Near-ideal predictors and causal filters for discrete time signals

02/28/2023
by   Nikolai Dokuchaev, et al.
0

The paper presents linear predictors and causal filters for discrete time signals featuring some different kinds of spectrum degeneracy. These predictors and filters are based on approximation of ideal non-causal transfer functions by causal transfer functions represented by polynomials of Z-transform of the unit step signal.

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