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Main Authors: Huang, Teng, Ding, Han, Sun, Wenxin, Zhao, Cui, Wang, Ge, Wang, Fei, Zhao, Kun, Wang, Zhi, Xi, Wei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.21122
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author Huang, Teng
Ding, Han
Sun, Wenxin
Zhao, Cui
Wang, Ge
Wang, Fei
Zhao, Kun
Wang, Zhi
Xi, Wei
author_facet Huang, Teng
Ding, Han
Sun, Wenxin
Zhao, Cui
Wang, Ge
Wang, Fei
Zhao, Kun
Wang, Zhi
Xi, Wei
contents Wireless sensing systems, particularly those using mmWave technology, offer distinct advantages over traditional vision-based approaches, such as enhanced privacy and effectiveness in poor lighting conditions. These systems, leveraging FMCW signals, have shown success in human-centric applications like localization, gesture recognition, and so on. However, comprehensive mmWave datasets for diverse applications are scarce, often constrained by pre-processed signatures (e.g., point clouds or RA heatmaps) and inconsistent annotation formats. To overcome these limitations, we propose mmGen, a novel and generalized framework tailored for full-scene mmWave signal generation. By constructing physical signal transmission models, mmGen synthesizes human-reflected and environment-reflected mmWave signals from the constructed 3D meshes. Additionally, we incorporate methods to account for material properties, antenna gains, and multipath reflections, enhancing the realism of the synthesized signals. We conduct extensive experiments using a prototype system with commercial mmWave devices and Kinect sensors. The results show that the average similarity of Range-Angle and micro-Doppler signatures between the synthesized and real-captured signals across three different environments exceeds 0.91 and 0.89, respectively, demonstrating the effectiveness and practical applicability of mmGen.
format Preprint
id arxiv_https___arxiv_org_abs_2503_21122
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle One Snapshot is All You Need: A Generalized Method for mmWave Signal Generation
Huang, Teng
Ding, Han
Sun, Wenxin
Zhao, Cui
Wang, Ge
Wang, Fei
Zhao, Kun
Wang, Zhi
Xi, Wei
Computer Vision and Pattern Recognition
Wireless sensing systems, particularly those using mmWave technology, offer distinct advantages over traditional vision-based approaches, such as enhanced privacy and effectiveness in poor lighting conditions. These systems, leveraging FMCW signals, have shown success in human-centric applications like localization, gesture recognition, and so on. However, comprehensive mmWave datasets for diverse applications are scarce, often constrained by pre-processed signatures (e.g., point clouds or RA heatmaps) and inconsistent annotation formats. To overcome these limitations, we propose mmGen, a novel and generalized framework tailored for full-scene mmWave signal generation. By constructing physical signal transmission models, mmGen synthesizes human-reflected and environment-reflected mmWave signals from the constructed 3D meshes. Additionally, we incorporate methods to account for material properties, antenna gains, and multipath reflections, enhancing the realism of the synthesized signals. We conduct extensive experiments using a prototype system with commercial mmWave devices and Kinect sensors. The results show that the average similarity of Range-Angle and micro-Doppler signatures between the synthesized and real-captured signals across three different environments exceeds 0.91 and 0.89, respectively, demonstrating the effectiveness and practical applicability of mmGen.
title One Snapshot is All You Need: A Generalized Method for mmWave Signal Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.21122