Dropping Wavelet Coefficients After Wavelet Transform

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John
John am 16 Mär. 2013
I have a 512 sample signal that I pass through a wavelet transform. I get a series of wavelet coefficients some of which are sparse (zeros). I want to drop some of these insignificant coefficients and pass it through another algorithm without changing the original signal too much (I understand that there is some loss of data). Essentially, I want to use a subset of these wavelet coefficients. Keep in mind I am not going back to the original signal. I want to use the wavelet representation for further processing but I want to drop some of the coefficients.

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Wayne King
Wayne King am 16 Mär. 2013
So why not reconstruct the approximation using the inverse wavelet transform?
That is the whole basis of wavelet denoising. Hard thresholding sets a number of coefficients to zero and then you reconstruct the signal via the inverse wavelet transform.
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John
John am 16 Mär. 2013
Thanks, after harping on it for some time I realized what is meant by dropping insignificant data which is thresholding coefficients. I thought it meant literally remove the data from the sample set so you have less samples.

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