Codec Data Augmentation for Time-domain Heart Sound Classification
Heart auscultations are a low-cost and effective way of detecting valvular heart diseases early, which can save lives. Nevertheless, it has been difficult to scale this screening method since the effectiveness of auscultations is dependent on the skill of doctors. As such, there has been increasing...
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Zusammenfassung: | Heart auscultations are a low-cost and effective way of detecting valvular
heart diseases early, which can save lives. Nevertheless, it has been difficult
to scale this screening method since the effectiveness of auscultations is
dependent on the skill of doctors. As such, there has been increasing research
interest in the automatic classification of heart sounds using deep learning
algorithms. However, it is currently difficult to develop good heart sound
classification models due to the limited data available for training. In this
work, we propose a simple time domain approach, to the heart sound
classification problem with a base classification error rate of 0.8 and show
that augmentation of the data through codec simulation can improve the
classification error rate to 0.2. With data augmentation, our approach
outperforms the existing time-domain CNN-BiLSTM baseline model. Critically, our
experiments show that codec data augmentation is effective in getting around
the data limitation. |
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DOI: | 10.48550/arxiv.2309.07466 |