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arxiv 2202.07855 v2 pith:N3KRR43P submitted 2022-02-16 cs.SD cs.CLeess.AS

Conversational Speech Recognition By Learning Conversation-level Characteristics

classification cs.SD cs.CLeess.AS
keywords conversationalmodelcharacteristicsspeechcoherenceconversation-levelpreferenceproposed
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Conversational automatic speech recognition (ASR) is a task to recognize conversational speech including multiple speakers. Unlike sentence-level ASR, conversational ASR can naturally take advantages from specific characteristics of conversation, such as role preference and topical coherence. This paper proposes a conversational ASR model which explicitly learns conversation-level characteristics under the prevalent end-to-end neural framework. The highlights of the proposed model are twofold. First, a latent variational module (LVM) is attached to a conformer-based encoder-decoder ASR backbone to learn role preference and topical coherence. Second, a topic model is specifically adopted to bias the outputs of the decoder to words in the predicted topics. Experiments on two Mandarin conversational ASR tasks show that the proposed model achieves a maximum 12% relative character error rate (CER) reduction.

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