

Consistory
Overview :
ConsiStory is a method for generating consistent subjects in pre-trained text-to-image models without requiring any training. It does not require fine-tuning or personalization, making it 20 times faster than previous state-of-the-art methods. We enhance the model by introducing a subject-driven shared attention module and a relationship-based feature injection approach to promote consistency between images. Additionally, we develop strategies that encourage layout diversity while maintaining subject consistency. ConsiStory can naturally extend to multi-subject scenarios and even achieve zero-shot personalization for common objects.
Target Users :
Can be used to generate a series of images on a given theme, such as product images, character appearances, etc.
Use Cases
Generate a series of images of the same character
Generate a series of images of the same product from different angles
Generate a consistent series of artwork
Features
Generate Consistent Subjects
Layout Diversity
Multi-Subject Generation
Zero-Shot Personalization
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