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Chinese Tone Recognition Based on 3D Dynamic Muscle Information

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  • JianRong Wang
  • Li Wan
  • Ju Zhang
  • Qiang Fang
  • Fan Yang
  • Jing Hu

Abstract

To advance the study of lip-reading recognition in accordance with Chinese pronunciation norms, we carefully investigated Mandarin tone recognition based on visual information, in contrast to that of the previous character-based Chinese lip reading technique. In this paper, we mainly studied the vowel tonal transformation in Chinese pronunciation and designed a lightweight skipping convolution network framework (SCNet). And, the experimental results showed that the SCNet was sensitive to the more detailed description of the pitch change than that of the traditional model and achieved a better tone recognition effect and outstanding antiinterference performance. In addition, we conducted a more detailed study on the assistance of the deep texture information in lip-reading recognition. We found that the deep texture information has a significant effect on tone recognition, and the possibility of multimodal lip reading in Chinese tone recognition was confirmed. Similarly, we verified the role of the SCNet syllable tone recognition and found that the vowel and syllable tone recognition accuracy of our model was as high as 97.3%, which also showed the robustness of our proposed method for Chinese tone recognition and it can be widely used for tone recognition.

Suggested Citation

  • JianRong Wang & Li Wan & Ju Zhang & Qiang Fang & Fan Yang & Jing Hu, 2020. "Chinese Tone Recognition Based on 3D Dynamic Muscle Information," Discrete Dynamics in Nature and Society, Hindawi, vol. 2020, pages 1-9, May.
  • Handle: RePEc:hin:jnddns:5476896
    DOI: 10.1155/2020/5476896
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