CLAIJan 29, 2025

Tonguescape: Exploring Language Models Understanding of Vowel Articulation

arXiv:2501.17643v113 citationsh-index: 14Has CodeNAACL
Originality Synthesis-oriented
AI Analysis

This work addresses the incremental problem of aligning textual and visual information in multi-modal LMs for linguistics and language learning applications.

The study tackled the problem of whether language models (LMs) can understand vowel articulation based on tongue positions using vision-based information, finding that LMs show potential when provided with reference examples but struggle without them.

Vowels are primarily characterized by tongue position. Humans have discovered these features of vowel articulation through their own experience and explicit objective observation such as using MRI. With this knowledge and our experience, we can explain and understand the relationship between tongue positions and vowels, and this knowledge is helpful for language learners to learn pronunciation. Since language models (LMs) are trained on a large amount of data that includes linguistic and medical fields, our preliminary studies indicate that an LM is able to explain the pronunciation mechanisms of vowels. However, it is unclear whether multi-modal LMs, such as vision LMs, align textual information with visual information. One question arises: do LMs associate real tongue positions with vowel articulation? In this study, we created video and image datasets from the existing real-time MRI dataset and investigated whether LMs can understand vowel articulation based on tongue positions using vision-based information. Our findings suggest that LMs exhibit potential for understanding vowels and tongue positions when reference examples are provided while they have difficulties without them. Our code for dataset building is available on GitHub.

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