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Cybernetics And Systems Analysis
International Theoretical Science Journal
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UDC 681.32
L.S. Fainzilberg1


1 International Scientific and Training Center of Information Technologies and Systems, National Academy of Sciences of Ukraine and Ministry of Education and Science of Ukraine, Kyiv, Ukraine

fainzilberg@gmail.com

PHASE PORTRAIT OF ELECTROCARDIOGRAPHY AS A MEANS OF BIOMETRY

Abstract. The author develops an approach to constructing biometric systems based on the analysis of the phase portrait of a single-channel electrocardiogram (ECG) of the test subject. The rules providing the solution of the problem of identification and verification (authentication) of the person are proposed. Experimental studies have shown that the proposed decision rules ensure 96.6% reliability of identification in the analysis of 3,133 ECGs of 167 users and 99.5% reliability of verification in the analysis of 204 ECGs of 62 different individuals. Prospects for further research aimed at solving practical biometric problems are outlined.

Keywords: electrocardiogram, phase portrait, biometric system, Hausdorf distance, identification and verification of personality.


FULL TEXT

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