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IDNet: A Novel Dataset for Identity Document Analysis and Fraud Detection

Authors :
Guan, Hong
Wang, Yancheng
Xie, Lulu
Nag, Soham
Goel, Rajeev
Swamy, Niranjan Erappa Narayana
Yang, Yingzhen
Xiao, Chaowei
Prisby, Jonathan
Maciejewski, Ross
Zou, Jia
Publication Year :
2024

Abstract

Effective fraud detection and analysis of government-issued identity documents, such as passports, driver's licenses, and identity cards, are essential in thwarting identity theft and bolstering security on online platforms. The training of accurate fraud detection and analysis tools depends on the availability of extensive identity document datasets. However, current publicly available benchmark datasets for identity document analysis, including MIDV-500, MIDV-2020, and FMIDV, fall short in several respects: they offer a limited number of samples, cover insufficient varieties of fraud patterns, and seldom include alterations in critical personal identifying fields like portrait images, limiting their utility in training models capable of detecting realistic frauds while preserving privacy. In response to these shortcomings, our research introduces a new benchmark dataset, IDNet, designed to advance privacy-preserving fraud detection efforts. The IDNet dataset comprises 837,060 images of synthetically generated identity documents, totaling approximately 490 gigabytes, categorized into 20 types from $10$ U.S. states and 10 European countries. We evaluate the utility and present use cases of the dataset, illustrating how it can aid in training privacy-preserving fraud detection methods, facilitating the generation of camera and video capturing of identity documents, and testing schema unification and other identity document management functionalities.<br />Comment: 40 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.01690
Document Type :
Working Paper