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A Comparison of Discrete Latent Variable Models for Speech Representation Learning (2010.14230v1)

Published 24 Oct 2020 in eess.AS, cs.AI, cs.LG, and cs.SD

Abstract: Neural latent variable models enable the discovery of interesting structure in speech audio data. This paper presents a comparison of two different approaches which are broadly based on predicting future time-steps or auto-encoding the input signal. Our study compares the representations learned by vq-vae and vq-wav2vec in terms of sub-word unit discovery and phoneme recognition performance. Results show that future time-step prediction with vq-wav2vec achieves better performance. The best system achieves an error rate of 13.22 on the ZeroSpeech 2019 ABX phoneme discrimination challenge

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Authors (3)
  1. Henry Zhou (5 papers)
  2. Alexei Baevski (39 papers)
  3. Michael Auli (73 papers)
Citations (10)

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