Feedback Particle Filter With Stochastically Perturbed Innovation And Its Application to Dual Estimation

07/18/2021
by   David Angwenyi, et al.
0

In this paper, we introduce a stochastically perturbed feedback particle filter and show that it is exact. The novelty is in the fact that the innovation process is stochastically perturbed. Resampled sinkhorn particle filter is also introduced. We then compare their performance with that of other filters in simultaneous state and parameter estimation.

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