Análise de Métodos de Redução de Ruído por Limiar no Domínio Wavelet
DOI:
https://doi.org/10.5540/tema.2008.09.03.0471Abstract
Neste trabalho é apresentado uma análise e comparação entre os métodos de redução de ruído baseados em corte por limiar no domínio wavelet. O objetivo é apresentar os diversos métodos de redução de ruído, uma vez que nem todos são conhecidos na literatura especializada, indicando os mais eficientes.References
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