ID-Card Synthetic Generation: Toward a Simulated Bona fide Dataset
By: Qingwen Zeng , Juan E. Tapia , Izan Garcia and more
Potential Business Impact:
Makes fake IDs harder to spot.
Nowadays, the development of a Presentation Attack Detection (PAD) system for ID cards presents a challenge due to the lack of images available to train a robust PAD system and the increase in diversity of possible attack instrument species. Today, most algorithms focus on generating attack samples and do not take into account the limited number of bona fide images. This work is one of the first to propose a method for mimicking bona fide images by generating synthetic versions of them using Stable Diffusion, which may help improve the generalisation capabilities of the detector. Furthermore, the new images generated are evaluated in a system trained from scratch and in a commercial solution. The PAD system yields an interesting result, as it identifies our images as bona fide, which has a positive impact on detection performance and data restrictions.
Similar Papers
SynID: Passport Synthetic Dataset for Presentation Attack Detection
CV and Pattern Recognition
Finds fake ID cards using fake and real pictures.
Identity Card Presentation Attack Detection: A Systematic Review
Cryptography and Security
Stops fake IDs from fooling online systems.
Privacy-Aware Detection of Fake Identity Documents: Methodology, Benchmark, and Improved Algorithms (FakeIDet2)
Cryptography and Security
Detects fake IDs even when they look real.