English

RepAugment: Input-Agnostic Representation-Level Augmentation for Respiratory Sound Classification

Sound 2024-05-07 v1 Artificial Intelligence Audio and Speech Processing

Abstract

Recent advancements in AI have democratized its deployment as a healthcare assistant. While pretrained models from large-scale visual and audio datasets have demonstrably generalized to this task, surprisingly, no studies have explored pretrained speech models, which, as human-originated sounds, intuitively would share closer resemblance to lung sounds. This paper explores the efficacy of pretrained speech models for respiratory sound classification. We find that there is a characterization gap between speech and lung sound samples, and to bridge this gap, data augmentation is essential. However, the most widely used augmentation technique for audio and speech, SpecAugment, requires 2-dimensional spectrogram format and cannot be applied to models pretrained on speech waveforms. To address this, we propose RepAugment, an input-agnostic representation-level augmentation technique that outperforms SpecAugment, but is also suitable for respiratory sound classification with waveform pretrained models. Experimental results show that our approach outperforms the SpecAugment, demonstrating a substantial improvement in the accuracy of minority disease classes, reaching up to 7.14%.

Keywords

Cite

@article{arxiv.2405.02996,
  title  = {RepAugment: Input-Agnostic Representation-Level Augmentation for Respiratory Sound Classification},
  author = {June-Woo Kim and Miika Toikkanen and Sangmin Bae and Minseok Kim and Ho-Young Jung},
  journal= {arXiv preprint arXiv:2405.02996},
  year   = {2024}
}

Comments

Accepted EMBC 2024

R2 v1 2026-06-28T16:17:17.360Z