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

June-Woo Kim, Miika Toikkanen, Sangmin Bae, Minseok Kim, Ho-Young Jung
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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%.
RepAugment:用于呼吸声分类的输入诊断表征级增强技术
人工智能的最新进展使其作为医疗辅助工具的应用更加民主化。虽然来自大规模视觉和音频数据集的预训练模型已被证明适用于这一任务,但令人惊讶的是,还没有研究探索过预训练的语音模型,而语音作为人类发出的声音,直觉上与肺音更为相似。本文探讨了预训练语音模型在呼吸音分类中的功效。我们发现,语音和肺部声音样本之间存在表征差距,要弥补这一差距,数据增强是必不可少的。然而,最广泛应用的音频和语音增强技术 SpecAugment 需要二维频谱图格式,无法应用于在语音波形上训练的模型。为了解决这个问题,我们提出了 RepAugment,这是一种与输入无关的表示级增强技术,其性能优于 SpecAugment,同时也适用于使用波形预训练模型的呼吸声分类。实验结果表明,我们的方法优于 SpecAugment,在少数疾病类别的准确率方面有了大幅提高,最高可达 7.14%。
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