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I recently recorded the EEG signal with sampling rate of 256Hz.The signal will band passed at 4-64Hz.I need a code to filter the eeg data.Is there any type of filter in matlab is most suitable to filter the artifact or noise from the signal??

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You could use the butter and filter/filtfilt functions, depending on your requirements. You might want a notch filter at 50/60Hz, too. –  Tim N Dec 10 '12 at 12:59

2 Answers 2

You can apply a notch filter at 50 or 60 Hz

Artifacts from eye movements generally have a 2-5 Hz frequency range, So you can apply a high pass filter out there.

Wavelets have a thresholding mechanism to filter out noise (hard and soft thresholding) using wavelet packet decomposition.

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in case that your Fs =1000 Hz, use this code to be able to filter the signal and extract the features bands (alpha, beta, ...)

            S = "your EEG-Data-Row";
            waveletFunction = 'db8' OR 'sym8' ;
            [C,L] = wavedec(S,8,waveletFunction);
            %% Calculation The Coificients Vectors
            cD1 = detcoef(C,L,1);                   %NOISY
            cD2 = detcoef(C,L,2);                   %NOISY
            cD3 = detcoef(C,L,3);                   %NOISY
            cD4 = detcoef(C,L,4);                   %NOISY
            cD5 = detcoef(C,L,5);                   %GAMA
            cD6 = detcoef(C,L,6);                   %BETA
            cD7 = detcoef(C,L,7);                   %ALPHA
            cD8 = detcoef(C,L,8);                   %THETA
            cA8 = appcoef(C,L,waveletFunction,8);   %DELTA
            %%%% Calculation the Details Vectors
            D1 = wrcoef('d',C,L,waveletFunction,1); %NOISY
            D2 = wrcoef('d',C,L,waveletFunction,2); %NOISY
            D3 = wrcoef('d',C,L,waveletFunction,3); %NOISY
            D4 = wrcoef('d',C,L,waveletFunction,4); %NOISY
            D5 = wrcoef('d',C,L,waveletFunction,5); %GAMMA
            D6 = wrcoef('d',C,L,waveletFunction,6); %BETA
            D7 = wrcoef('d',C,L,waveletFunction,7); %ALPHA
            D8 = wrcoef('d',C,L,waveletFunction,8); %THETA
            A8 = wrcoef('a',C,L,waveletFunction,8); %DELTA

Hope this will help .

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