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arxiv: 2501.01715 · v1 · pith:4V445JGA · submitted 2025-01-03 · cs.CV · cs.RO

Cloth-Splatting: 3D Cloth State Estimation from RGB Supervision

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classification cs.CV cs.RO
keywords cloth-splattingstateclothstatesestimationgaussianonlyspace
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We introduce Cloth-Splatting, a method for estimating 3D states of cloth from RGB images through a prediction-update framework. Cloth-Splatting leverages an action-conditioned dynamics model for predicting future states and uses 3D Gaussian Splatting to update the predicted states. Our key insight is that coupling a 3D mesh-based representation with Gaussian Splatting allows us to define a differentiable map between the cloth state space and the image space. This enables the use of gradient-based optimization techniques to refine inaccurate state estimates using only RGB supervision. Our experiments demonstrate that Cloth-Splatting not only improves state estimation accuracy over current baselines but also reduces convergence time.

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