FantasyPortrait: Enhancing Multi-Character Portrait Animation with Expression-Augmented Diffusion Transformers
Qiang Wang, Mengchao Wang, Fan Jiang, Yaqi Fan, Yonggang Qi, Mu Xu

TL;DR
FantasyPortrait is a diffusion transformer framework that produces high-fidelity, emotion-rich multi-character facial animations from static images, overcoming artifacts and interference issues present in prior methods.
Contribution
It introduces an expression-augmented learning strategy and a masked cross-attention mechanism for improved multi-character animation control.
Findings
Outperforms state-of-the-art methods in quantitative metrics
Achieves high-quality, emotion-rich animations in challenging scenarios
Demonstrates effectiveness in multi-character and cross reenactment tasks
Abstract
Producing expressive facial animations from static images is a challenging task. Prior methods relying on explicit geometric priors (e.g., facial landmarks or 3DMM) often suffer from artifacts in cross reenactment and struggle to capture subtle emotions. Furthermore, existing approaches lack support for multi-character animation, as driving features from different individuals frequently interfere with one another, complicating the task. To address these challenges, we propose FantasyPortrait, a diffusion transformer based framework capable of generating high-fidelity and emotion-rich animations for both single- and multi-character scenarios. Our method introduces an expression-augmented learning strategy that utilizes implicit representations to capture identity-agnostic facial dynamics, enhancing the model's ability to render fine-grained emotions. For multi-character control, we…
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Taxonomy
TopicsHuman Motion and Animation · Augmented Reality Applications · Computer Graphics and Visualization Techniques
