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TF-ICON: Diffusion-Based Training-Free Cross-Domain Image Composition

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arxiv 2307.12493 v4 pith:2I25J5SW submitted 2023-07-24 cs.CV cs.AI

TF-ICON: Diffusion-Based Training-Free Cross-Domain Image Composition

classification cs.CV cs.AI
keywords diffusionmodelstf-iconcompositioncross-domainimagetext-drivendatasets
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Text-driven diffusion models have exhibited impressive generative capabilities, enabling various image editing tasks. In this paper, we propose TF-ICON, a novel Training-Free Image COmpositioN framework that harnesses the power of text-driven diffusion models for cross-domain image-guided composition. This task aims to seamlessly integrate user-provided objects into a specific visual context. Current diffusion-based methods often involve costly instance-based optimization or finetuning of pretrained models on customized datasets, which can potentially undermine their rich prior. In contrast, TF-ICON can leverage off-the-shelf diffusion models to perform cross-domain image-guided composition without requiring additional training, finetuning, or optimization. Moreover, we introduce the exceptional prompt, which contains no information, to facilitate text-driven diffusion models in accurately inverting real images into latent representations, forming the basis for compositing. Our experiments show that equipping Stable Diffusion with the exceptional prompt outperforms state-of-the-art inversion methods on various datasets (CelebA-HQ, COCO, and ImageNet), and that TF-ICON surpasses prior baselines in versatile visual domains. Code is available at https://github.com/Shilin-LU/TF-ICON

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