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arXiv 提交日期: 2025-12-27
📄 Abstract - Geometry-Aware Optimization for Respiratory Sound Classification: Enhancing Sensitivity with SAM-Optimized Audio Spectrogram Transformers

Respiratory sound classification is hindered by the limited size, high noise levels, and severe class imbalance of benchmark datasets like ICBHI 2017. While Transformer-based models offer powerful feature extraction capabilities, they are prone to overfitting and often converge to sharp minima in the loss landscape when trained on such constrained medical data. To address this, we introduce a framework that enhances the Audio Spectrogram Transformer (AST) using Sharpness-Aware Minimization (SAM). Instead of merely minimizing the training loss, our approach optimizes the geometry of the loss surface, guiding the model toward flatter minima that generalize better to unseen patients. We also implement a weighted sampling strategy to handle class imbalance effectively. Our method achieves a state-of-the-art score of 68.10% on the ICBHI 2017 dataset, outperforming existing CNN and hybrid baselines. More importantly, it reaches a sensitivity of 68.31%, a crucial improvement for reliable clinical screening. Further analysis using t-SNE and attention maps confirms that the model learns robust, discriminative features rather than memorizing background noise.

顶级标签: medical audio model training
详细标签: respiratory sound classification sharpness-aware minimization audio spectrogram transformer class imbalance medical audio 或 搜索:

用于呼吸音分类的几何感知优化:通过SAM优化的音频谱图Transformer提升灵敏度 / Geometry-Aware Optimization for Respiratory Sound Classification: Enhancing Sensitivity with SAM-Optimized Audio Spectrogram Transformers


1️⃣ 一句话总结

这篇论文提出了一种新方法,通过优化模型训练时的损失函数曲面形状,并结合处理数据不平衡的策略,让一个基于Transformer的呼吸音分类模型在嘈杂且数据量小的医疗数据集上取得了更好的泛化能力和更高的疾病检出灵敏度。

源自 arXiv: 2512.22564