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Boosting Generalization with Adaptive Style Techniques for Fingerprint Liveness Detection

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arxiv 2310.13573 v3 pith:N7AAK4QQ submitted 2023-10-20 cs.CV cs.AI

Boosting Generalization with Adaptive Style Techniques for Fingerprint Liveness Detection

classification cs.CV cs.AI
keywords fingerprintlivdetlivenessaccuracydetectiongeneralizationplacestyle
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce a high-performance fingerprint liveness feature extraction technique that secured first place in LivDet 2023 Fingerprint Representation Challenge. Additionally, we developed a practical fingerprint recognition system with 94.68% accuracy, earning second place in LivDet 2023 Liveness Detection in Action. By investigating various methods, particularly style transfer, we demonstrate improvements in accuracy and generalization when faced with limited training data. As a result, our approach achieved state-of-the-art performance in LivDet 2023 Challenges.

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