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A Survey on Synthetic Biometrics: Fingerprint, Face, Iris and Vascular Patterns

Andrey Makrushin, Andreas Uhl, Jana Dittmann

2023IEEE Access28 citationsDOIOpen Access PDF

Abstract

Synthetic biometric samples are created with an ultimate goal of getting around privacy concerns, mitigating biases in biometric datasets, and reducing the sample acquisition effort to enable large-scale evaluations. The recent breakthrough in the development of neural generative models shifted the focus from image synthesis by mathematical modeling of biometric modalities to data-driven image generation. This paradigm shift on the one hand greatly improves the realism of synthetic biometric samples and therefore enables new use cases, but on the other hand new challenges and concerns arise. Despite their realism, synthetic samples have to be checked for appropriateness for the tasks they are intended which includes new quality metrics. Here, we highlight the benefits of using synthetic samples, review the use cases, and summarize and categorize the most prominent studies on synthetic biometrics aiming at showing recent progress and the direction of future research.

Topics & Concepts

BiometricsFingerprint (computing)Computer scienceIRIS (biosensor)Face (sociological concept)Fingerprint recognitionIris recognitionPattern recognition (psychology)Artificial intelligenceComputer visionSocial scienceSociologyBiometric Identification and SecurityFace recognition and analysisUser Authentication and Security Systems
A Survey on Synthetic Biometrics: Fingerprint, Face, Iris and Vascular Patterns | Litcius