基于改进GM-PHD滤波器的无人机目标跟踪技术

Chunying Zhou, Tao Hong, Tao Tang, Ke Zhang, Zhihua Chen
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引用次数: 0

摘要

6G技术与区块链的融合促进了无人机产业的蓬勃发展,但随之而来的国家社会安全问题也引起了公众的关注。针对无人机具有“低、慢、小”、转弯灵活等特点,迫切需要一种能够消除背景杂波、完成多架无人机目标跟踪的技术。目前已有的研究大多倾向于对依赖于检测结果的工艺过程进行跟踪,检测性能较差,容易出现跟踪不稳定。本文在GM-PHD滤波器的基础上,结合机器学习,提出了一种具有高跟踪性能的DGM-PHD滤波器,并通过MATLAB仿真软件对其进行了评价,以OSPA距离为评价指标。结果表明,在匀速直线运动下,DGM-PHD滤波器在多无人机跟踪问题上优于GM-PHD滤波器,取得了较好的跟踪效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UAV Target Tracking Technology Based on Improved GM-PHD Filter
The integration of 6G technology and blockchain has promoted the booming development of UAV industry, but the accompanying national social security issues have also attracted public attention. In view of UAV's characteristics of “low, slow and small” and flexible turning, there is an urgent need for a technology that can eliminate background clutter and complete target tracking of multiple UAVs. At present, most of the existing researches tend to track the technology processing which depends on the detection results, and the detection performance is poor and the tracking instability is easy to occur. Based on GM-PHD filter and combined with machine learning, this paper proposes a DGM-PHD filter with high tracking performance, and evaluates it through MATLAB simulation software, using OSPA distance as evaluation index. The results show that the DGM-PHD filter performs better than the GM-PHD filter in the multi-UAV tracking problem under the uniformly accelerated linear motion, and achieves good tracking effect.
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