Part-Level 3D Gaussian Vehicle Generation with Joint and Hinge Axis Estimation

Researchers have proposed a generative framework that synthesizes animatable 3D Gaussian vehicle models from a single image, enabling realistic part-level articulation for autonomous driving simulations.
Computer Science > Artificial Intelligence
Title:Part-Level 3D Gaussian Vehicle Generation with Joint and Hinge Axis Estimation
View PDF HTML (experimental)Abstract:Simulation is essential for autonomous driving, yet current frameworks often model vehicles as rigid assets and fail to capture part-level articulation. With perception algorithms increasingly leveraging dynamics such as wheel steering or door opening, realistic simulation requires animatable vehicle representations. Existing CAD-based pipelines are limited by library coverage and fixed templates, preventing faithful reconstruction of in-the-wild instances.
We propose a generative framework that, from a single image or sparse multi-view input, synthesizes an animatable 3D Gaussian vehicle. Our method addresses two challenges: (i) large 3D asset generators are optimized for static quality but not articulation, leading to distortions at part boundaries when animated; and (ii) segmentation alone cannot provide the kinematic parameters required for motion. To overcome this, we introduce a part-edge refinement module that enforces exclusive Gaussian ownership and a kinematic reasoning head that predicts joint positions and hinge axes of movable parts. Together, these components enable faithful part-aware simulation, bridging the gap between static generation and animatable vehicle models.
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Source: arXiv cs.AI Recent










