CVCRLGMay 21, 2017

DeepMasterPrints: Generating MasterPrints for Dictionary Attacks via Latent Variable Evolution

arXiv:1705.07386v438 citations
Originality Incremental advance
AI Analysis

This work addresses security risks in fingerprint authentication systems, representing an incremental improvement over prior feature-level attacks.

The paper tackled the vulnerability of fingerprint recognition systems to dictionary attacks by generating synthetic fingerprint images called DeepMasterPrints, which achieved much superior attack accuracy compared to previous methods.

Recent research has demonstrated the vulnerability of fingerprint recognition systems to dictionary attacks based on MasterPrints. MasterPrints are real or synthetic fingerprints that can fortuitously match with a large number of fingerprints thereby undermining the security afforded by fingerprint systems. Previous work by Roy et al. generated synthetic MasterPrints at the feature-level. In this work we generate complete image-level MasterPrints known as DeepMasterPrints, whose attack accuracy is found to be much superior than that of previous methods. The proposed method, referred to as Latent Variable Evolution, is based on training a Generative Adversarial Network on a set of real fingerprint images. Stochastic search in the form of the Covariance Matrix Adaptation Evolution Strategy is then used to search for latent input variables to the generator network that can maximize the number of impostor matches as assessed by a fingerprint recognizer. Experiments convey the efficacy of the proposed method in generating DeepMasterPrints. The underlying method is likely to have broad applications in fingerprint security as well as fingerprint synthesis.

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