Separation of crackles and squawks from vesicular sounds using a waveletbased filtering technique

An automated way of revealing the diagnostic character of discontinuous adventitious sounds DAS, i.e. crackles and squawks, by isolating them from vesicular sounds VS, based on their nonstationarity, is presented in this paper. The proposed algorithm combines multiresolution analysis with hard thres...

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Veröffentlicht in:Compel 1998-10, Vol.17 (5), p.649-657
Hauptverfasser: Hadjileontiadis, Leontios J., Patakas, Dimitrios A., Margaris, Nikolaos J., Panas, Stavros M.
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Sprache:eng
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Zusammenfassung:An automated way of revealing the diagnostic character of discontinuous adventitious sounds DAS, i.e. crackles and squawks, by isolating them from vesicular sounds VS, based on their nonstationarity, is presented in this paper. The proposed algorithm combines multiresolution analysis with hard thresholding in order to compose a waveletbased stationarynonstationary filter WTSTNST. Applying the WTSTNST filter to finecoarse crackles and squawks, selected from three lung sound databases, the coherent structure of the DAS is revealed and they are separated from VS. When compared to other separation tools, in noiseless case, the WTSTNST filter performed more accurately, objectively, and with lower computational cost. Owing to its simple implementation it can easily be used in clinical medicine.
ISSN:0332-1649
DOI:10.1108/03321649810220973