Preprint / Version 0

Poster: Recognizing Hidden-in-the-Ear Private Key for Reliable Silent Speech Interface Using Multi-Task Learning

Authors

  • Xuefu Dong
  • Liqiang Xu
  • Lixing He
  • Zengyi Han
  • Ken Christofferson
  • Yifei Chen
  • Akihito Taya
  • Yuuki Nishiyama
  • Kaoru Sezaki

Abstract

Silent speech interface (SSI) enables hands-free input without audible vocalization, but most SSI systems do not verify speaker identity. We present HEar-ID, which uses consumer active noise-canceling earbuds to capture low-frequency "whisper" audio and high-frequency ultrasonic reflections. Features from both streams pass through a shared encoder, producing embeddings that feed a contrastive branch for user authentication and an SSI head for silent spelling recognition. This design supports decoding of 50 words while reliably rejecting impostors, all on commodity earbuds with a single model. Experiments demonstrate that HEar-ID achieves strong spelling accuracy and robust authentication.

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Posted

2025-12-18