CVSep 10, 2024

Few-Shot Learning: Expanding ID Cards Presentation Attack Detection to Unknown ID Countries

arXiv:2409.06842v14 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the challenge of generalizing presentation attack detection to unknown ID card countries, which is incremental in applying few-shot learning to a specific domain.

The paper tackles the problem of detecting presentation attacks on ID cards in remote verification systems, achieving competitive performance with as few as five unique identities and under 100 images per new country added.

This paper proposes a Few-shot Learning (FSL) approach for detecting Presentation Attacks on ID Cards deployed in a remote verification system and its extension to new countries. Our research analyses the performance of Prototypical Networks across documents from Spain and Chile as a baseline and measures the extension of generalisation capabilities of new ID Card countries such as Argentina and Costa Rica. Specifically targeting the challenge of screen display presentation attacks. By leveraging convolutional architectures and meta-learning principles embodied in Prototypical Networks, we have crafted a model that demonstrates high efficacy with Few-shot examples. This research reveals that competitive performance can be achieved with as Few-shots as five unique identities and with under 100 images per new country added. This opens a new insight for novel generalised Presentation Attack Detection on ID cards to unknown attacks.

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