35

MotionCrafter: Dense Geometry and Motion Reconstruction with a 4D VAE

Ruijie Zhu
Jiahao Lu
Wenbo Hu
Xiaoguang Han
Jianfei Cai
Ying Shan
Chuanxia Zheng
Main:8 Pages
11 Figures
Bibliography:6 Pages
8 Tables
Appendix:7 Pages
Abstract

We introduce MotionCrafter, a video diffusion-based framework that jointly reconstructs 4D geometry and estimates dense motion from a monocular video. The core of our method is a novel joint representation of dense 3D point maps and 3D scene flows in a shared coordinate system, and a novel 4D VAE to effectively learn this representation. Unlike prior work that forces the 3D value and latents to align strictly with RGB VAE latents-despite their fundamentally different distributions-we show that such alignment is unnecessary and leads to suboptimal performance. Instead, we introduce a new data normalization and VAE training strategy that better transfers diffusion priors and greatly improves reconstruction quality. Extensive experiments across multiple datasets demonstrate that MotionCrafter achieves state-of-the-art performance in both geometry reconstruction and dense scene flow estimation, delivering 38.64% and 25.0% improvements in geometry and motion reconstruction, respectively, all without any post-optimization. Project page:this https URL

View on arXiv
Comments on this paper