An iterative nonlinear filter using variational Bayesian optimization

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Abstract

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.

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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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