CVMar 31

Gloria: Consistent Character Video Generation via Content Anchors

arXiv:2603.2993183.21 citations
AI Analysis

This addresses the challenge of consistent character video generation for digital media, representing an incremental improvement over prior approaches.

The paper tackles the problem of generating long-duration character videos with consistent multi-view appearance and expressive identity by proposing a method using compact anchor frames, achieving high-quality videos exceeding 10 minutes and surpassing existing methods.

Digital characters are central to modern media, yet generating character videos with long-duration, consistent multi-view appearance and expressive identity remains challenging. Existing approaches either provide insufficient context to preserve identity or leverage non-character-centric information as the memory, leading to suboptimal consistency. Recognizing that character video generation inherently resembles an outside-looking-in scenario. In this work, we propose representing the character visual attributes through a compact set of anchor frames. This design provides stable references for consistency, while reference-based video generation inherently faces challenges of copy-pasting and multi-reference conflicts. To address these, we introduce two mechanisms: Superset Content Anchoring, providing intra- and extra-training clip cues to prevent duplication, and RoPE as Weak Condition, encoding positional offsets to distinguish multiple anchors. Furthermore, we construct a scalable pipeline to extract these anchors from massive videos. Experiments show our method generates high-quality character videos exceeding 10 minutes, and achieves expressive identity and appearance consistency across views, surpassing existing methods.

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