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Biomimetic and flexible piezoelectric mobile acoustic sensors with multiresonant ultrathin structures for machine learning biometrics

  • Hee Seung Wang
  • , Seong Kwang Hong
  • , Jae Hyun Han
  • , Young Hoon Jung
  • , Hyun Kyu Jeong
  • , Tae Hong Im
  • , Chang Kyu Jeong
  • , Bo Yeon Lee
  • , Gwangsu Kim
  • , Chang D. Yoo
  • , Keon Jae Lee*
  • *Corresponding author for this work
  • Korea Advanced Institute of Science and Technology
  • Korea Institute of Machinery and Materials

Research output: Contribution to journalJournal articlepeer-review

Abstract

Flexible resonant acoustic sensors have attracted substantial attention as an essential component for intuitive human-machine interaction (HMI) in the future voice user interface (VUI). Several researches have been reported by mimicking the basilar membrane but still have dimensional drawback due to limitation of controlling a multifrequency band and broadening resonant spectrum for full-cover phonetic frequencies. Here, highly sensitive piezoelectric mobile acoustic sensor (PMAS) is demonstrated by exploiting an ultrathin membrane for biomimetic frequency band control. Simulation results prove that resonant bandwidth of a piezoelectric film can be broadened by adopting a lead-zirconate-titanate (PZT) membrane on the ultrathin polymer to cover the entire voice spectrum. Machine learning-based biometric authentication is demonstrated by the integrated acoustic sensor module with an algorithm processor and customized Android app. Last, exceptional error rate reduction in speaker identification is achieved by a PMAS module with a small amount of training data, compared to a conventional microelectromechanical system microphone.

Original languageEnglish
Article numbereabe5683
JournalScience Advances
Volume7
Issue number7
DOIs
StatePublished - 2021.02.12

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