We propose an iterative nonlinear estimator based on the technique of variational Bayesian optimization. The posterior distribution of the underlying system state is approximated by a solvable variational distribution approached iteratively using evidence lower bound optimization subject to a minimal weighted Kullback-Leibler divergence, where a penalty factor is considered to adjust the step size of the iteration. Based on linearization, the iterative nonlinear filter is derived in a closed-form. The performance of the proposed algorithm is compared with several nonlinear filters in the literature using simulated target tracking examples.
CITATION STYLE
Hu, Y., Wang, X., Lan, H., Wang, Z., Moran, B., & Pan, Q. (2018). An iterative nonlinear filter using variational Bayesian optimization. Sensors (Switzerland), 18(12). https://doi.org/10.3390/s18124222
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