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2Models·Apr 16

3DRealHead: Few-Shot Detailed Head Avatar

arXiv:2604.14541v1 Announce Type: new Abstract: We present a framework for explicit emotion control in feed-forward, single-image 3D head avatar reconstruction. Unlike existing pipelines where emotion is implicitly entangled with geometry or appearance, we treat emotion as a first-class control signal that can be manipulated independently and consistently across identities. Our method injects emotion into existing feed-forward architectures via a dual-path modulation mechanism without modifying their core design. Geometry modulation performs emotion-conditioned normalization in the original parametric space, disentangling emotional state from speech-driven articulation, while appearance modulation captures identity-aware, emotion-dependent visual cues beyond geometry. To enable learning under this setting, we construct a time-synchronized, emotion-consistent multi-identity dataset by transferring aligned emotional dynamics across identities. Integrated into multiple state-of-the-art backbones, our framework preserves reconstruction and reenactment fidelity while enabling controllable emotion transfer, disentangled manipulation, and smooth emotion interpolation, advancing expressive and scalable 3D head avatars.

Covered by 2 sources

  • AarXiv CS.AIYicheng Gong, Jiawei Zhang, Liqiang Liu, Yanwen Wang, Lei Chu, Jiahao Li, Hao Pan, Hao Zhu, Yan LuApr 17
  • AarXiv CS.AIJalees Nehvi, Timo Bolkart, Thabo Beeler, Justus ThiesApr 16

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