SMILE: Speech Meta In-Context Learning for Low-Resource Language Automatic Speech Recognition
Abstract
Automatic Speech Recognition (ASR) models demonstrate outstanding performance on high-resource languages but face significant challenges when applied to low-resource languages due to limited training data and insufficient cross-lingual generalization. Existing adaptation strategies, such as shallow fusion, data augmentation, and direct fine-tuning, either rely on external resources, suffer computational inefficiencies, or fail in test-time adaptation scenarios. To address these limitations, we introduce Speech Meta In-Context LEarning (SMILE), an innovative framework that combines meta-learning with speech in-context learning (SICL). SMILE leverages meta-training from high-resource languages to enable robust, few-shot generalization to low-resource languages without explicit fine-tuning on the target domain. Extensive experiments on the ML-SUPERB benchmark show that SMILE consistently outperforms baseline methods, significantly reducing character and word error rates in training-free few-shot multilingual ASR tasks.
Keywords
Cite
@article{arxiv.2409.10429,
title = {SMILE: Speech Meta In-Context Learning for Low-Resource Language Automatic Speech Recognition},
author = {Ming-Hao Hsu and Hung-yi Lee},
journal= {arXiv preprint arXiv:2409.10429},
year = {2025}
}