Subject Driven Generation

Subject-driven generation focuses on customizing text-to-image models to generate images featuring specific subjects from a limited set of reference images, going beyond simple text prompts. Current research emphasizes efficient training methods, such as parameter rank reduction and training-free approaches, alongside novel architectures like multi-agent frameworks and attention-guided models to improve subject fidelity and control over multiple subjects within a scene. This field is significant for advancing image synthesis capabilities and has implications for various applications, including personalized content creation, virtual try-ons, and interactive story visualization.

Papers