Sensing and Communication (ISAC) systems. The datasets can be used to explore mmWave ISAC for various end applications such as gesture recognition, person identification, pose estimation, and localization. Moreover, the datasets can be used to develop and advance signal processing and deep learning research on mmWave ISAC. This article describes the testbed, experimental settings, and signal features for each dataset. Furthermore, the utility of the datasets is demonstrated through validation on a specific downstream task. In addition, we demonstrate the use of parameter-efficient fine-tuning to adapt ISAC models to different tasks, significantly reducing computational complexity while maintaining performance on prior tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2509_21396
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle mmHSense: Multi-Modal and Distributed mmWave ISAC Datasets for Human Sensing
Bhat, Nabeel Nisar
Karnaukh, Maksim
Vandenbroeke, Stein
Lemoine, Wouter
Struye, Jakob
Lacruz, Jesus Omar
Kumar, Siddhartha
Moghaddam, Mohammad Hossein
Widmer, Joerg
Berkvens, Rafael
Famaey, Jeroen
Computer Vision and Pattern Recognition
Machine Learning
This article presents mmHSense, a set of open labeled mmWave datasets to support human sensing research within Integrated Sensing and Communication (ISAC) systems. The datasets can be used to explore mmWave ISAC for various end applications such as gesture recognition, person identification, pose estimation, and localization. Moreover, the datasets can be used to develop and advance signal processing and deep learning research on mmWave ISAC. This article describes the testbed, experimental settings, and signal features for each dataset. Furthermore, the utility of the datasets is demonstrated through validation on a specific downstream task. In addition, we demonstrate the use of parameter-efficient fine-tuning to adapt ISAC models to different tasks, significantly reducing computational complexity while maintaining performance on prior tasks.
title mmHSense: Multi-Modal and Distributed mmWave ISAC Datasets for Human Sensing
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2509.21396