AI RESEARCH
Field-Localized Forgery Detection for Digital Identity Documents
arXiv CS.AI
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ArXi:2605.09089v1 Announce Type: cross Digital identity verification systems used in remote onboarding rely on document images to authenticate users, making them vulnerable to localized manipulations of key identity fields such as facial photographs and textual information. Existing forgery detection methods, developed primarily for natural-image forensics, show limited transferability to structured identity documents. We propose FLiD, a lightweight field-localized framework that targets critical identity regions rather than processing full-document images.