Multimodal Semi-Supervised Learning Framework for Punctuation Prediction in Conversational Speech

Monica Sunkara, Srikanth Ronanki, Dhanush Bekal, Sravan Bodapati, Katrin Kirchhoff
2020 Interspeech 2020  
In this work, we explore a multimodal semi-supervised learning approach for punctuation prediction by learning representations from large amounts of unlabelled audio and text data. Conventional approaches in speech processing typically use forced alignment to encoder per frame acoustic features to word level features and perform multimodal fusion of the resulting acoustic and lexical representations. As an alternative, we explore attention based multimodal fusion and compare its performance
more » ... forced alignment based fusion. Experiments conducted on the Fisher corpus show that our proposed approach achieves ∼6-9% and ∼3-4% absolute improvement (F1 score) over the baseline BLSTM model on reference transcripts and ASR outputs respectively. We further improve the model robustness to ASR errors by performing data augmentation with N-best lists which achieves up to an additional ∼2-6% improvement on ASR outputs. We also demonstrate the effectiveness of semi-supervised learning approach by performing ablation study on various sizes of the corpus. When trained on 1 hour of speech and text data, the proposed model achieved ∼9-18% absolute improvement over baseline model.
doi:10.21437/interspeech.2020-3074 dblp:conf/interspeech/SunkaraRBBK20 fatcat:mcnbaynjqvexnldmqolu22egaa