Bidimensional Ensemble Empirical mode Decomposition of Functional Biomedical Images
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Juan Manuel Górriz | Elmar Wolfgang Lang | Ana Maria Tomé | Carlos García Puntonet | A. Neubauer | Andreas Kodewitz | A. Tomé | E. Lang | J. Górriz | C. Puntonet | A. Neubauer | A. Kodewitz
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