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Adaptive Maximum Correntropy Gaussian Filter Based on Variational Bayes

机译:基于变化贝叶斯的自适应最大熵高斯滤波器

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In this paper, we investigate the state estimation of systems with unknown covariance non-Gaussian measurement noise. A novel improved Gaussian filter (GF) is proposed, where the maximum correntropy criterion (MCC) is used to suppress the pollution of non-Gaussian measurement noise and its covariance is online estimated through the variational Bayes (VB) approximation. MCC and VB are integrated through the fixed-point iteration to modify the estimated measurement noise covariance. As a general framework, the proposed algorithm is applicable to both linear and nonlinear systems with different rules being used to calculate the Gaussian integrals. Experimental results show that the proposed algorithm has better estimation accuracy than related robust and adaptive algorithms through a target tracking simulation example and the field test of an INS/DVL integrated navigation system.
机译:在本文中,我们研究了具有未知协方差非高斯测量噪声的系统的状态估计。提出了一种新颖的改进高斯滤波器(GF),其中最大熵准则(MCC)用于抑制非高斯测量噪声的污染,并且其协方差通过变分贝叶斯(VB)近似在线估计。 MCC和VB通过定点迭代进行集成,以修改估计的测量噪声协方差。作为通用框架,该算法适用于线性和非线性系统,其中使用不同的规则来计算高斯积分。实验结果表明,通过目标跟踪仿真实例和INS / DVL组合导航系统的现场测试,该算法比相关的鲁棒自适应算法具有更好的估计精度。

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