AI RESEARCH
Spark3R: Asymmetric Token Reduction Makes Fast Feed-Forward 3D Reconstruction
arXiv CS.CV
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ArXi:2605.06270v1 Announce Type: new Feed-forward 3D reconstruction models based on Vision Transformers can directly estimate scene geometry and camera poses from a small set of input images, but scaling them to video inputs with hundreds or thousands of frames remains challenging due to the quadratic cost of global attention layers. Recent token-merging methods accelerate these models by compressing the token sequence within the global attention layers, but they apply a uniform reduction to query tokens and key-value tokens, ignoring their functionally distinct roles in 3D reconstruction.