Toward Synthetic Physical Fingerprint Targets

Author:

Ruzicka Laurenz1ORCID,Strobl Bernhard1ORCID,Bergmann Stephan2,Nolden Gerd2ORCID,Michalsky Tom3,Domscheit Christoph3ORCID,Priesnitz Jannis4ORCID,Blümel Florian5ORCID,Kohn Bernhard1,Heitzinger Clemens6ORCID

Affiliation:

1. Austrian Institute of Technology, 1210 Vienna, Austria

2. Bundesamt für Sicherheit in der Informationstechnik, 53175 Bonn, Germany

3. IDloop GmbH, 07745 Jena, Germany

4. Hochschule Darmstadt, 64295 Darmstadt, Germany

5. Biometrie-Evaluations-Zentrum (BEZ) Hochschule Bonn-Rhein-Sieg, 53757 Sankt Augustin, Germany

6. Institute of Information Systems Engineering/Research Unit of Machine Learning, Technische Universität Wien, 1040 Vienna, Austria

Abstract

Biometric fingerprint identification hinges on the reliability of its sensors; however, calibrating and standardizing these sensors poses significant challenges, particularly in regards to repeatability and data diversity. To tackle these issues, we propose methodologies for fabricating synthetic 3D fingerprint targets, or phantoms, that closely emulate real human fingerprints. These phantoms enable the precise evaluation and validation of fingerprint sensors under controlled and repeatable conditions. Our research employs laser engraving, 3D printing, and CNC machining techniques, utilizing different materials. We assess the phantoms’ fidelity to synthetic fingerprint patterns, intra-class variability, and interoperability across different manufacturing methods. The findings demonstrate that a combination of laser engraving or CNC machining with silicone casting produces finger-like phantoms with high accuracy and consistency for rolled fingerprint recordings. For slap recordings, direct laser engraving of flat silicone targets excels, and in the contactless fingerprint sensor setting, 3D printing and silicone filling provide the most favorable attributes. Our work enables a comprehensive, method-independent comparison of various fabrication methodologies, offering a unique perspective on the strengths and weaknesses of each approach. This facilitates a broader understanding of fingerprint recognition system validation and performance assessment.

Publisher

MDPI AG

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