Biometric Authentication Using Noisy Electrocardiograms Acquired by Mobile Sensors

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Abstract

Electrocardiogram (ECG) signals from mobile sensors are expected to increase the availability of authentication in the emerging wearable device industry. However, mobile sensors provide a relatively lower quality signal than the conventional medical devices. This paper proposes a practical authentication procedure for ECG signals that collected via one-chip-solution mobile sensors. We designed a cascading bandpass filter for noise cancellation and suggest eight fiducial features. For classification-based authentication, we use the radial basis function kernel-based support vector machine showing the best performance among nine classifiers through experimental comparisons. In spite of noisy ECG signals in mobile sensors, we achieved 4.61% of the equal error rate (EER) on a single heartbeat, and 1.87% of EER on 15 s testing time on 175 subjects, which is a reasonable result and supports the usability of low-cost ECGs for biometric authentication.

Original languageEnglish
Article number7444130
Pages (from-to)1266-1273
Number of pages8
JournalIEEE Access
Volume4
DOIs
StatePublished - 2016

Keywords

  • Authentication
  • Biometric
  • BMD101
  • CardioChip
  • Electrocardiogram

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