EditThinker:为任意图像编辑器解锁迭代推理能力 / EditThinker: Unlocking Iterative Reasoning for Any Image Editor
1️⃣ 一句话总结
这篇论文提出了一个名为EditThinker的‘边思考边编辑’框架,通过让AI在编辑图像时像人一样反复审视结果、分析问题并优化指令,从而显著提升了各种现有图像编辑模型对用户指令的理解和执行准确性。
Instruction-based image editing has emerged as a prominent research area, which, benefiting from image generation foundation models, have achieved high aesthetic quality, making instruction-following capability the primary challenge. Existing approaches improve instruction adherence via supervised or reinforcement learning, yet single-turn success rates remain limited due to inherent stochasticity and a lack of deliberation. In this work, we propose a deliberative editing framework to 'think' while they edit, which simulates the human cognitive loop by iteratively executing a Think-while-Edit cycle: Critiquing results and Refining instructions , followed by Repeating the generation until satisfactory. Specifically, we train a single MLLM, EditThinker, to act as the reasoning engine of this framework, which jointly produce the critique score, reasoning process, and refined instructions. We employ reinforcement learning to align the EditThinker's thinking with its editing, thereby generating more targeted instruction improvements. Extensive experiments on four benchmarks demonstrate that our approach significantly improves the instruction-following capability of any image editing model by a large margin. We will release our data construction framework, datasets, and models to benefit the community.
EditThinker:为任意图像编辑器解锁迭代推理能力 / EditThinker: Unlocking Iterative Reasoning for Any Image Editor
这篇论文提出了一个名为EditThinker的‘边思考边编辑’框架,通过让AI在编辑图像时像人一样反复审视结果、分析问题并优化指令,从而显著提升了各种现有图像编辑模型对用户指令的理解和执行准确性。
源自 arXiv: 2512.05965