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CMOT: Cross-modal Mixup via Optimal Transport for Speech Translation

Yan Zhou, Qingkai Fang, Yan Feng

202325 citationsDOIOpen Access PDF

Abstract

End-to-end speech translation (ST) is the task of translating speech signals in the source language into text in the target language. As a cross-modal task, end-to-end ST is difficult to train with limited data. Existing methods often try to transfer knowledge from machine translation (MT), but their performances are restricted by the modality gap between speech and text. In this paper, we propose Cross-modal Mixup via Optimal Transport (CMOT) to overcome the modality gap. We find the alignment between speech and text sequences via optimal transport and then mix up the sequences from different modalities at a token level using the alignment. Experiments on the MuST-C ST benchmark demonstrate that CMOT achieves an average BLEU of 30.0 in 8 translation directions, outperforming previous methods. Further analysis shows CMOT can adaptively find the alignment between modalities, which helps alleviate the modality gap between speech and text.

Topics & Concepts

Computer scienceMachine translationModality (human–computer interaction)Task (project management)Translation (biology)Benchmark (surveying)Security tokenSpeech recognitionModalitiesSpeech translationModalNatural language processingArtificial intelligenceEngineeringComputer securityMessenger RNASociologyPolymer chemistrySocial scienceChemistrySystems engineeringGeodesyGeneGeographyBiochemistryNatural Language Processing TechniquesTopic ModelingSpeech Recognition and Synthesis