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DeformNet: Latent Space Modeling and Dynamics Prediction for Deformable Object Manipulation

Chenchang Li, Zihao Ai, Tong Wu, Xiaosa Li, Wenbo Ding, Huazhe Xu

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Abstract

Manipulating deformable objects is a ubiquitous task in household environments, demanding adequate repre- sentation and accurate dynamics prediction due to the objects’ infinite degrees of freedom. This work proposes DeformNet, which utilizes latent space modeling with a learned 3D rep- resentation model to tackle these challenges effectively. The proposed representation model combines a PointNet encoder and a conditional neural radiance field (NeRF), facilitating a thorough acquisition of object deformations and variations in lighting conditions. To model the complex dynamics, we employ a recurrent state-space model (RSSM) that accurately predicts the transformation of the latent representation over time. Extensive simulation experiments with diverse objectives demonstrate the generalization capabilities of DeformNet for various deformable object manipulation tasks, even in the pres- ence of previously unseen goals. Finally, we deploy DeformNet on an actual UR5 robotic arm to demonstrate its capability in real-world scenarios.

Index terms

Machine Learning for Robot Control Representation Learning AI-Based Methods