MSRAMIE: Multimodal Structured Reasoning Agent for Multi-instruction Image Editing
arXiv cs.CV / 3/19/2026
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Key Points
- The paper introduces MSRAMIE, a training-free agent framework built on Multimodal Large Language Models to handle multi-instruction image editing tasks.
- MSRAMIE uses existing editing models as plug-in components and coordinates between an MLLM-based Instructor and an image editing Actor through a novel Tree-of-States and Graph-of-References reasoning topology.
- During inference, complex instructions are decomposed into multiple editing steps with state transitions, cross-step information aggregation, and recall of the original input to support progressive output refinement.
- The framework provides a visualizable inference topology that yields interpretable and controllable decision pathways during editing.
- Experimental results show over 15% improvement in instruction following and a 100% rate of completing all modifications in a single run, while preserving perceptual quality.
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