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arxiv: 2212.09359 · v3 · pith:LOV344YSnew · submitted 2022-12-19 · 💻 cs.CL · cs.SD· eess.AS

WACO: Word-Aligned Contrastive Learning for Speech Translation

classification 💻 cs.CL cs.SDeess.AS
keywords speechwacocontrastivelearningtranslationavailabledataextremely
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End-to-end Speech Translation (E2E ST) aims to directly translate source speech into target text. Existing ST methods perform poorly when only extremely small speech-text data are available for training. We observe that an ST model's performance closely correlates with its embedding similarity between speech and source transcript. In this paper, we propose Word-Aligned COntrastive learning (WACO), a simple and effective method for extremely low-resource speech-to-text translation. Our key idea is bridging word-level representations for both speech and text modalities via contrastive learning. We evaluate WACO and other methods on the MuST-C dataset, a widely used ST benchmark, and on a low-resource direction Maltese-English from IWSLT 2023. Our experiments demonstrate that WACO outperforms the best baseline by 9+ BLEU points with only 1-hour parallel ST data. Code is available at https://github.com/owaski/WACO.

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