Mathematics – Statistics Theory
Scientific paper
2011-08-17
Mathematics
Statistics Theory
Scientific paper
This paper investigates the minimum mean square error (MMSE) estimation of x, given the observation y = Hx+n, when x and n are independent and Gaussian Mixture (GM) distributed. The introduction of GM distributions, represents a generalization of the more familiar and simpler Gaussian signal and Gaussian noise instance. We present the necessary theoretical foundation and derive the MMSE estimator for x in a closed form. Furthermore, we provide upper and lower bounds for its mean square error (MSE). These bounds are validated through Monte Carlo simulations.
Chatterjee Saikat
Ekman Torbjorn
Flam John T.
Kansanen Kimmo
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