2011
DOI: 10.1016/j.neucom.2011.04.029
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A comparative study of wavelet families for EEG signal classification

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Cited by 281 publications
(121 citation statements)
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“…Selection of suitable wavelet is crucial for the analysis of signals through wavelet transform. Based on the biomedical signal to be analyzed, the mother wavelet is chosen [14] [15].…”
Section: Wavelet Familymentioning
confidence: 99%
See 1 more Smart Citation
“…Selection of suitable wavelet is crucial for the analysis of signals through wavelet transform. Based on the biomedical signal to be analyzed, the mother wavelet is chosen [14] [15].…”
Section: Wavelet Familymentioning
confidence: 99%
“…As mentioned in [15], based on the classification accuracy and computational time obtained in the experiment, it was found that Coiflet of order 1(Coif1) is the best wavelet family for analysis of EEG signal as the support width of the mother wavelet function resembles that of the EEG signal and also has a compact filter length, thus reducing the processing time. This argument is being challenged by many researchers [16][17] and recommends Haar and, second and fourth order Daubechies (Db2, Db4) wavelets for signal preprocessing and feature extraction and were provided better accuracy in the recent classifications.…”
Section: Wavelet Familymentioning
confidence: 99%
“…Examples of application domains are speech recognition [6], audio classification [7], texture classification [8], and medical signal classification [9].…”
Section: A Wavelet Transform In Time Series Analysismentioning
confidence: 99%
“…You have to deliberately choose from various kinds of wavelet families, such as Haar wavelet, Daubechies wavelet, Symlet wavelet, Coif Wavelet, Bior Wavelet, etc. (Gandhi et al, 2011). In this work we simply choose the Db-4 wavelet to do CWT for each channel signal, which is formulated as Formula 2, where ƒ(t) is the original EEG signal.…”
Section: Wavelet Based Sparse Representationmentioning
confidence: 99%