CVMay 19, 2023

LeftRefill: Filling Right Canvas based on Left Reference through Generalized Text-to-Image Diffusion Model

arXiv:2305.11577v327 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses the problem of reference-guided image synthesis for AI and computer vision researchers, offering a unified framework that is incremental in its approach.

The paper tackles reference-guided image synthesis by introducing LeftRefill, a method that horizontally stitches reference and target views to efficiently use text-to-image diffusion models, achieving consistent generation without test-time fine-tuning for tasks like inpainting and novel view synthesis.

This paper introduces LeftRefill, an innovative approach to efficiently harness large Text-to-Image (T2I) diffusion models for reference-guided image synthesis. As the name implies, LeftRefill horizontally stitches reference and target views together as a whole input. The reference image occupies the left side, while the target canvas is positioned on the right. Then, LeftRefill paints the right-side target canvas based on the left-side reference and specific task instructions. Such a task formulation shares some similarities with contextual inpainting, akin to the actions of a human painter. This novel formulation efficiently learns both structural and textured correspondence between reference and target without other image encoders or adapters. We inject task and view information through cross-attention modules in T2I models, and further exhibit multi-view reference ability via the re-arranged self-attention modules. These enable LeftRefill to perform consistent generation as a generalized model without requiring test-time fine-tuning or model modifications. Thus, LeftRefill can be seen as a simple yet unified framework to address reference-guided synthesis. As an exemplar, we leverage LeftRefill to address two different challenges: reference-guided inpainting and novel view synthesis, based on the pre-trained StableDiffusion. Codes and models are released at https://github.com/ewrfcas/LeftRefill.

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