Fine-grained Appearance Transfer with Diffusion Models
Yuteng Ye, Guanwen Li, Hang Zhou, Cai Jiale, Junqing Yu, Yawei Luo,, Zikai Song, Qilong Xing, Youjia Zhang, Wei Yang

TL;DR
This paper introduces a novel diffusion model-based framework for fine-grained appearance transfer in images, achieving detailed and natural results by leveraging semantic matching and latent space manipulation.
Contribution
It presents a new method that integrates semantic alignment and latent space features within diffusion models for precise appearance transfer without extensive retraining.
Findings
Effective fine-grained transfer across diverse categories
Preserves structural coherence and detailed features
Demonstrates superior results over existing methods
Abstract
Image-to-image translation (I2I), and particularly its subfield of appearance transfer, which seeks to alter the visual appearance between images while maintaining structural coherence, presents formidable challenges. Despite significant advancements brought by diffusion models, achieving fine-grained transfer remains complex, particularly in terms of retaining detailed structural elements and ensuring information fidelity. This paper proposes an innovative framework designed to surmount these challenges by integrating various aspects of semantic matching, appearance transfer, and latent deviation. A pivotal aspect of our approach is the strategic use of the predicted space by diffusion models within the latent space of diffusion processes. This is identified as a crucial element for the precise and natural transfer of fine-grained details. Our framework exploits this space to…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Face recognition and analysis · Image Enhancement Techniques
MethodsDiffusion
