CVNov 25, 2023

$Z^*$: Zero-shot Style Transfer via Attention Rearrangement

arXiv:2311.16491v120 citationsh-index: 24
Originality Highly original
AI Analysis

This addresses the need for efficient and effective zero-shot style transfer in image processing, offering a novel approach that avoids retraining.

The paper tackles the problem of subjective and challenging art style transfer by showing that vanilla diffusion models can directly extract style information and integrate it into content images without retraining, achieving superior results as demonstrated through experiments.

Despite the remarkable progress in image style transfer, formulating style in the context of art is inherently subjective and challenging. In contrast to existing learning/tuning methods, this study shows that vanilla diffusion models can directly extract style information and seamlessly integrate the generative prior into the content image without retraining. Specifically, we adopt dual denoising paths to represent content/style references in latent space and then guide the content image denoising process with style latent codes. We further reveal that the cross-attention mechanism in latent diffusion models tends to blend the content and style images, resulting in stylized outputs that deviate from the original content image. To overcome this limitation, we introduce a cross-attention rearrangement strategy. Through theoretical analysis and experiments, we demonstrate the effectiveness and superiority of the diffusion-based $\underline{Z}$ero-shot $\underline{S}$tyle $\underline{T}$ransfer via $\underline{A}$ttention $\underline{R}$earrangement, Z-STAR.

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