Stethoscope-guided Supervised Contrastive Learning for Cross-domain
Adaptation on Respiratory Sound Classification
- URL: http://arxiv.org/abs/2312.09603v1
- Date: Fri, 15 Dec 2023 08:34:31 GMT
- Title: Stethoscope-guided Supervised Contrastive Learning for Cross-domain
Adaptation on Respiratory Sound Classification
- Authors: June-Woo Kim and Sangmin Bae and Won-Yang Cho and Byungjo Lee and
Ho-Young Jung
- Abstract summary: We introduce cross-domain adaptation techniques, which transfer the knowledge from a source domain to a distinct target domain.
In particular, by considering different stethoscope types as individual domains, we propose a novel stethoscope-guided supervised contrastive learning approach.
The experimental results on the ICBHI dataset demonstrate that the proposed methods are effective in reducing the domain dependency and achieving the ICBHI Score of 61.71%, which is a significant improvement of 2.16% over the baseline.
- Score: 1.690115983364313
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Despite the remarkable advances in deep learning technology, achieving
satisfactory performance in lung sound classification remains a challenge due
to the scarcity of available data. Moreover, the respiratory sound samples are
collected from a variety of electronic stethoscopes, which could potentially
introduce biases into the trained models. When a significant distribution shift
occurs within the test dataset or in a practical scenario, it can substantially
decrease the performance. To tackle this issue, we introduce cross-domain
adaptation techniques, which transfer the knowledge from a source domain to a
distinct target domain. In particular, by considering different stethoscope
types as individual domains, we propose a novel stethoscope-guided supervised
contrastive learning approach. This method can mitigate any domain-related
disparities and thus enables the model to distinguish respiratory sounds of the
recording variation of the stethoscope. The experimental results on the ICBHI
dataset demonstrate that the proposed methods are effective in reducing the
domain dependency and achieving the ICBHI Score of 61.71%, which is a
significant improvement of 2.16% over the baseline.
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