Unsupervised UAV 3D Trajectories Estimation with Sparse Point Clouds

Autor: Liang, Hanfang, Yang, Yizhuo, Hu, Jinming, Yang, Jianfei, Liu, Fen, Yuan, Shenghai
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: Compact UAV systems, while advancing delivery and surveillance, pose significant security challenges due to their small size, which hinders detection by traditional methods. This paper presents a cost-effective, unsupervised UAV detection method using spatial-temporal sequence processing to fuse multiple LiDAR scans for accurate UAV tracking in real-world scenarios. Our approach segments point clouds into foreground and background, analyzes spatial-temporal data, and employs a scoring mechanism to enhance detection accuracy. Tested on a public dataset, our solution placed 4th in the CVPR 2024 UG2+ Challenge, demonstrating its practical effectiveness. We plan to open-source all designs, code, and sample data for the research community github.com/lianghanfang/UnLiDAR-UAV-Est.
Comment: Paper Accepted for ICASSP 2025
Databáze: arXiv