Abstract

This paper is concerned with estimation of multichannel autoregressive (MAR) model parameters using noisy observations. The NILS method proposed in W.X. Zheng [A new estimation algorithm for AR signals measured in noise, in: Proceedings of the ICSP Conference 1, 2002, pp. 186–189] for estimation of the parameters of noisy scalar autoregressive (AR) signals is generalized to the multichannel case. An improved least-squares-based parameter estimator is introduced so that the variance–covariance matrix of the multichannel noise can be estimated in an iterative manner. With this, the noise-induced estimation bias can be removed to yield the unbiased estimate of the MAR parameters. In a simulation study, the performance of the proposed unbiased estimation algorithm is evaluated and compared with that of the existing parameter estimation methods.

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