Title of article :
Recognition System for Pig Cough based on Probabilistic Neural Networks
Author/Authors :
Ramon، H. نويسنده , , Berckmans، D. نويسنده , , Chedad، A. نويسنده , , Moshou، D. نويسنده , , Aerts، J. M. نويسنده , , Hirtum، A. Van نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
Until now the use of acoustic bio-responses in bio-environment control as indicators of animalcondition is limited to human perception. Coughing is a frequent symptom of many respiratory diseases affecting the airways and lungs of humans and animals. Registration of coughs from different pigs in a controlled test chamber was done in order to analyse the acoustical signal. A new approach is presented to distinguish cough sounds from other sounds, such as grunts, metal clanging and background noise, using neural networks as the classification method. Other signals (such as grunts, metal clanging, etc.) could also be detected. The best performance was obtained with a hybrid classifier that classifies coughs and metal clanging separately from the rest, giving better results compared to a probabilistic neural network (PNN) alone. The hybrid classifier, which consists of a 2- and a 4-class PNN, gave high discrimination performance in the case of grunts, metal clanging and background noise (91·4, 63· 9 and 82·6%, respectively) and a performance of (91·9%) for correct classification in the case of coughs.
Keywords :
faculty development , interdisciplinarity , scholarship reconsidered
Journal title :
Biosystems Engineering
Journal title :
Biosystems Engineering