Style Generation

Style generation focuses on creating content—text, images, audio, or even 3D models—that consistently reflects a specific aesthetic or stylistic characteristic. Current research emphasizes leveraging the strengths of large and small language models, diffusion models, and generative adversarial networks (GANs), often employing techniques like style modulation, attention sharing, and low-rank adaptations (LoRA) to achieve fine-grained control and high fidelity. These advancements are improving applications ranging from personalized content creation and artistic tools to realistic animation and robot calligraphy, driving progress in both computer vision and natural language processing.

Papers