The interest towards biometric approach to identity verification is high, because of the need to protect everything that could have a value for some purpose. Face recognition is one of these biometric techniques, having its greater advantage in requiring a limited interaction by user. We present a Face Recognition System (FRS) based on multiple neural networks using a belief revision mechanism. Each network is associated to an a-priori reliability value for each identity stored in database, modelling the specific skill of the modules composing the system with the recognition of a given subject. Every time a network is in conflict with the global response, it is forced to retrain itself, subjecting the system to a continuous learning. The main goal of this work is to carry out some preliminary tests to evaluate accuracy and robustness of FRS with “subject-dependent” reliability values, when some changes can affect the considered features. Tests over digitally aged faces are also conducted.
Subject-dependent degrees of reliability to solve a face recognition problem using multiple neural networks / Sernani, Paolo; Claudi, Andrea; Dolcini, Gianluca; Palazzo, Luca; Biancucci, Gianluigi; Dragoni, Aldo Franco. - STAMPA. - (2013), pp. 11-14. (Intervento presentato al convegno 55th International Symposium ELMAR 2013 tenutosi a Zadar, Croatia nel 25-27 Sept. 2013).
Subject-dependent degrees of reliability to solve a face recognition problem using multiple neural networks
SERNANI, PAOLO;CLAUDI, ANDREA;DOLCINI, Gianluca;PALAZZO, Luca;BIANCUCCI, Gianluigi;DRAGONI, Aldo Franco
2013-01-01
Abstract
The interest towards biometric approach to identity verification is high, because of the need to protect everything that could have a value for some purpose. Face recognition is one of these biometric techniques, having its greater advantage in requiring a limited interaction by user. We present a Face Recognition System (FRS) based on multiple neural networks using a belief revision mechanism. Each network is associated to an a-priori reliability value for each identity stored in database, modelling the specific skill of the modules composing the system with the recognition of a given subject. Every time a network is in conflict with the global response, it is forced to retrain itself, subjecting the system to a continuous learning. The main goal of this work is to carry out some preliminary tests to evaluate accuracy and robustness of FRS with “subject-dependent” reliability values, when some changes can affect the considered features. Tests over digitally aged faces are also conducted.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.