AI RESEARCH
Equilibrated Diffusion: Frequency-aware Textual Embedding for Equilibrated Image Customization
arXiv CS.CV
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ArXi:2606.02129v1 Announce Type: new Image customization learns target subjects from reference concept images and generates conditioned images per text prompts, mainly modifying styles or backgrounds. Prevailing methods adopt fine-tuning to pack diverse concept attributes into a unified latent embedding, yet entangled attributes hinder elimination of irrelevant disturbances from style and background. To address this issue, we propose Equilibrated Diffusion, a frequency-driven approach that disentangles tangled concept features for balanced customization and consistent text-visual matching.