Authentication is becoming ever more important in computer-based applications because the amount of sensitive data stored in such systems is growing. However, in embedded computer-system applications, authentication is difficult to implement because resources are scarce. Using fuzzy logic and artificial neural networks to process biometric data can yield improvements in authentication performance by limiting memory and processing-power requirements. A multibiometric platform that combines voiceprint and fingerprint authentication has been developed. It uses traditional pattern-matching algorithms to match hard-biometric features. An artificial neural network was trained to match soft-biometric features. A fuzzy logic inference engine performs smart decision fusion and authentication. Finally, a digital signal processor is used to embed the entire identification system. The embedded implementation demonstrates that improvement in performance is attainable, despite limited system resources.

Fuzzy logic and artificial neural networks for advanced authentication using soft biometric data / M. Malcangi - In: Engineering applications of neural networks : 11th International Conference, EANN 2009, London, UK, August 27-29, 2009 : proceedings / [a cura di] D. Palmer-Brown [et al.]. - Berlin : Springer, 2009. - ISBN 9783642039683. - pp. 67-78 (( Intervento presentato al 11th. convegno International Conference on Engineering Applications of Neural Networks tenutosi a London nel 2009 [10.1007/978-3-642-03969-0_7].

Fuzzy logic and artificial neural networks for advanced authentication using soft biometric data

M. Malcangi
Primo
2009

Abstract

Authentication is becoming ever more important in computer-based applications because the amount of sensitive data stored in such systems is growing. However, in embedded computer-system applications, authentication is difficult to implement because resources are scarce. Using fuzzy logic and artificial neural networks to process biometric data can yield improvements in authentication performance by limiting memory and processing-power requirements. A multibiometric platform that combines voiceprint and fingerprint authentication has been developed. It uses traditional pattern-matching algorithms to match hard-biometric features. An artificial neural network was trained to match soft-biometric features. A fuzzy logic inference engine performs smart decision fusion and authentication. Finally, a digital signal processor is used to embed the entire identification system. The embedded implementation demonstrates that improvement in performance is attainable, despite limited system resources.
Artificial neural networks; digital signal processor; embedded personal authentication systems; fuzzy logic engine; multibiometrics; soft-biometric data
Settore INF/01 - Informatica
2009
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/142597
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