Style Consistency
Style consistency in AI-generated content, encompassing text, images, and audio, focuses on ensuring generated outputs consistently reflect a desired style while maintaining semantic accuracy. Current research emphasizes disentangling style and content representations within various model architectures, including diffusion models, neural radiance fields, and large language models, often employing techniques like contrastive learning, style-aware encoders, and prompt engineering to achieve this. This research is crucial for improving the quality and reliability of AI-generated content across diverse applications, ranging from creative content generation to medical image analysis and human-computer interaction. The ability to control and maintain style consistency is vital for building trustworthy and user-friendly AI systems.
Papers
StyleDrop: Text-to-Image Generation in Any Style
Kihyuk Sohn, Nataniel Ruiz, Kimin Lee, Daniel Castro Chin, Irina Blok, Huiwen Chang, Jarred Barber, Lu Jiang, Glenn Entis, Yuanzhen Li, Yuan Hao, Irfan Essa, Michael Rubinstein, Dilip Krishnan
We never go out of Style: Motion Disentanglement by Subspace Decomposition of Latent Space
Rishubh Parihar, Raghav Magazine, Piyush Tiwari, R. Venkatesh Babu