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Silent Speech Recognition with Strain Sensors and Deep Learning Analysis of Directional Facial Muscle Movement

  • Hyunjun Yoo
  • , Eunji Kim
  • , Jong Won Chung
  • , Hyeon Cho
  • , Sujin Jeong
  • , Heeseung Kim
  • , Dongju Jang
  • , Hayun Kim
  • , Jinsu Yoon
  • , Gae Hwang Lee
  • , Hyunbum Kang
  • , Joo Young Kim
  • , Youngjun Yun
  • , Sungroh Yoon
  • , Yongtaek Hong
  • Seoul National University
  • Samsung

Research output: Contribution to journalArticlepeer-review

38 Scopus citations

Abstract

Silent communication based on biosignals from facial muscle requires accurate detection of its directional movement and thus optimally positioning minimum numbers of sensors for higher accuracy of speech recognition with a minimal person-to-person variation. So far, previous approaches based on electromyogram or pressure sensors are ineffective in detecting the directional movement of facial muscles. Therefore, in this study, high-performance strain sensors are used for separately detecting x- and y-axis strain. Directional strain distribution data of facial muscle is obtained by applying three-dimensional digital image correlation. Deep learning analysis is utilized for identifying optimal positions of directional strain sensors. The recognition system with four directional strain sensors conformably attached to the face shows silent vowel recognition with 85.24% accuracy and even 76.95% for completely nonobserved subjects. These results show that detection of the directional strain distribution at the optimal facial points will be the key enabling technology for highly accurate silent speech recognition.

Original languageEnglish
Pages (from-to)54157-54169
Number of pages13
JournalACS Applied Materials and Interfaces
Volume14
Issue number48
DOIs
StatePublished - 7 Dec 2022

Keywords

  • deep learning
  • facial strain distribution
  • silent speech recognition
  • soft device
  • strain sensor
  • three-dimensional digital image correlation

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