EvoGuard: An Extensible Agentic RL-based Framework for Practical and Evolving AI-Generated Image Detection
arXiv cs.CV / 3/19/2026
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Key Points
- EvoGuard is an extensible agentic reinforcement learning framework for AI-generated image detection that coordinates diverse detectors, both MLLM-based and non-MLLM, via a capability-aware orchestration mechanism.
- It enables autonomous planning, reflection on intermediate results, and multi-turn reasoning to select tools and reach a final conclusion for each sample.
- The framework achieves state-of-the-art accuracy while mitigating positive/negative sample bias by employing a GRPO-based Agentic Reinforcement Learning algorithm trained with low-cost binary labels and without fine-grained annotations.
- It offers plug-and-play integration of new detectors, allowing train-free improvements and adaptation to evolving AIGI threats.
- The work emphasizes practical deployment potential, with source code to be publicly available upon acceptance.
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