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Main Authors: Deng, Tianchen, Zhou, Yi, Wu, Wenhua, Li, Mingrui, Huang, Jingwei, Liu, Shuhong, Song, Yanzeng, Zuo, Hao, Wang, Yanbo, Yue, Yutao, Wang, Hesheng, Chen, Weidong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.16464
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author Deng, Tianchen
Zhou, Yi
Wu, Wenhua
Li, Mingrui
Huang, Jingwei
Liu, Shuhong
Song, Yanzeng
Zuo, Hao
Wang, Yanbo
Yue, Yutao
Wang, Hesheng
Chen, Weidong
author_facet Deng, Tianchen
Zhou, Yi
Wu, Wenhua
Li, Mingrui
Huang, Jingwei
Liu, Shuhong
Song, Yanzeng
Zuo, Hao
Wang, Yanbo
Yue, Yutao
Wang, Hesheng
Chen, Weidong
contents This technical report presents the 1st winning model for UG2+, a task in CVPR 2024 UAV Tracking and Pose-Estimation Challenge. This challenge faces difficulties in drone detection, UAV-type classification and 2D/3D trajectory estimation in extreme weather conditions with multi-modal sensor information, including stereo vision, various Lidars, Radars, and audio arrays. Leveraging this information, we propose a multi-modal UAV detection, classification, and 3D tracking method for accurate UAV classification and tracking. A novel classification pipeline which incorporates sequence fusion, region of interest (ROI) cropping, and keyframe selection is proposed. Our system integrates cutting-edge classification techniques and sophisticated post-processing steps to boost accuracy and robustness. The designed pose estimation pipeline incorporates three modules: dynamic points analysis, a multi-object tracker, and trajectory completion techniques. Extensive experiments have validated the effectiveness and precision of our approach. In addition, we also propose a novel dataset pre-processing method and conduct a comprehensive ablation study for our design. We finally achieved the best performance in the classification and tracking of the MMUAD dataset. The code and configuration of our method are available at https://github.com/dtc111111/Multi-Modal-UAV.
format Preprint
id arxiv_https___arxiv_org_abs_2405_16464
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-Modal UAV Detection, Classification and Tracking Algorithm -- Technical Report for CVPR 2024 UG2 Challenge
Deng, Tianchen
Zhou, Yi
Wu, Wenhua
Li, Mingrui
Huang, Jingwei
Liu, Shuhong
Song, Yanzeng
Zuo, Hao
Wang, Yanbo
Yue, Yutao
Wang, Hesheng
Chen, Weidong
Robotics
Computer Vision and Pattern Recognition
This technical report presents the 1st winning model for UG2+, a task in CVPR 2024 UAV Tracking and Pose-Estimation Challenge. This challenge faces difficulties in drone detection, UAV-type classification and 2D/3D trajectory estimation in extreme weather conditions with multi-modal sensor information, including stereo vision, various Lidars, Radars, and audio arrays. Leveraging this information, we propose a multi-modal UAV detection, classification, and 3D tracking method for accurate UAV classification and tracking. A novel classification pipeline which incorporates sequence fusion, region of interest (ROI) cropping, and keyframe selection is proposed. Our system integrates cutting-edge classification techniques and sophisticated post-processing steps to boost accuracy and robustness. The designed pose estimation pipeline incorporates three modules: dynamic points analysis, a multi-object tracker, and trajectory completion techniques. Extensive experiments have validated the effectiveness and precision of our approach. In addition, we also propose a novel dataset pre-processing method and conduct a comprehensive ablation study for our design. We finally achieved the best performance in the classification and tracking of the MMUAD dataset. The code and configuration of our method are available at https://github.com/dtc111111/Multi-Modal-UAV.
title Multi-Modal UAV Detection, Classification and Tracking Algorithm -- Technical Report for CVPR 2024 UG2 Challenge
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.16464