ASAICLAug 7, 2025

Speech LLMs in Low-Resource Scenarios: Data Volume Requirements and the Impact of Pretraining on High-Resource Languages

arXiv:2508.05149v16 citationsh-index: 21INTERSPEECH
Originality Incremental advance
AI Analysis

It addresses the problem of applying Speech LLMs to low-resource languages for researchers and practitioners, with incremental improvements in handling data scarcity.

This work investigates Speech LLMs for low-resource Automatic Speech Recognition using the SLAM-ASR framework, showing that leveraging projectors pretrained on high-resource languages reduces data scarcity impact, especially with small training sets, and assesses data volume requirements to match Whisper-only performance.

Large language models (LLMs) have demonstrated potential in handling spoken inputs for high-resource languages, reaching state-of-the-art performance in various tasks. However, their applicability is still less explored in low-resource settings. This work investigates the use of Speech LLMs for low-resource Automatic Speech Recognition using the SLAM-ASR framework, where a trainable lightweight projector connects a speech encoder and a LLM. Firstly, we assess training data volume requirements to match Whisper-only performance, re-emphasizing the challenges of limited data. Secondly, we show that leveraging mono- or multilingual projectors pretrained on high-resource languages reduces the impact of data scarcity, especially with small training sets. Using multilingual LLMs (EuroLLM, Salamandra) with whisper-large-v3-turbo, we evaluate performance on several public benchmarks, providing insights for future research on optimizing Speech LLMs for low-resource languages and multilinguality.

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