핵심 개념
DEADiff achieves optimal balance between style similarity and text control in image synthesis.
초록
DEADiff introduces a mechanism to decouple style and semantics in reference images.
Dual decoupling representation extraction enhances text controllability.
Disentangled conditioning mechanism improves style transfer capabilities.
Paired datasets construction aids in training the model effectively.
Experiment results show DEADiff outperforms state-of-the-art methods in style similarity, image quality, and text alignment.
Applications include stylization of reference semantics, style mixing, and switching base T2I models.
통계
이전 방법들은 텍스트 조건의 제어 능력을 감소시킴
DEADiff는 최적의 균형을 달성함
인용구
"A zebra to the right of a fire hydrant"
"A puppy sitting on a sofa"
"A motorcycle"