Papers
arxiv:2512.05044

Joint 3D Geometry Reconstruction and Motion Generation for 4D Synthesis from a Single Image

Published on Dec 4
· Submitted by Yanran Zhang on Dec 8
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Abstract

MoRe4D generates high-quality 4D scenes with multi-view consistency and dynamic details from a single image using a diffusion-based trajectory generator and depth-guided motion normalization.

AI-generated summary

Generating interactive and dynamic 4D scenes from a single static image remains a core challenge. Most existing generate-then-reconstruct and reconstruct-then-generate methods decouple geometry from motion, causing spatiotemporal inconsistencies and poor generalization. To address these, we extend the reconstruct-then-generate framework to jointly perform Motion generation and geometric Reconstruction for 4D Synthesis (MoRe4D). We first introduce TrajScene-60K, a large-scale dataset of 60,000 video samples with dense point trajectories, addressing the scarcity of high-quality 4D scene data. Based on this, we propose a diffusion-based 4D Scene Trajectory Generator (4D-STraG) to jointly generate geometrically consistent and motion-plausible 4D point trajectories. To leverage single-view priors, we design a depth-guided motion normalization strategy and a motion-aware module for effective geometry and dynamics integration. We then propose a 4D View Synthesis Module (4D-ViSM) to render videos with arbitrary camera trajectories from 4D point track representations. Experiments show that MoRe4D generates high-quality 4D scenes with multi-view consistency and rich dynamic details from a single image. Code: https://github.com/Zhangyr2022/MoRe4D.

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Project Page: https://ivg-yanranzhang.github.io/MoRe4D/
Github Repo: https://github.com/Zhangyr2022/MoRe4D
The dataset is coming soon. Stay tuned!

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