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Altered Fingerprint Detection Method Based on Orientation Field Coherence Models

Імамвердієв Я.Н.1
1 Інститут інформаційних технологій НАН Азербайджану

Повний текст (PDF)

УДК: 004.056
Мова публікації: Російська
Stuc. intelekt. 2012; 17; (1):86-96

Анотація: Widespread use of biometric technologies determines various problems related to their security. One of the important problems is detection of forged and altered fingerprints. An efficient method for altered fingerprints detection on the basis of the modified model of the orientation field coherence is discovered. The results of experiments show that the method detects altered fingerprints well. The proposed method does not require additional processing resources and it uses the results of the traditional blocks of existing fingerprint recognition systems.

Ключові слова: artificial modified papillary patterns of fingerprints, artificial modified papillary patterns of fingerprints detection, orientation field coherence, support vector machine.

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