Feed-forward Gaussian Registration for Head Avatar Creation and Editing
arXiv cs.CV / 3/18/2026
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Key Points
- MATCH introduces Multi-view Avatars from Topologically Corresponding Heads (MATCH), a Gaussian registration method for fast head avatar creation and editing from calibrated multi-view images that predicts Gaussian splat textures in correspondence in 0.5 seconds per frame.
- The approach eliminates time-consuming head tracking and expensive optimization, reducing typical creation time from over a day to about 0.5 seconds per frame.
- It uses a transformer-based model to estimate textures in a fixed UV layout with a novel registration-guided attention block, where each UV-map token attends only to image tokens from its corresponding mesh region, improving efficiency over dense cross-view attention.
- The method enables cross-subject correspondence for applications such as expression transfer, semantic editing, identity interpolation, and optimization-free tracking, and it outperforms existing methods in novel-view synthesis and head avatar generation, achieving a tenfold speedup over the closest baseline.
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