Score: 2

FakeIDet: Exploring Patches for Privacy-Preserving Fake ID Detection

Published: April 10, 2025 | arXiv ID: 2504.07761v2

By: Javier Muñoz-Haro , Ruben Tolosana , Ruben Vera-Rodriguez and more

Potential Business Impact:

Finds fake IDs even with private info hidden.

Business Areas:
Intrusion Detection Information Technology, Privacy and Security

Verifying the authenticity of identity documents (IDs) has become a critical challenge for real-life applications such as digital banking, crypto-exchanges, renting, etc. This study focuses on the topic of fake ID detection, covering several limitations in the field. In particular, there are no publicly available data from real IDs for proper research in this area, and most published studies rely on proprietary internal databases that are not available for privacy reasons. In order to advance this critical challenge of real data scarcity that makes it so difficult to advance the technology of machine learning-based fake ID detection, we introduce a new patch-based methodology that trades off privacy and performance, and propose a novel patch-wise approach for privacy-aware fake ID detection: FakeIDet. In our experiments, we explore: i) two levels of anonymization for an ID (i.e., fully- and pseudo-anonymized), and ii) different patch size configurations, varying the amount of sensitive data visible in the patch image. State-of-the-art methods, such as vision transformers and foundation models, are considered as backbones. Our results show that, on an unseen database (DLC-2021), our proposal for fake ID detection achieves 13.91% and 0% EERs at the patch and the whole ID level, showing a good generalization to other databases. In addition to the path-based methodology introduced and the new FakeIDet method based on it, another key contribution of our article is the release of the first publicly available database that contains 48,400 patches from real and fake IDs, called FakeIDet-db, together with the experimental framework.

Country of Origin
🇪🇸 Spain

Repos / Data Links

Page Count
9 pages

Category
Computer Science:
CV and Pattern Recognition