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Openfinger: Towards a Combination of Discriminative Power of Fingerprints and Finger Vein Patterns in Multimodal Biometric System


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eISSN:
1210-3195
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Inglés
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3 veces al año
Temas de la revista:
Mathematics, General Mathematics