

Lavi Bridge
Overview :
LaVi-Bridge is a bridge model designed for text-to-image diffusion models, enabling the connection of various pre-trained language models and generative visual models. It utilizes LoRA and adapters, providing a flexible and plug-and-play approach without modifying the weights of the original language and visual models. Compatible with a variety of language and generative visual models, it accommodates different architectures. Within this framework, we demonstrate that integrating more advanced modules (such as more sophisticated language models or generative visual models) can significantly improve capabilities like text alignment or image quality. The model has been extensively evaluated, confirming its effectiveness.
Target Users :
LaVi-Bridge can be used for text-to-image generation tasks, especially in scenarios requiring integration with more advanced language models or visual models.
Use Cases
Integrate the GPT-3 language model with the Stable Diffusion visual model using LaVi-Bridge to generate high-quality images.
Connect the Llama language model with the PixArt visual model using LaVi-Bridge to improve the matching degree between text descriptions and generated images.
Quickly evaluate the performance of different language models and visual models in text-to-image generation tasks through the LaVi-Bridge framework.
Features
Connect different language models and generative visual models
Achieve flexibility and plug-and-play integration via LoRA and adapters
Enhance the alignment between text descriptions and generated images
Improve image quality
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