Alapfogalmak
The author explores the controllable generation landscape with text-to-image diffusion models, emphasizing the importance of incorporating novel conditions beyond text prompts for personalized and diverse generative outputs.
Kivonat
In this comprehensive survey, the authors delve into the realm of controllable generation with text-to-image diffusion models. They highlight the significance of integrating novel conditions to cater to diverse human needs and creative aspirations. The survey covers various categories such as personalization, spatial control, interaction-driven generation, and more.
The content discusses different approaches in subject-driven, person-driven, style-driven, interaction-driven, image-driven, and distribution-driven generation within the context of controllable text-to-image diffusion models.
Statisztikák
"Diffusion models have revolutionized visual generation."
"A variety of studies aim to control pre-trained T2I models for novel conditions."
"Diffusion models progress from noise to high-fidelity images."
"Diffusion models have immense potential in image generation tasks."
"Text-based conditions have been instrumental in propelling controllable generation forward."
Idézetek
"Diffusion models exhibit a remarkable ability to transform random noise into intricate images."
"Acknowledging the shortfall of relying solely on text for conditioning these models."
"These advancements have led to exploration of diverse conditions for conditional generation."