Impostor: An Agent-Curated Benchmark for Realistic AIGC Manipulation Localization 文章

ArXiv CS.CV2026-06-04NEWSen作者: Zhenliang Li (Southeast University), Yutao Hu (Southeast University), Qixiong Wang (Xiaohongshu Inc), Wenpeng Du (Southeast University), Hongxiang Jiang (Xiaohongshu Inc), Jiasong Wu (Southeast University), Xiaolong Jiang (Xiaohongshu Inc), Jungong Han (Tsinghua University)

摘要

arXiv:2606.04545v1 Announce Type: new Abstract: Recent advances in generative image editing have improved the realism and controllability of localized image manipulation, raising new challenges for image manipulation detection and localization (IMDL). However, existing IMDL benchmarks still have limitations in visual realism, manipulation diversity, and generator coverage, making it difficult to reflect recent trends in image manipulation. To address these limitations, we introduce Impostor, a high-quality AI-edited image manipulation localization dataset containing 100K manipulated images. Impostor is constructed by CraftAgent, a closed-loop agent framework that integrates scene perception, editing planning, manipulation execution, quality validation, and iterative reflection to automatically generate diverse and visually realistic manipulated images.