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Continuous Speech Separation with Conformer (2008.05773v2)

Published 13 Aug 2020 in eess.AS and cs.CL

Abstract: Continuous speech separation plays a vital role in complicated speech related tasks such as conversation transcription. The separation model extracts a single speaker signal from a mixed speech. In this paper, we use transformer and conformer in lieu of recurrent neural networks in the separation system, as we believe capturing global information with the self-attention based method is crucial for the speech separation. Evaluating on the LibriCSS dataset, the conformer separation model achieves state of the art results, with a relative 23.5% word error rate (WER) reduction from bi-directional LSTM (BLSTM) in the utterance-wise evaluation and a 15.4% WER reduction in the continuous evaluation.

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Authors (9)
  1. Sanyuan Chen (28 papers)
  2. Yu Wu (196 papers)
  3. Zhuo Chen (319 papers)
  4. Jian Wu (315 papers)
  5. Jinyu Li (164 papers)
  6. Takuya Yoshioka (77 papers)
  7. Chengyi Wang (32 papers)
  8. Shujie Liu (101 papers)
  9. Ming Zhou (182 papers)
Citations (122)

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