CVFeb 26

Uni-Animator: Towards Unified Visual Colorization

arXiv:2602.23191v2h-index: 13
AI Analysis

This work is significant for artists and content creators by providing a unified solution for high-quality image and video sketch colorization, improving efficiency and consistency across different media types.

The paper introduces Uni-Animator, a Diffusion Transformer (DiT)-based framework for unified image and video sketch colorization. It addresses challenges in color transfer, detail preservation, and temporal coherence, achieving competitive performance compared to task-specific methods.

We propose Uni-Animator, a novel Diffusion Transformer (DiT)-based framework for unified image and video sketch colorization. Existing sketch colorization methods struggle to unify image and video tasks, suffering from imprecise color transfer with single or multiple references, inadequate preservation of high-frequency physical details, and compromised temporal coherence with motion artifacts in large-motion scenes. To tackle imprecise color transfer, we introduce visual reference enhancement via instance patch embedding, enabling precise alignment and fusion of reference color information. To resolve insufficient physical detail preservation, we design physical detail reinforcement using physical features that effectively capture and retain high-frequency textures. To mitigate motion-induced temporal inconsistency, we propose sketch-based dynamic RoPE encoding that adaptively models motion-aware spatial-temporal dependencies. Extensive experimental results demonstrate that Uni-Animator achieves competitive performance on both image and video sketch colorization, matching that of task-specific methods while unlocking unified cross-domain capabilities with high detail fidelity and robust temporal consistency.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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