Improving Luxembourgish Speech Recognition with Cross-Lingual Speech Representations

Le-Minh Nguyen, Shekhar Nayak, M. Coler
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引用次数: 1

Abstract

Luxembourgish is a West Germanic language spoken by roughly 390,000 people, mainly in Luxembourg. It is one of Europe's under-described and under-resourced languages, not extensively investigated in the context of speech recognition. We explore the self-supervised multilingual learning of Luxembourgish speech representations for the speech recognition downstream task. We show that learning cross-lingual representations is essential for low-resourced languages such as Luxembourgish. Learning cross-lingual representations and rescoring the output transcriptions with language modelling while using only 4 hours of labelled speech achieves a word error rate of 15.1% and improves our Transfer Learning baseline model relatively by 33.1% and absolutely by 7.5%. Increasing the amount of labelled speech to 14 hours yields a significant performance gain resulting in a 9.3% word error rate.11Models and datasets are available at https://hugging£ace.co/lemswasabi
用跨语言语音表示改进卢森堡语语音识别
卢森堡语是一种西日耳曼语言,大约有39万人使用,主要在卢森堡。它是欧洲未被充分描述和资源不足的语言之一,在语音识别的背景下没有被广泛研究。我们探索了语音识别下游任务中卢森堡语语音表征的自监督多语言学习。我们表明,学习跨语言表征对于资源匮乏的语言(如卢森堡语)至关重要。仅使用4小时的标记语音学习跨语言表示并使用语言建模重新记录输出转录,实现了15.1%的单词错误率,并将迁移学习基线模型相对提高了33.1%,绝对提高了7.5%。将标记语音的数量增加到14小时会产生显着的性能提升,导致9.3%的单词错误率。模型和数据集可在https://hugging£ace.co/lemswasabi上获得
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