HUMAN & MACHINE INTELLIGENCE

COMPUTER VISION

Think in Strokes, Not Pixels: Process-Driven Image Generation via Interleaved Reasoning

April 09, 2026

Abstract

Humans paint images incrementally: they plan a global layout, sketch a coarse draft, inspect, and refine details, and most importantly, each step is grounded in the evolving visual states. However, can unified multimodal models trained on text-image interleaved datasets also imagine the chain of intermediate states? In this paper, we introduce process-driven image generation, a multi-step paradigm that decomposes synthesis into an interleaved reasoning trajectory of thoughts and actions. Rather than generating images in a single step, our approach unfolds across multiple iterations, each consisting of 4 stages: textual planning, visual drafting, textual reflection, and visual refinement. The textual reasoning explicitly conditions how the visual state should evolve, while the generated visual intermediate in turn constrains and grounds the next round of textual reasoning. A core challenge of process-driven generation stems from the ambiguity of intermediate states: how can models evaluate each partially-complete image? We address this through dense, step-wise supervision that maintains two complementary constraints: for the visual intermediate states, we enforce the spatial and semantic consistency; for the textual intermediate states, we preserve the prior visual knowledge while enabling the model to identify and correct prompt-violating elements. This makes the generation process explicit, interpretable, and directly supervisable. To validate proposed method, we conduct experiments under various text-to-image generation benchmarks.

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AUTHORS

Written by

Lei Zhang

Junjiao Tian

Kunpeng Li

Jialiang Wang

Weifeng Chen

Yuxiao Bao

Julian McAuley

Manling Li

Zecheng He

Felix Xu

Markos Georgopoulos

Zhipeng Fan

Publisher

arxiv

Research Topics

Computer Vision

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