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Machine learning-assisted wearable sensing systems for speech recognition and interaction

Author

Listed:
  • Tao Liu

    (Chongqing University)

  • Mingyang Zhang

    (Chongqing University)

  • Zhihao Li

    (Chongqing University)

  • Hanjie Dou

    (Chongqing University)

  • Wangyang Zhang

    (Chongqing University)

  • Jiaqian Yang

    (Chongqing University)

  • Pengfan Wu

    (Chongqing University)

  • Dongxiao Li

    (Chongqing University)

  • Xiaojing Mu

    (Chongqing University)

Abstract

The human voice stands out for its rich information transmission capabilities. However, voice communication is susceptible to interference from noisy environments and obstacles. Here, we propose a wearable wireless flexible skin-attached acoustic sensor (SAAS) capable of capturing the vibrations of vocal organs and skin movements, thereby enabling voice recognition and human-machine interaction (HMI) in harsh acoustic environments. This system utilizes a piezoelectric micromachined ultrasonic transducers (PMUT), which feature high sensitivity (-198 dB), wide bandwidth (10 Hz-20 kHz), and excellent flatness (±0.5 dB). Flexible packaging enhances comfort and adaptability during wear, while integration with the Residual Network (ResNet) architecture significantly improves the classification of laryngeal speech features, achieving an accuracy exceeding 96%. Furthermore, we also demonstrated SAAS’s data collection and intelligent classification capabilities in multiple HMI scenarios. Finally, the speech recognition system was able to recognize everyday sentences spoken by participants with an accuracy of 99.8% through a deep learning model. With advantages including a simple fabrication process, stable performance, easy integration, and low cost, SAAS presents a compelling solution for applications in voice control, HMI, and wearable electronics.

Suggested Citation

  • Tao Liu & Mingyang Zhang & Zhihao Li & Hanjie Dou & Wangyang Zhang & Jiaqian Yang & Pengfan Wu & Dongxiao Li & Xiaojing Mu, 2025. "Machine learning-assisted wearable sensing systems for speech recognition and interaction," Nature Communications, Nature, vol. 16(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-57629-5
    DOI: 10.1038/s41467-025-57629-5
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