Papers
arxiv:2605.15181

From Plans to Pixels: Learning to Plan and Orchestrate for Open-Ended Image Editing

Published on May 14
· Submitted by
Anirudh Sundara Rajan
on May 18
Authors:
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Abstract

An experiential framework for long-horizon image editing that couples planning with reward-driven execution to improve coherence and reliability of complex multi-step edits.

AI-generated summary

Modern image editing models produce realistic results but struggle with abstract, multi step instructions (e.g., ``make this advertisement more vegetarian-friendly''). Prior agent based methods decompose such tasks but rely on handcrafted pipelines or teacher imitation, limiting flexibility and decoupling learning from actual editing outcomes. We propose an experiential framework for long-horizon image editing, where a planner generates structured atomic decompositions and an orchestrator selects tools and regions to execute each step. A vision language judge provides outcome-based rewards for instruction adherence and visual quality. The orchestrator is trained to maximize these rewards, and successful trajectories are used to refine the planner. By tightly coupling planning with reward driven execution, our approach yields more coherent and reliable edits than single-step or rule-based multistep baselines.

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Paper submitter

Proposes an experiential learning framework for long-horizon, open-ended image editing. Instead of relying on static teacher imitation, the system actively learns optimal tool and region selection through trial and error. It couples a structured task planner with an orchestrator trained via outcome-based rewards from a vision-language judge, leading to highly coherent and reliable multi-step edits.

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