Lite3R cuts latency by 1.7-2.0x and memory by 1.9-2.4x in feed-forward 3D reconstruction using sparse linear attention and FP8-aware quantization-aware training while keeping competitive quality on backbones like VGGT and DA3-Large.
Tanks and temples: Bench- marking large-scale scene reconstruction.ACM Transactions on Graphics, 36(4):1–13
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Lite3R: A Model-Agnostic Framework for Efficient Feed-Forward 3D Reconstruction
Lite3R cuts latency by 1.7-2.0x and memory by 1.9-2.4x in feed-forward 3D reconstruction using sparse linear attention and FP8-aware quantization-aware training while keeping competitive quality on backbones like VGGT and DA3-Large.