GSwap: Realistic Head Swapping with Dynamic Neural Gaussian Field
arXiv cs.CV / 3/25/2026
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Key Points
- GSwap is introduced as a new video head-swapping method that aims for realistic results with stronger 3D consistency than prior 2D-generator- or 3DMM-based approaches.
- The system embeds an intrinsic 3D Gaussian feature field on a full-body SMPL-X surface, turning 2D portrait video information into a dynamic neural Gaussian portrait prior for consistent head rendering.
- It addresses common full head-swapping failures such as visible artifacts, misalignments, and poor background blending by using a neural re-rendering strategy to harmonize synthesized foreground with the original background.
- For training efficiency, GSwap adapts a pretrained 2D portrait generative model to the source head domain using only a few reference images.
- Experiments reportedly show improvements across visual quality, temporal coherence, identity preservation, and 3D consistency compared with existing methods.
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