Authors
R Palaniappan, K Sundaraj, CK Lam
Publication date
2016/11/15
Conference
2016 International Conference on System Reliability and Science (ICSRS)
Pages
152-156
Publisher
IEEE
Description
Analysis of breath sounds for the purpose of diagnosing respiratory pathology is of great interest in recent years. In this paper, classification of normal, wheeze, rhonchi, line and coarse crackles using breath sound signal recording is performed using signal processing and machine learning tools. Breath sounds were filtered from noise and segmented into breath cycles followed by feature extraction. AR Coefficients and Mel Frequency Cepstral Coefficients (MFCC) features were extracted from breath sound cycles. The extracted features are then classified using Support Vector Machine (SVM) classifier. A mean classification accuracy of 88.72% and 89.68% was reported for the features AR coefficients and MFCC features respectively. The individual classification accuracy for healthy (control subjects), wheeze, rhonchi, fine and coarse crackles are 93.75%, 87.50%, 91.66%, 87.50% and 91.66% respectively for the …
Total citations
20182019202020212022202320242141611
Scholar articles
R Palaniappan, K Sundaraj, CK Lam - 2016 International Conference on System Reliability …, 2016