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Spectral Salt-and-Pepper Patch Masking for Self-Supervised Speech Representation Learning

Author

Listed:
  • June-Woo Kim

    (Department of Artificial Intelligence, Kyungpook National University, Daegu 41566, Republic of Korea)

  • Hoon Chung

    (Electronics and Telecommunications Research Institute, Daejeon 34129, Republic of Korea)

  • Ho-Young Jung

    (Department of Artificial Intelligence, Kyungpook National University, Daegu 41566, Republic of Korea)

Abstract

Recent advanced systems in the speech recognition domain use large Transformer neural networks that have been pretrained on massive speech data. General methods in the deep learning area have been frequently shared across various domains, and the Transformer model can also be used effectively across speech and image. In this paper, we introduce a novel masking method for self-supervised speech representation learning with salt-and-pepper (S&P) mask which is commonly used in computer vision. The proposed scheme includes consecutive quadrilateral-shaped S&P patches randomly contaminating the input speech spectrum. Furthermore, we modify the standard S&P mask to make it appropriate for the speech domain. In order to validate the effect of the proposed spectral S&P patch masking for the self-supervised representation learning approach, we conduct the pretraining and downstream experiments with two languages, English and Korean. To this end, we pretrain the speech representation model using each dataset and evaluate the pretrained models for feature extraction and fine-tuning performance on varying downstream tasks, respectively. The experimental outcomes clearly illustrate that the proposed spectral S&P patch masking is effective for various downstream tasks when combined with the conventional masking methods.

Suggested Citation

  • June-Woo Kim & Hoon Chung & Ho-Young Jung, 2023. "Spectral Salt-and-Pepper Patch Masking for Self-Supervised Speech Representation Learning," Mathematics, MDPI, vol. 11(15), pages 1-22, August.
  • Handle: RePEc:gam:jmathe:v:11:y:2023:i:15:p:3418-:d:1211344
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    References listed on IDEAS

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    1. Charles R. Harris & K. Jarrod Millman & Stéfan J. Walt & Ralf Gommers & Pauli Virtanen & David Cournapeau & Eric Wieser & Julian Taylor & Sebastian Berg & Nathaniel J. Smith & Robert Kern & Matti Picu, 2020. "Array programming with NumPy," Nature, Nature, vol. 585(7825), pages 357-362, September.
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