Generative models are gaining significant attention as potential catalysts for a novel industrial revolution. Since automated sample generation can be useful to solve privacy and data scarcity issues that usually affect learned biometric models, such technologies became widely spread in this field. In this paper, we assess the vulnerabilities of generative machine learning models concerning identity protection by designing and testing an identity inference attack on fingerprint datasets created by means of a generative adversarial network. Experimental results show that the proposed solution proves to be effective under different configurations and easily extendable to other biometric measurements.

Fingerprint membership and identity inference against generative adversarial networks

Cavasin, Saverio
Investigation
;
Mari, Daniele
Validation
;
Milani, Simone
Supervision
;
Conti, Mauro
Funding Acquisition
2024

Abstract

Generative models are gaining significant attention as potential catalysts for a novel industrial revolution. Since automated sample generation can be useful to solve privacy and data scarcity issues that usually affect learned biometric models, such technologies became widely spread in this field. In this paper, we assess the vulnerabilities of generative machine learning models concerning identity protection by designing and testing an identity inference attack on fingerprint datasets created by means of a generative adversarial network. Experimental results show that the proposed solution proves to be effective under different configurations and easily extendable to other biometric measurements.
2024
   European Union under the Italian National Recovery and Resilience Plan (NRRP) of NextGenerationEU, partnership on "Telecommunications of the Future"
   PNRR
   European Union
   NPRR
   PE00000001

   "Dottorati di ricerca" 2021/2022
   Fondazione CaRiPaRo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3525282
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