Adaptive decomposition of a signal with the EWT (Gilles, 2013) method
Python translation from the original Matlab toolbox.
ewtpy performs the Empirical Wavelet Transform of a 1D signal over N scales. Main function is EWT1D:
ewt, mfb ,boundaries = EWT1D(f, N = 5, log = 0,detect = "locmax", completion = 0, reg = 'average', lengthFilter = 10,sigmaFilter = 5)
Other functions include:
EWT_Boundaries_Detect
EWT_Boundaries_Completion
EWT_Meyer_FilterBank
EWT_beta
EWT_Meyer_Wavelet
LocalMax
LocalMaxMin
Some functionalities from J.Gilles' MATLAB toolbox have not been implemented, such as EWT of 2D inputs, preprocessing, adaptive/ScaleSpace boundaries_detect.
The Example folder contains test signals and scripts
- Dowload the project from https://github.com/vrcarva/ewtpy, then run "python setup.py install" from the project folder
OR
- pip install ewtpy
Paper available at https://doi.org/10.1016/j.bspc.2020.102073.
If you find this package useful, we kindly ask you to cite it in your work.
Vinícius R. Carvalho, Márcio F.D. Moraes, Antônio P. Braga, Eduardo M.A.M. Mendes,
Evaluating five different adaptive decomposition methods for EEG signal seizure detection and classification,
Biomedical Signal Processing and Control,
Volume 62,
2020,
102073,
ISSN 1746-8094,
https://doi.org/10.1016/j.bspc.2020.102073.
If you developed a new funcionality or fixed anything in the code, just provide me the corresponding files and which credit should I include in this readme file.
Any questions, comments, suggestions and/or corrections, please get in contact with [email protected]
@author: Vinícius Rezende Carvalho
Programa de pós graduação em engenharia elétrica - PPGEE UFMG
Universidade Federal de Minas Gerais - Belo Horizonte, Brazil
Núcleo de Neurociências - NNC
#%% Example script
import numpy as np
import matplotlib.pyplot as plt
import ewtpy
T = 1000
t = np.arange(1,T+1)/T
f = np.cos(2*np.pi*0.8*t) + 2*np.cos(2*np.pi*10*t)+0.8*np.cos(2*np.pi*100*t)
ewt, mfb ,boundaries = ewtpy.EWT1D(f, N = 3)
plt.plot(f)
plt.plot(ewt)