LoRACLR: Contrastive Adaptation for Customization of Diffusion Models
December 12, 2024 Β· Declared Dead Β· π Computer Vision and Pattern Recognition
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Authors
Enis Simsar, Thomas Hofmann, Federico Tombari, Pinar Yanardag
arXiv ID
2412.09622
Category
cs.CV: Computer Vision
Citations
12
Venue
Computer Vision and Pattern Recognition
Last Checked
4 months ago
Abstract
Recent advances in text-to-image customization have enabled high-fidelity, context-rich generation of personalized images, allowing specific concepts to appear in a variety of scenarios. However, current methods struggle with combining multiple personalized models, often leading to attribute entanglement or requiring separate training to preserve concept distinctiveness. We present LoRACLR, a novel approach for multi-concept image generation that merges multiple LoRA models, each fine-tuned for a distinct concept, into a single, unified model without additional individual fine-tuning. LoRACLR uses a contrastive objective to align and merge the weight spaces of these models, ensuring compatibility while minimizing interference. By enforcing distinct yet cohesive representations for each concept, LoRACLR enables efficient, scalable model composition for high-quality, multi-concept image synthesis. Our results highlight the effectiveness of LoRACLR in accurately merging multiple concepts, advancing the capabilities of personalized image generation.
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