2022
DOI: 10.48550/arxiv.2202.00468
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Unified Multimodal Punctuation Restoration Framework for Mixed-Modality Corpus

Abstract: The punctuation restoration task aims to correctly punctuate the output transcriptions of automatic speech recognition systems. Previous punctuation models, either using text only or demanding the corresponding audio, tend to be constrained by real scenes, where unpunctuated sentences are a mixture of those with and without audio. This paper proposes a unified multimodal punctuation restoration framework, named UniPunc, to punctuate the mixed sentences with a single model. UniPunc jointly represents audio and … Show more

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