AI RESEARCH
Towards Lightweight Adaptation of Speech Enhancement Models in Real-World Environments
arXiv CS.LG
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ArXi:2603.07471v1 Announce Type: cross Recent studies have shown that post-deployment adaptation can improve the robustness of speech enhancement models in unseen noise conditions. However, existing methods often incur prohibitive computational and memory costs, limiting their suitability for on-device deployment. In this work, we investigate model adaptation in realistic settings with dynamic acoustic scene changes and propose a lightweight framework that augments a frozen backbone with low-rank adapters updated via self-supervised