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Speaker-Targeted Audio-Visual Models for Speech Recognition in Cocktail-Party Environments (1906.05962v1)

Published 13 Jun 2019 in eess.AS, cs.CL, cs.CV, and cs.SD

Abstract: Speech recognition in cocktail-party environments remains a significant challenge for state-of-the-art speech recognition systems, as it is extremely difficult to extract an acoustic signal of an individual speaker from a background of overlapping speech with similar frequency and temporal characteristics. We propose the use of speaker-targeted acoustic and audio-visual models for this task. We complement the acoustic features in a hybrid DNN-HMM model with information of the target speaker's identity as well as visual features from the mouth region of the target speaker. Experimentation was performed using simulated cocktail-party data generated from the GRID audio-visual corpus by overlapping two speakers's speech on a single acoustic channel. Our audio-only baseline achieved a WER of 26.3%. The audio-visual model improved the WER to 4.4%. Introducing speaker identity information had an even more pronounced effect, improving the WER to 3.6%. Combining both approaches, however, did not significantly improve performance further. Our work demonstrates that speaker-targeted models can significantly improve the speech recognition in cocktail party environments.

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Authors (3)
  1. Guan-Lin Chao (5 papers)
  2. William Chan (54 papers)
  3. Ian Lane (29 papers)
Citations (12)