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Large scale weakly and semi-supervised learning for low-resource video ASR

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arxiv 2005.07850 v2 pith:WZJ5W3FH submitted 2020-05-16 eess.AS cs.CLcs.SD

Large scale weakly and semi-supervised learning for low-resource video ASR

classification eess.AS cs.CLcs.SD
keywords approachesbaselinedistillationencoder-decoderlargelevellow-resourcemethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Many semi- and weakly-supervised approaches have been investigated for overcoming the labeling cost of building high quality speech recognition systems. On the challenging task of transcribing social media videos in low-resource conditions, we conduct a large scale systematic comparison between two self-labeling methods on one hand, and weakly-supervised pretraining using contextual metadata on the other. We investigate distillation methods at the frame level and the sequence level for hybrid, encoder-only CTC-based, and encoder-decoder speech recognition systems on Dutch and Romanian languages using 27,000 and 58,000 hours of unlabeled audio respectively. Although all approaches improved upon their respective baseline WERs by more than 8%, sequence-level distillation for encoder-decoder models provided the largest relative WER reduction of 20% compared to the strongest data-augmented supervised baseline.

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