SEAL: Semantic-aware Single-image Sticker Personalization with a Large-scale Sticker-tag Dataset
Changhyun Roh, Yonghyun Jeong, Jonghyun Lee, Chanho Eom, Jihyong Oh

TL;DR
SEAL is a plug-and-play module that improves single-image sticker personalization in diffusion models by addressing overfitting issues and enhancing identity preservation and contextual control.
Contribution
We introduce SEAL, a novel adaptation module with three components, and provide StickerBench, a large-scale sticker dataset with structured tags for systematic evaluation.
Findings
SEAL improves identity preservation in sticker personalization.
SEAL maintains contextual controllability during adaptation.
Experiments demonstrate SEAL's effectiveness across various settings.
Abstract
Synthesizing a target concept from a single reference image is challenging in diffusion-based personalized text-to-image generation, particularly for sticker personalization where prompts often require explicit attribute edits. With only one reference, test-time fine-tuning (TTF) methods tend to overfit, producing \textit{visual entanglement}, where background artifacts are absorbed into the learned concept, and \textit{structural rigidity}, where the model memorizes reference-specific spatial configurations and loses contextual controllability. To address these issues, we introduce \textbf{SE}mantic-aware single-image sticker person\textbf{AL}ization (\textbf{SEAL}), a plug-and-play, architecture-agnostic adaptation module that integrates into existing personalization pipelines without modifying their U-Net-based diffusion backbones. SEAL applies three components during embedding…
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