Textboost: Towards One-shot Personalization Of Text-to-image Models Via Fine-tuning Text Encoder · The Large Language Model Bible Contribute to LLM-Bible

Textboost: Towards One-shot Personalization Of Text-to-image Models Via Fine-tuning Text Encoder

Park Nahyeon, Kim Kunhee, Shim Hyunjung. Arxiv 2024

[Paper]    
Fine Tuning Pretraining Methods Prompting RAG Training Techniques

Recent breakthroughs in text-to-image models have opened up promising research avenues in personalized image generation, enabling users to create diverse images of a specific subject using natural language prompts. However, existing methods often suffer from performance degradation when given only a single reference image. They tend to overfit the input, producing highly similar outputs regardless of the text prompt. This paper addresses the challenge of one-shot personalization by mitigating overfitting, enabling the creation of controllable images through text prompts. Specifically, we propose a selective fine-tuning strategy that focuses on the text encoder. Furthermore, we introduce three key techniques to enhance personalization performance: (1) augmentation tokens to encourage feature disentanglement and alleviate overfitting, (2) a knowledge-preservation loss to reduce language drift and promote generalizability across diverse prompts, and (3) SNR-weighted sampling for efficient training. Extensive experiments demonstrate that our approach efficiently generates high-quality, diverse images using only a single reference image while significantly reducing memory and storage requirements.

Similar Work