Download PDFOpen PDF in browserAn Adaptive δ-GLMB Filter Under Noise Statistics MismatchEasyChair Preprint 80638 pages•Date: May 24, 2022AbstractAiming at the problem of multi-target tracking under the condition of noises statistics mismatch, an adaptive δ-GLMB filter based on VB approximation is proposed. The Normal-inverse Wishart distribution is used to model the state one-step prediction and prediction error covariance matrix, and the joint distribution of mean and covariance matrix of measurement noise, and the latent variables are described as Gamma distribution. In this paper, the filter density of single target is expressed as the mixture of Normal inverse Wishart inverse Wishart Gamma Gamma (NNIWNIWGG), and its NNIWNIWGG mixture implementation under linear Gaussian condition is given. According to the minimization of Kullback-Leibler divergence, the approximate solution of marginal likelihood function is obtained. Simulation results show that the proposed adaptive δ-GLMB filter has high tracking accuracy in the case of noises statistics mismatch. Keyphrases: Variational Bayesian, inverse Wishart distribution, multi-target tracking, noise statistics mismatch, δ-GLMB filter
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