被动定位中基于经验模态分解的航迹关联

Kai Lu, Chundong Qi
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引用次数: 0

摘要

在分布式被动定位跟踪系统中,由于被跟踪目标为非合作目标且机动复杂,定位精度较差,子系统观测到的航迹表现为布朗运动航迹。这些航迹特征会严重干扰不同子系统之间的航迹关联。为了解决这一问题,本文提出了基于经验模态分解(EMD)的航迹到航迹关联算法。为了减少目标放置和机动错误的影响,不遵循航迹趋势的组件从每个子系统记录的航迹的每个维度中删除。将剩余的低频分量作为航迹特征,形成航迹运动趋势向量,并建立相关的关联准则。由于相关阈值是自适应的,不需要创建运动模型,因此子系统之间的轨迹关联最终完成。仿真结果表明,该方法能够很好地完成无源系统的轨道连接
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Track association based on the empirical mode decomposition in passive localization
In distributed passive localization and tracking system, the track observed by the subsystem seems like Brownian motion track, because the tracked target is non-cooperative target and its maneuver is often complex, and the localization accuracy is poor. These track characteristics will seriously disturb track association between different subsystems. In order to solve this problem, the track to track association algorithm based on empirical mode decomposition (EMD) is proposed in this article. To lessen the impact of target placement and maneuvering mistakes, components that do not follow the track trend are removed from each dimension of the track recorded by each sub-system. The track motion trend vector is formed using the remaining low-frequency components as track characteristics, and the relevant correlation criteria are created. The track association between sub-systems is ultimately finished since the correlation threshold is self-adaptive and does not require the creation of a motion model. Results from simulations indicate that the suggested method is capable of successfully completing the track connection in passive systems
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