Image Generation Model
Image generation models aim to create realistic and diverse images from various inputs like text, sketches, or other images. Current research focuses on improving model architectures (e.g., diffusion models, transformers, hybrid approaches) to enhance image quality, controllability, and efficiency, while also addressing challenges like bias mitigation, prompt engineering, and the generation of specific image types (e.g., RGBA images, 3D models). These advancements have significant implications for various fields, including accessible communication, creative design, and data augmentation, but also raise important ethical considerations regarding bias and safety. The ongoing development of robust and responsible image generation models is a key area of active research.
Papers
Chain-of-Jailbreak Attack for Image Generation Models via Editing Step by Step
Wenxuan Wang, Kuiyi Gao, Zihan Jia, Youliang Yuan, Jen-tse Huang, Qiuzhi Liu, Shuai Wang, Wenxiang Jiao, Zhaopeng Tu
Images Speak Volumes: User-Centric Assessment of Image Generation for Accessible Communication
Miriam Anschütz, Tringa Sylaj, Georg Groh