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Main Authors: He, Chenming, Xia, Rui, Meng, Chengzhen, Fan, Xiaoran, Wang, Dequan, Ren, Haojie, Ji, Jianmin, Zhang, Yanyong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.06639
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author He, Chenming
Xia, Rui
Meng, Chengzhen
Fan, Xiaoran
Wang, Dequan
Ren, Haojie
Ji, Jianmin
Zhang, Yanyong
author_facet He, Chenming
Xia, Rui
Meng, Chengzhen
Fan, Xiaoran
Wang, Dequan
Ren, Haojie
Ji, Jianmin
Zhang, Yanyong
contents Vehicle detection in tunnels is crucial for traffic monitoring and accident response, yet remains underexplored. In this paper, we develop mmTunnel, a millimeter-wave radar system that achieves far-range vehicle detection in tunnels. The main challenge here is coping with ghost points caused by multi-path reflections, which lead to severe localization errors and false alarms. Instead of merely removing ghost points, we propose correcting them to true vehicle positions by recovering their signal reflection paths, thus reserving more data points and improving detection performance, even in occlusion scenarios. However, recovering complex 3D reflection paths from limited 2D radar points is highly challenging. To address this problem, we develop a multi-path ray tracing algorithm that leverages the ground plane constraint and identifies the most probable reflection path based on signal path loss and spatial distance. We also introduce a curve-to-plane segmentation method to simplify tunnel surface modeling such that we can significantly reduce the computational delay and achieve real-time processing. We have evaluated mmTunnel with comprehensive experiments. In two test tunnels, we conducted controlled experiments in various scenarios with cars and trucks. Our system achieves an average F1 score of 93.7% for vehicle detection while maintaining real-time processing. Even in the challenging occlusion scenarios, the F1 score remains above 91%. Moreover, we collected extensive data from a public tunnel with heavy traffic at times and show our method could achieve an F1 score of 91.5% in real-world traffic conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2509_06639
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Ghost Points Matter: Far-Range Vehicle Detection with a Single mmWave Radar in Tunnel
He, Chenming
Xia, Rui
Meng, Chengzhen
Fan, Xiaoran
Wang, Dequan
Ren, Haojie
Ji, Jianmin
Zhang, Yanyong
Networking and Internet Architecture
Vehicle detection in tunnels is crucial for traffic monitoring and accident response, yet remains underexplored. In this paper, we develop mmTunnel, a millimeter-wave radar system that achieves far-range vehicle detection in tunnels. The main challenge here is coping with ghost points caused by multi-path reflections, which lead to severe localization errors and false alarms. Instead of merely removing ghost points, we propose correcting them to true vehicle positions by recovering their signal reflection paths, thus reserving more data points and improving detection performance, even in occlusion scenarios. However, recovering complex 3D reflection paths from limited 2D radar points is highly challenging. To address this problem, we develop a multi-path ray tracing algorithm that leverages the ground plane constraint and identifies the most probable reflection path based on signal path loss and spatial distance. We also introduce a curve-to-plane segmentation method to simplify tunnel surface modeling such that we can significantly reduce the computational delay and achieve real-time processing. We have evaluated mmTunnel with comprehensive experiments. In two test tunnels, we conducted controlled experiments in various scenarios with cars and trucks. Our system achieves an average F1 score of 93.7% for vehicle detection while maintaining real-time processing. Even in the challenging occlusion scenarios, the F1 score remains above 91%. Moreover, we collected extensive data from a public tunnel with heavy traffic at times and show our method could achieve an F1 score of 91.5% in real-world traffic conditions.
title Ghost Points Matter: Far-Range Vehicle Detection with a Single mmWave Radar in Tunnel
topic Networking and Internet Architecture
url https://arxiv.org/abs/2509.06639