2022
DOI: 10.48550/arxiv.2211.05103
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Accidental Learners: Spoken Language Identification in Multilingual Self-Supervised Models

Abstract: In this paper, we extend previous self-supervised approaches for language identification by experimenting with Conformer based architecture in a multilingual pre-training paradigm. We find that pre-trained speech models optimally encode language discriminatory information in lower layers. Further, we demonstrate that the embeddings obtained from these layers are significantly robust to classify unseen languages and different acoustic environments without additional training. After fine-tuning a pre-trained Con… Show more

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