How do I remove background noise from a sound wave?
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I have a sound wave y(1:441000) gathered using a microphone and I have background n(1:441000) also gathered by the microphone. I have tried removing the background noise using a script something like:
Y=fft(y);
N=fft(n);
Yclean=Y-N;
yClean=ifft(Yclean);
However, yClean is not correct and is backwards in time. Do you have any suggestions?
Thanks,
Dave
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採用された回答
Pedro Villena
2013 年 11 月 18 日
Create and Implement LMS Adaptive Filter to remove the filtered noise from desired signal
mtlb_noisy = y;
noise = n;
% Define Adaptive Filter Parameters
filterLength = 32;
weights = zeros(1,filterLength);
step_size = 0.004;
% Initialize Filter's Operational inputs
output = zeros(1,length(mtlb_noisy));
err = zeros(1,length(mtlb_noisy));
input = zeros(1,filterLength);
% For Loop to run through the data and filter out noise
for n = 1: length(mtlb_noisy),
%Get input vector to filter
for k= 1:filterLength
if ((n-k)>0)
input(k) = noise(n-k+1);
end
end
output(n) = weights * input'; %Output of Adaptive Filter
err(n) = mtlb_noisy(n) - output(n); %Error Computation
weights = weights + step_size * err(n) * input; %Weights Updating
end
yClean = err;
1 件のコメント
Tahira Batool
2017 年 4 月 30 日
And what if one does not have a separate noisy signal to be removed from an original signal ,then how can we remove background noise from a signal?
その他の回答 (3 件)
Umair Nadeem
2013 年 11 月 18 日
It would be easier if you could upload the noisy signal too. Save the variable y which supposedly has the noisy signal in a .mat file using save command and attach it with your post. Some frequency analysis could be done if the signal is available.
Also try to provide info about the signal frequency (if known), and the sampling frequency which you used to sample the data.
0 件のコメント
pinreddy chaitanya
2018 年 10 月 22 日
編集済み: Walter Roberson
2018 年 10 月 22 日
weights = weights + step_size * err(n) * input; %Weights Updating
what is the use of this line
1 件のコメント
pravin m
2019 年 11 月 5 日
mtlb_noisy = y;
noise = n;
% Define Adaptive Filter Parameters
filterLength = 32;
weights = zeros(1,filterLength);
step_size = 0.004;
% Initialize Filter's Operational inputs
output = zeros(1,length(mtlb_noisy));
err = zeros(1,length(mtlb_noisy));
input = zeros(1,filterLength);
% For Loop to run through the data and filter out noise
for n = 1: length(mtlb_noisy),
%Get input vector to filter
for k= 1:filterLength
if ((n-k)>0)
input(k) = noise(n-k+1);
end
end
output(n) = weights * input'; %Output of Adaptive Filter
err(n) = mtlb_noisy(n) - output(n); %Error Computation
weights = weights + step_size * err(n) * input; %Weights Updating
end
yClean = err;
0 件のコメント
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