GRU-AUNet: A Domain Adaptation Framework for Contactless Fingerprint Presentation Attack Detection
By: Banafsheh Adami, Nima Karimian
Potential Business Impact:
Stops fake fingerprints from tricking scanners.
Although contactless fingerprints offer user comfort, they are more vulnerable to spoofing. The current solution for anti-spoofing in the area of contactless fingerprints relies on domain adaptation learning, limiting their generalization and scalability. To address these limitations, we introduce GRU-AUNet, a domain adaptation approach that integrates a Swin Transformer-based UNet architecture with GRU-enhanced attention mechanisms, a Dynamic Filter Network in the bottleneck, and a combined Focal and Contrastive Loss function. Trained in both genuine and spoof fingerprint images, GRU-AUNet demonstrates robust resilience against presentation attacks, achieving an average BPCER of 0.09\% and APCER of 1.2\% in the CLARKSON, COLFISPOOF, and IIITD datasets, outperforming state-of-the-art domain adaptation methods.
Similar Papers
Ridgeformer: Mutli-Stage Contrastive Training For Fine-grained Cross-Domain Fingerprint Recognition
CV and Pattern Recognition
Reads fingerprints without touching them.
Innovative Deep Learning Architecture for Enhanced Altered Fingerprint Recognition
CV and Pattern Recognition
Finds fake fingerprints even when changed.
Lightweight MobileNetV1+GRU for ECG Biometric Authentication: Federated and Adversarial Evaluation
Cryptography and Security
Unlocks secret doors using your heartbeat.