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arxiv:2512.22564

Geometry-Aware Optimization for Respiratory Sound Classification: Enhancing Sensitivity with SAM-Optimized Audio Spectrogram Transformers

Published on Dec 27, 2025
· Submitted by
Işık
on Jan 1
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Abstract

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.

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edited about 1 hour ago

Hi all,

We present a robust framework for Lung Sound Classification using AST backbones enhanced with SAM optimizer.

Traditional transformers often struggle with limited medical data, but our experiments show that geometry-aware optimization (SAM) leads to a massive boost in sensitivity. We achieved a 68.10% Score on the official ICBHI 2017 split.

We invite everyone to benchmark our results. The repository includes:

  • Cyclic padding implementation
  • Full training scripts
  • Evaluation of model

Check it out here: GitHub Link

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