AEGIS: A Holistic Benchmark for Evaluating Forensic Analysis of AI-Generated Academic Images
Bo Zhang, Tzu-Yen Ma, Zichen Tang, Junpeng Ding, Zirui Wang + 16 more
TLDR
AEGIS is a new benchmark for evaluating forensic analysis of AI-generated academic images, revealing current methods struggle with detection and localization.
Key contributions
- Introduces AEGIS, a holistic benchmark for AI-generated academic image forensics.
- Covers 7 academic categories and 39 subtypes, exposing intrinsic forensic difficulty.
- Simulates 4 forgery strategies across 25 generative models, showing forensics lag.
- Evaluates detection, reasoning, and localization, revealing complementary model strengths.
Why it matters
AEGIS is a crucial benchmark exposing fundamental limitations in AI-generated academic image forensics. It reveals current methods struggle with complex, domain-specific forgeries, highlighting a significant gap between generative AI and detection capabilities. This work is vital for developing robust forensic techniques to maintain academic integrity.
Original Abstract
We introduce AEGIS, A holistic benchmark for Evaluating forensic analysis of AI-Generated academic ImageS. Compared to existing benchmarks, AEGIS features three key advances: (1) Domain-Specific Complexity: covering seven academic categories with 39 fine-grained subtypes, exposing intrinsic forensic difficulty, where even GPT-5.1 reaches 48.80% overall performance and expert models achieve only limited localization accuracy (IoU 30.09%); (2) Diverse Forgery Simulations: modeling four prevalent academic forgery strategies across 25 generative models, with 11 yielding average forensic accuracy below 50%, showing that forensics lag behind generative advances; and (3) Multi-Dimensional Forensic Evaluation: jointly assessing detection, reasoning, and localization, revealing complementary strengths between model families, with multimodal large language models (MLLMs) at 84.74% accuracy in textual artifact recognition and expert detectors peaking at 79.54% accuracy in binary authenticity detection. By evaluating 25 leading MLLMs, nine expert models, and one unified multimodal understanding and generation model, AEGIS serves as a diagnostic testbed exposing fundamental limitations in academic image forensics.
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