AI RESEARCH
Causal Fingerprints of AI Generative Models
arXiv CS.CV
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ArXi:2509.15406v2 Announce Type: replace AI generative models leave implicit traces in their generated images, which are commonly referred to as model fingerprints and are exploited for source attribution. Prior methods rely on model-specific cues or synthesis artifacts, yielding limited fingerprints that may generalize poorly across different generative models. We argue that a complete model fingerprint should reflect the causality between image provenance and model traces, a direction largely unexplored.