CVGRApr 19

ViPS: Video-informed Pose Spaces for Auto-Rigged Meshes

arXiv:2604.1762396.0h-index: 32
Predicted impact top 7% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For 3D animation and graphics, ViPS provides a universal, data-efficient method to generate valid poses for auto-rigged meshes, reducing reliance on scarce artist-annotated 4D datasets.

ViPS learns a latent pose space for auto-rigged meshes by distilling motion priors from a video diffusion model, enabling plausible and diverse articulation without artist-created 4D data. It matches SOTA methods trained on synthetic 4D data in plausibility and diversity, and generalizes zero-shot to unseen species and skeletal topologies.

Kinematic rigs provide a structured interface for articulating 3D meshes, but they lack an inherent representation of the plausible manifold of joint configurations for a given asset. Without such a pose space, stochastic sampling or manual manipulation of raw rig parameters often leads to semantic or geometric violations, such as anatomical hyperextension and non-physical self-intersections. We propose Video-informed Pose Spaces (ViPS), a feed-forward framework that discovers the latent distribution of valid articulations for auto-rigged meshes by distilling motion priors from a pretrained video diffusion model. Unlike existing methods that rely on scarce artist-authored 4D datasets, ViPS transfers generative video priors into a universal distribution over a given rig parameterization. Differentiable geometric validators applied to the skinned mesh enforce asset-specific validity without requiring manual regularizers. Our model learns a smooth, compact, and controllable pose space that supports diverse sampling, manifold projection for inverse kinematics, and temporally coherent trajectories for keyframing. Furthermore, the distilled 3D pose samples serve as precise semantic proxies for guiding video diffusion, effectively closing the loop between generative 2D priors and structured 3D kinematic control. Our evaluations show that ViPS, trained solely on video priors, matches the performance of state-of-the-art methods trained on synthetic artist-created 4D data in both plausibility and diversity. Most importantly, as a universal model, ViPS demonstrates robust zero-shot generalization to out-of-distribution species and unseen skeletal topologies.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes