Synthetic Fingerprint generation techniques and associated tools (e.g., SFinGe) were introduced more than 15 years ago. The main aim was to generate large databases for performance evaluation without allocating huge amount of resources for acquisition campaigns and, at the same time, to conform with the privacy directives that in many countries limit the exchange of biometric data. While the original scope remains central today, since the generation of very large synthetic dataset is crucial to predict accuracy on very-large scenarios, new security needs (such as detecting altered fingerprints) and algorithms improvements (supervised learning approaches) are continuously renewing interest in the generation of synthetic fingerprints.
Raffaele, C., Matteo, F., Davide, M. (2018). Generating synthetic fingerprints. London : IET [10.1049/PBSE008E_ch8].
Generating synthetic fingerprints
Raffaele Cappelli;Matteo Ferrara
;Davide Maltoni
2018
Abstract
Synthetic Fingerprint generation techniques and associated tools (e.g., SFinGe) were introduced more than 15 years ago. The main aim was to generate large databases for performance evaluation without allocating huge amount of resources for acquisition campaigns and, at the same time, to conform with the privacy directives that in many countries limit the exchange of biometric data. While the original scope remains central today, since the generation of very large synthetic dataset is crucial to predict accuracy on very-large scenarios, new security needs (such as detecting altered fingerprints) and algorithms improvements (supervised learning approaches) are continuously renewing interest in the generation of synthetic fingerprints.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.