NBAvatar: Neural Billboards Avatars with Realistic Hand-Face Interaction
arXiv cs.CV / 3/13/2026
📰 NewsModels & Research
Key Points
- NBAvatar proposes a method for realistic rendering of head avatars that accounts for non-rigid deformations caused by hand-face interaction.
- It combines training of oriented planar primitives with neural rendering to create a representation that preserves temporally and pose-consistent geometry while delivering fine-grained appearance details.
- Experiments show NBAvatar implicitly learns color transformations due to face-hand interactions and achieves up to 30% LPIPS reduction at high-resolution rendering, with improvements in PSNR and SSIM over Gaussian-based avatars and the InteractAvatar method.
- The work suggests applications in animated avatars for AR/VR and telepresence where hand-face interactions are common.
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