Temel Kavramlar
This paper introduces AuscultaBase, a novel framework designed to improve body sound diagnostics by leveraging a large-scale, multi-source body sound database and contrastive learning techniques to train a robust diagnostic model.
İstatistikler
The AuscultaBase-Corpus consists of 11 datasets, over 40,317 audio recordings, and totals 322.4 hours of heart, lung, and bowel sounds.
The AuscultaBase-Bench contains 16 sub-tasks, assessing the performance of various open-source acoustic pre-trained models.
The AuscultaBase-Model outperforms all other open-source models in 12 out of 16 tasks.