Introduces a multi-domain benchmark for detecting AI-generated text-rich images from GPT-Image-2 and evaluates five detectors showing domain-dependent performance and JPEG sensitivity.
Aiforge-doc: A benchmark for detecting ai-forged tampering in financial and form documents, 2026
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SynCred-Bench shows that 15 MLLMs reach only 10.5% TPR, open-source detectors under 5%, commercial APIs 57.6%, and humans 63% TPR at 5% FPR when identifying AI-generated images with synthetic credibility.
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A Multi-Domain Benchmark for Detecting AI-Generated Text-Rich Images from GPT-Image-2
Introduces a multi-domain benchmark for detecting AI-generated text-rich images from GPT-Image-2 and evaluates five detectors showing domain-dependent performance and JPEG sensitivity.
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SynCred-Bench: Benchmarking Synthetic Credibility in AI-Generated Visual Misinformation
SynCred-Bench shows that 15 MLLMs reach only 10.5% TPR, open-source detectors under 5%, commercial APIs 57.6%, and humans 63% TPR at 5% FPR when identifying AI-generated images with synthetic credibility.