MIRAGE: Towards AI-Generated Image Detection in the Wild
MIRAGE: Towards AI-Generated Image Detection in the Wild
The spreading of AI-generated images (AIGI), driven by advances in generative AI, poses a significant threat to information security and public trust. Existing AIGI detectors, while effective against images in clean laboratory settings, fail to generalize to in-the-wild scenarios. These real-world images are noisy, varying from ``obviously fake" images to realistic ones derived from multiple generative models and further edited for quality control. We address in-the-wild AIGI detection in this paper. We introduce Mirage, a challenging benchmark designed to emulate the complexity of in-the-wild AIGI. Mirage is constructed from two sources: (1) a large corpus of Internet-sourced AIGI verified by human experts, and (2) a synthesized dataset created through the collaboration between multiple expert generators, closely simulating the realistic AIGI in the wild. Building on this benchmark, we propose Mirage-R1, a vision-language model with heuristic-to-analytic reasoning, a reflective reasoning mechanism for AIGI detection. Mirage-R1 is trained in two stages: a supervised-fine-tuning cold start, followed by a reinforcement learning stage. By further adopting an inference-time adaptive thinking strategy, Mirage-R1 is able to provide either a quick judgment or a more robust and accurate conclusion, effectively balancing inference speed and performance. Extensive experiments show that our model leads state-of-the-art detectors by 5% and 10% on Mirage and the public benchmark, respectively. The benchmark and code will be made publicly available.
Cheng Xia、Manxi Lin、Jiexiang Tan、Xiaoxiong Du、Yang Qiu、Junjun Zheng、Xiangheng Kong、Yuning Jiang、Bo Zheng
计算技术、计算机技术
Cheng Xia,Manxi Lin,Jiexiang Tan,Xiaoxiong Du,Yang Qiu,Junjun Zheng,Xiangheng Kong,Yuning Jiang,Bo Zheng.MIRAGE: Towards AI-Generated Image Detection in the Wild[EB/OL].(2025-08-17)[2025-09-04].https://arxiv.org/abs/2508.13223.点此复制
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