English

Layout-Aware Representation Learning for Open-Set ID Fraud Discovery

Computer Vision and Pattern Recognition 2026-05-08 v1 Artificial Intelligence Machine Learning

Abstract

Identity-document fraud detection is not a stationary binary classification problem. Adaptive attackers modify templates and fabrication pipelines, making historical fraud labels stale, and successful forgeries recur at scale as coherent campaigns. We therefore study layout-aware representation learning for open-set fraud discovery rather than only closed-set classification. We adapt DINOv3 to the document domain via context-aware SimMIM fine-tuning and supervised metric learning with composite loss that encourages inter-class separability and intra-class compactness. The model is trained with U.S. IDs only. With a lightweight MLP and softmax classifier, the embedding achieves 99.83% layout classification accuracy on Canadian layouts. Moreover, on a dataset of 20,448 Canadian IDs, embedding-space analysis surfaces 276 adaptive physical-fraud cases, including 222 not surfaced by incumbent detectors. The embedding supports similarity-based expansion from a single confirmed seed to additional related cases not linked by conventional metadata graphs. The layout-aware document embeddings provide a production-aligned basis for discovering novel and campaign-scale fraud under distribution shift.

Keywords

Cite

@article{arxiv.2605.05215,
  title  = {Layout-Aware Representation Learning for Open-Set ID Fraud Discovery},
  author = {Jinxing Li and Nicholas Ren and Cathy Chang and Hongkai Pan and Daniel George},
  journal= {arXiv preprint arXiv:2605.05215},
  year   = {2026}
}
R2 v1 2026-07-01T12:53:19.955Z