DOI:
https://doi.org/10.14483/23448393.21311Published:
2024-07-17Issue:
Vol. 29 No. 2 (2024): May-AugustSection:
Biomedical EngineeringA Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection
Análisis comparativo entre FFT, EMD y EEMD para la detección de epilepsia
Keywords:
electroencephalogram, Empirical Mode Decomposition, epilepsy, Instantaneous Frequency, Intrinsec Mode Functions, methodology, non-lineal, non-stationary, oscillation modes, seizures (en).Keywords:
convulsiones, Descomposicion Empírica de Modos, electroencefalograma, epilepsia, Frecuencias Instantáneas, Funciones de Modo Intrínseco, metodología, modos de oscilación, no-estacionaria, no-lineal (es).Downloads
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Copyright (c) 2024 Leandro Dorado-Romero, Maximiliano Bueno-López, Jenny Alexandra Cifuentes

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