AI RESEARCH

SEAL: Semantic-aware Single-image Sticker Personalization with a Large-scale Sticker-tag Dataset

arXiv CS.CV

ArXi:2604.26883v1 Announce Type: new 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.