An algorithm to automatically identify cough sounds from clinical recordings

S. Subburaj, A. V. Hirtum, S. Quanten, D. Berckmans (Egham, United Kingdom; Leuven, Belgium)

Source: Annual Congress 2003 - Cough and sleep disorders
Session: Cough and sleep disorders
Session type: Oral Presentation
Number: 1125

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S. Subburaj, A. V. Hirtum, S. Quanten, D. Berckmans (Egham, United Kingdom; Leuven, Belgium). An algorithm to automatically identify cough sounds from clinical recordings. Eur Respir J 2003; 22: Suppl. 45, 1125

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