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Main Authors: Rahman, Tanzila, Mahajan, Shweta, Lee, Hsin-Ying, Ren, Jian, Tulyakov, Sergey, Sigal, Leonid
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.11487
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author Rahman, Tanzila
Mahajan, Shweta
Lee, Hsin-Ying
Ren, Jian
Tulyakov, Sergey
Sigal, Leonid
author_facet Rahman, Tanzila
Mahajan, Shweta
Lee, Hsin-Ying
Ren, Jian
Tulyakov, Sergey
Sigal, Leonid
contents Text-to-image (TTI) diffusion models have demonstrated impressive results in generating high-resolution images of complex and imaginative scenes. Recent approaches have further extended these methods with personalization techniques that allow them to integrate user-illustrated concepts (e.g., the user him/herself) using a few sample image illustrations. However, the ability to generate images with multiple interacting concepts, such as human subjects, as well as concepts that may be entangled in one, or across multiple, image illustrations remains illusive. In this work, we propose a concept-driven TTI personalization framework that addresses these core challenges. We build on existing works that learn custom tokens for user-illustrated concepts, allowing those to interact with existing text tokens in the TTI model. However, importantly, to disentangle and better learn the concepts in question, we jointly learn (latent) segmentation masks that disentangle these concepts in user-provided image illustrations. We do so by introducing an Expectation Maximization (EM)-like optimization procedure where we alternate between learning the custom tokens and estimating (latent) masks encompassing corresponding concepts in user-supplied images. We obtain these masks based on cross-attention, from within the U-Net parameterized latent diffusion model and subsequent DenseCRF optimization. We illustrate that such joint alternating refinement leads to the learning of better tokens for concepts and, as a by-product, latent masks. We illustrate the benefits of the proposed approach qualitatively and quantitatively with several examples and use cases that can combine three or more entangled concepts.
format Preprint
id arxiv_https___arxiv_org_abs_2402_11487
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Visual Concept-driven Image Generation with Text-to-Image Diffusion Model
Rahman, Tanzila
Mahajan, Shweta
Lee, Hsin-Ying
Ren, Jian
Tulyakov, Sergey
Sigal, Leonid
Computer Vision and Pattern Recognition
Text-to-image (TTI) diffusion models have demonstrated impressive results in generating high-resolution images of complex and imaginative scenes. Recent approaches have further extended these methods with personalization techniques that allow them to integrate user-illustrated concepts (e.g., the user him/herself) using a few sample image illustrations. However, the ability to generate images with multiple interacting concepts, such as human subjects, as well as concepts that may be entangled in one, or across multiple, image illustrations remains illusive. In this work, we propose a concept-driven TTI personalization framework that addresses these core challenges. We build on existing works that learn custom tokens for user-illustrated concepts, allowing those to interact with existing text tokens in the TTI model. However, importantly, to disentangle and better learn the concepts in question, we jointly learn (latent) segmentation masks that disentangle these concepts in user-provided image illustrations. We do so by introducing an Expectation Maximization (EM)-like optimization procedure where we alternate between learning the custom tokens and estimating (latent) masks encompassing corresponding concepts in user-supplied images. We obtain these masks based on cross-attention, from within the U-Net parameterized latent diffusion model and subsequent DenseCRF optimization. We illustrate that such joint alternating refinement leads to the learning of better tokens for concepts and, as a by-product, latent masks. We illustrate the benefits of the proposed approach qualitatively and quantitatively with several examples and use cases that can combine three or more entangled concepts.
title Visual Concept-driven Image Generation with Text-to-Image Diffusion Model
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2402.11487