Lung Sound Classification Using Co-tuning and Stochastic Normalization
About
In this paper, we use pre-trained ResNet models as backbone architectures for classification of adventitious lung sounds and respiratory diseases. The knowledge of the pre-trained model is transferred by using vanilla fine-tuning, co-tuning, stochastic normalization and the combination of the co-tuning and stochastic normalization techniques. Furthermore, data augmentation in both time domain and time-frequency domain is used to account for the class imbalance of the ICBHI and our multi-channel lung sound dataset. Additionally, we apply spectrum correction to consider the variations of the recording device properties on the ICBHI dataset. Empirically, our proposed systems mostly outperform all state-of-the-art lung sound classification systems for the adventitious lung sounds and respiratory diseases of both datasets.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Respiratory sound classification | ICBHI dataset official (60-40% split) | Specificity79.34 | 42 | |
| Respiratory sound classification | ICBHI 2017 (official) | Specificity79.34 | 32 | |
| 4-class respiratory sound classification | ICBHI 60-40% split official (test) | Specificity79.34 | 31 | |
| 2-class respiratory sound classification | ICBHI 60-40% split official (test) | Specificity79.34 | 16 | |
| Respiratory sound classification | ICBHI | Specificity79.34 | 14 |