Near-ideal predictors and causal filters for discrete-time signals

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Resumo

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

Sobre autores

N. Dokuchaev

Zhejiang University

Email: dokuchaev@intl.zju.edu.cn
Haining, Zhejiang Province, China

Bibliografia

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