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Diversity and Novelty MasterPrints: Generating Multiple DeepMasterPrints for Increased User Coverage

Authors :
Charity, M
Memon, Nasir
Jiang, Zehua
Sen, Abhi
Togelius, Julian
Publication Year :
2022

Abstract

This work expands on previous advancements in genetic fingerprint spoofing via the DeepMasterPrints and introduces Diversity and Novelty MasterPrints. This system uses quality diversity evolutionary algorithms to generate dictionaries of artificial prints with a focus on increasing coverage of users from the dataset. The Diversity MasterPrints focus on generating solution prints that match with users not covered by previously found prints, and the Novelty MasterPrints explicitly search for prints with more that are farther in user space than previous prints. Our multi-print search methodologies outperform the singular DeepMasterPrints in both coverage and generalization while maintaining quality of the fingerprint image output.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2209.04909
Document Type :
Working Paper