ArXiv TLDR

Refinement via Regeneration: Enlarging Modification Space Boosts Image Refinement in Unified Multimodal Models

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2604.25636

Jiayi Guo, Linqing Wang, Jiangshan Wang, Yang Yue, Zeyu Liu + 4 more

cs.CV

TLDR

This paper introduces Refinement via Regeneration (RvR), a novel approach that boosts image refinement in multimodal models by enabling a larger modification space.

Key contributions

  • Identifies limitations of current Refinement-via-Editing (RvE) methods in unified multimodal models.
  • Proposes Refinement via Regeneration (RvR), reformulating refinement as conditional image regeneration.
  • RvR conditions on target prompt and semantic tokens, allowing larger modification space and better alignment.
  • Achieves significant performance gains on Geneval, DPGBench, and UniGenBench++ benchmarks.

Why it matters

RvR addresses key limitations in current image refinement techniques for unified multimodal models. By enabling more complete semantic alignment through regeneration, it significantly improves the quality of text-to-image outputs. This advancement pushes the performance boundaries for multimodal generation.

Original Abstract

Unified multimodal models (UMMs) integrate visual understanding and generation within a single framework. For text-to-image (T2I) tasks, this unified capability allows UMMs to refine outputs after their initial generation, potentially extending the performance upper bound. Current UMM-based refinement methods primarily follow a refinement-via-editing (RvE) paradigm, where UMMs produce editing instructions to modify misaligned regions while preserving aligned content. However, editing instructions often describe prompt-image misalignment only coarsely, leading to incomplete refinement. Moreover, pixel-level preservation, though necessary for editing, unnecessarily restricts the effective modification space for refinement. To address these limitations, we propose Refinement via Regeneration (RvR), a novel framework that reformulates refinement as conditional image regeneration rather than editing. Instead of relying on editing instructions and enforcing strict content preservation, RvR regenerates images conditioned on the target prompt and the semantic tokens of the initial image, enabling more complete semantic alignment with a larger modification space. Extensive experiments demonstrate the effectiveness of RvR, improving Geneval from 0.78 to 0.91, DPGBench from 84.02 to 87.21, and UniGenBench++ from 61.53 to 77.41.

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