基于多维自适应UKF的雷达目标跟踪

Zehao Ye, Yawei Song, Liangfa Hua, Shengxiang Zhou, Kai Yan, Wei Han
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引用次数: 0

摘要

当系统模型不准确或噪声不确定时,传统的UKF算法存在滤波精度下降甚至发散的问题。针对这些问题,本文提出了一种基于多维自适应因子的UKF算法(SMA-UKF)。首先,结合UKF算法和强跟踪滤波原理,阐述了建立强跟踪UKF的充分条件;在单步正演预测协方差矩阵中引入了多维自适应因子,并分别设计了其计算方法。最后,在系统模型和噪声不准确的情况下,对SMA-UKF、强跟踪UKF算法(ST-UKF)和UKF算法在目标跟踪中的效果进行了仿真比较。结果表明,SMA-UKF能够自动判断和自适应调整过程噪声,实现对目标的良好跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radar Target Tracking Based on Some Multi-Dimensional Adaptive UKF
When the system model is inaccurate or the noise is uncertain, the traditional UKF algorithm has problems such as decreased filtering accuracy or even divergence. Aiming at these problems, this paper proposes an UKF algorithm based on multi-dimensional adaptive factors (SMA-UKF). Firstly, the sufficient conditions for establishing strong tracking UKF are expounded combined with UKF algorithm and strong tracking filtering principle. Furthermore, some multi-dimensional adaptive factors are introduced into the single-step forward prediction covariance matrix, and their calculation methods are designed respectively. Finally, the effects of SMA-UKF, strong tracking UKF algorithm (ST-UKF) and UKF algorithm in target tracking are simulated and compared under the condition that the system model and noise are inaccurate. The results show that SMA-UKF can automatically judge and adaptively adjust the process noise, and achieve good tracking of the target.
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