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HybridBooth: Hybrid Prompt Inversion for Efficient Subject-Driven Generation

Abstract

Recent advancements in text-to-image diffusion models have shown remarkable creative capabilities with textual prompts, but generating personalized instances based on specific subjects, known as subject-driven generation, remains challenging. To tackle this issue, we present a new hybrid framework called HybridBooth, which merges the benefits of optimization-based and direct-regression methods. HybridBooth operates in two stages: the Word Embedding Probe, which generates a robust initial word embedding using a fine-tuned encoder, and the Word Embedding Refinement, which further adapts the encoder to specific subject images by optimizing key parameters. This approach allows for effective and fast inversion of visual concepts into textual embedding, even from a single image, while maintaining the model's generalization capabilities.


Publication:
arXiv e-prints
Pub Date:
October 2024
DOI:

10.48550/arXiv.2410.08192

arXiv:
arXiv:2410.08192
Bibcode:
2024arXiv241008192G
Keywords:
  • Computer Science - Computer Vision and Pattern Recognition
E-Print:
ECCV 2024, the project page: https://sites.google.com/view/hybridbooth
full text sources
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