Construction of an adapted wavelet function for identifying late atrial potentials
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Abstract
The design of new wavelets adapted to the problem of Atrial Late Potentials (ALP) detection in signal-averaged ECG by continuous wavelet transformation (CWT) is considered in the article. The advantages of new wavelets application to ALP detection in comparison with the standard wavelets are shown
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