基于目标跟踪的自适应鲁棒高度培养滤波器

Zhi-ying Peng, Haibao Xia, Hang Lu, Yunshan Xu
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引用次数: 1

摘要

目标跟踪系统具有较强的非线性和非高斯噪声,使得传统的Cubature Kalman滤波对非高斯噪声敏感,导致跟踪精度较低。考虑到高阶CKF和最大相关熵卡尔曼滤波分别可以克服测量噪声和系统噪声的非线性和非高斯性,将HCKF的测量更新过程转化为基于最大相关熵准则和HCKF相结合的统计线性回归方程,并自适应地调整核宽度,解决了非线性和非高斯性问题。仿真结果表明,所提出的鲁棒广义高阶培养滤波器在跟踪精度上优于传统的CKF和简单的MCKF。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Robust High-degree Cubature Filter Based On Target Tracking
Target tracking system has strong-nonlinearity with non-Gaussian noise, thus making traditional Cubature Kalman Filter have low tracking accuracy due to sensitivity to non-Gaussian noise. Considering that the High-degree CKF and Maximum Correntropy Kalman Filter can conquer the nonlinearity of system and non-Gaussianity of measurement noise and system noise respectively, the measurement update process of HCKF is transformed to statistical linear regression equation based on the combination of Maximum Correntropy Criterion and HCKF, and adjust the kernel width adaptively, which solves the nonlinearity and non-Gaussianity problem. Simulation proves that the proposed robust generalized high-degree cubature filter is better than traditional CKF and simple MCKF both in tracing accuracy.
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