Sensors (Feb 2023)

ArtiLock: Smartphone User Identification Based on Physiological and Behavioral Features of Monosyllable Articulation

  • Aslan B. Wong,
  • Ziqi Huang,
  • Xia Chen,
  • Kaishun Wu

DOI
https://doi.org/10.3390/s23031667
Journal volume & issue
Vol. 23, no. 3
p. 1667

Abstract

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Although voice authentication is generally secure, voiceprint-based authentication methods have the drawback of being affected by environmental noise, long passphrases, and large registered samples. Therefore, we present a breakthrough idea for smartphone user authentication by analyzing articulation and integrating the physiology and behavior of the vocal tract, tongue position, and lip movement to expose the uniqueness of individuals while making utterances. The key idea is to leverage the smartphone speaker and microphone to simultaneously transmit and receive speech and ultrasonic signals, construct identity-related features, and determine whether a single utterance is a legitimate user or an attacker. Physiological authentication methods prevent other users from copying or reproducing passwords. Compared to other types of behavioral authentication, the system is more accurately able to recognize the user’s identity and adapt accordingly to environmental variations. The proposed system requires a smaller number of samples because single utterances are utilized, resulting in a user-friendly system that resists mimicry attacks with an average accuracy of 99% and an equal error rate of 0.5% under the three different surroundings.

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