

Moma
Overview :
MoMA Personalization is a personalized image generation tool based on an open-source Multimodal Large Language Model (MLLM). It focuses on theme-driven personalized image generation, capable of generating high-quality images that preserve the target object features based on reference images and text prompts. MoMA requires no fine-tuning and acts as a plugin model, directly applicable to existing diffusion models. It enhances the detail and prompt fidelity of generated images while maintaining the original model's performance.
Target Users :
Suitable for scenarios requiring customized image generation, background replacement, or text-to-image description.
Use Cases
Insert your photos into websites to generate images that match specific backgrounds or scenes.
Generate images that meet your requirements based on text descriptions.
Replace the background of existing images with white or other colors.
Features
Image generation based on large language models
Supports theme-driven personalized image generation
No fine-tuning required, directly applicable to existing diffusion models
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