Dual Kalman Filtering Methods for Nonlinear Prediction, Smoothing and Estimation
Abstract
Prediction, estimation, and smoothing are fundamental to signal processing. To perform these interrelated tasks given noisy data, we form a time series model of the process that generates the data. Taking noise in the system explicitly into account, maximum(cid:173) likelihood and Kalman frameworks are discussed which involve the dual process of estimating both the model parameters and the un(cid:173) derlying state of the system. We review several established meth(cid:173) ods in the linear case, and propose severa! extensions utilizing dual Kalman filters (DKF) and forward-backward (FB) filters that are applicable to neural networks. Methods are compared on several simulations of noisy time series. We also include an example of nonlinear noise reduction in speech.
Cite
Text
Wan and Nelson. "Dual Kalman Filtering Methods for Nonlinear Prediction, Smoothing and Estimation." Neural Information Processing Systems, 1996.Markdown
[Wan and Nelson. "Dual Kalman Filtering Methods for Nonlinear Prediction, Smoothing and Estimation." Neural Information Processing Systems, 1996.](https://mlanthology.org/neurips/1996/wan1996neurips-dual/)BibTeX
@inproceedings{wan1996neurips-dual,
title = {{Dual Kalman Filtering Methods for Nonlinear Prediction, Smoothing and Estimation}},
author = {Wan, Eric A. and Nelson, Alex T.},
booktitle = {Neural Information Processing Systems},
year = {1996},
pages = {793-799},
url = {https://mlanthology.org/neurips/1996/wan1996neurips-dual/}
}