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GRU-AUNet: A Domain Adaptation Framework for Contactless Fingerprint Presentation Attack Detection

1 April 2025
Banafsheh Adami
Nima Karimian
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Abstract

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.

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@article{adami2025_2504.01213,
  title={ GRU-AUNet: A Domain Adaptation Framework for Contactless Fingerprint Presentation Attack Detection },
  author={ Banafsheh Adami and Nima Karimian },
  journal={arXiv preprint arXiv:2504.01213},
  year={ 2025 }
}
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